SlideShare a Scribd company logo
1 of 121
Pearson Product Moment
Correlation
Welcome to the Pearson Product
Moment Correlation Learning
Module
• The Pearson Product Moment Correlation is the most
widely used statistic when determining the
relationship between two variables that are
continuous.
• The Pearson Product Moment Correlation is the most
widely used statistic when determining the
relationship between two variables that are
continuous.
Variable A Variable B
• By continuous we mean a variable that can take any
valuable between two points.
• By continuous we mean a variable that can take any
valuable between two points.
• Here is an example:
• By continuous we mean a variable that can take any
valuable between two points.
• Here is an example:
Suppose the fire department mandates that all fire fighters must weigh
between 150 and 250 pounds. The weight of a fire fighter would be an
example of a continuous variable; since a fire fighter's weight could
take on any value between 150 and 250 pounds.
• By continuous we mean a variable that can take any
valuable between two points.
• Here is an example:
Suppose the fire department mandates that all fire fighters must weigh
between 150 and 250 pounds. The weight of a fire fighter would be an
example of a continuous variable; since a fire fighter's weight could
take on any value between 150 and 250 pounds.
• The Pearson Product Moment Correlation will either
indicate a strong relationship
• The Pearson Product Moment Correlation will either
indicate a strong relationship
Variable A Variable B
• Or a weak even nonexistent relationship
• Or a weak even nonexistent relationship
Variable A Variable B
• Strong relationships can either be positive
• Strong relationships can either be positive
Variable A Variable B
• Or negative
• Or negative
Variable A Variable B
• The Pearson Product Moment Correlation or simply
Pearson Correlation values range from -1.0 to 1.0
• The Pearson Product Moment Correlation or simply
Pearson Correlation values range from -1.0 to 1.0
-1 +10
• A Pearson Correlation of 1.0 has a perfect postive
relationship. Note two qualities here:
• A Pearson Correlation of 1.0 has a perfect postive
relationship. Note two qualities here:
(1) direction
• A Pearson Correlation of 1.0 has a perfect postive
relationship. Note two qualities here:
(1) direction
(2) strength
• A Pearson Correlation of 1.0 has a perfect postive
relationship. Note two qualities here:
(1) direction
(2) strength
• A +1.0 Pearson Correlation’s direction is positive and it’s
strength is very or perfectly strong.
• A Pearson Correlation of 1.0 has a perfect postive
relationship. Note two qualities here:
(1) direction
(2) strength
• A +1.0 Pearson Correlation’s direction is positive and it’s
strength is very or perfectly strong.
• A -1.0 Pearson Correlation’s direction is negative and it’s
strength is very or perfectly strong.
• A Pearson Correlation of 1.0 has a perfect postive
relationship. Note two qualities here:
(1) direction
(2) strength
• A +1.0 Pearson Correlation’s direction is positive and it’s
strength is very or perfectly strong.
• A -1.0 Pearson Correlation’s direction is negative and it’s
strength is very or perfectly strong.
• A 0.0 Pearson Correlation has no direction and has no
strength.
• A Pearson Correlation of 1.0 has a perfect postive
relationship. Note two qualities here:
(1) direction
(2) strength
• A +1.0 Pearson Correlation’s direction is positive and it’s
strength is very or perfectly strong.
• A -1.0 Pearson Correlation’s direction is negative and it’s
strength is very or perfectly strong.
• A 0.0 Pearson Correlation has no direction and has no
strength.
• A +0.3 Pearson Correlation’s direction is positive and it’s
strength is moderately weak.
• A Pearson Correlation of 1.0 has a perfect postive
relationship. Note two qualities here:
(1) direction
(2) strength
• A +1.0 Pearson Correlation’s direction is positive and it’s
strength is very or perfectly strong.
• A -1.0 Pearson Correlation’s direction is negative and it’s
strength is very or perfectly strong.
• A 0.0 Pearson Correlation has no direction and has no
strength.
• A +0.3 Pearson Correlation’s direction is positive and it’s
strength is moderately weak.
• A -0.1 Pearson Correlation’s direction is negative and it’s
strength is very weak.
• There is another quality as well. With a Pearson
correlation you are considering the relationship
between only two variables.
• There is another quality as well. With a Pearson
correlation you are considering the relationship
between only two variables.
• There is another quality as well. With a Pearson
correlation you are considering the relationship
between only two variables.
• Three’s a crowd:
• There is another quality as well. With a Pearson
correlation you are considering the relationship
between only two variables.
• Three’s a crowd:
• There is another quality as well. With a Pearson
correlation you are considering the relationship
between only two variables.
• Three’s a crowd:
• Bottom line: The Pearson Correlation is used only
when exploring the relationship between two
variables.
• Let’s look at a fictitious problem to illustrate how the
Pearson Correlation is calculated.
• Imagine you are conducting a study to determine the
relationship between the average daily temperature
and the average daily ice cream sales in a particular
city.
• Imagine you are conducting a study to determine the
relationship between the average daily temperature
and the average daily ice cream sales in a particular
city.
• Imagine the data set looks like this:
• Imagine the data set looks like this:
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
• Notice how as one variable goes up (temperature)
the other variable increases (ice cream sales)
• Notice how as one variable goes up (temperature)
the other variable increases (ice cream sales)
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
• Notice how as one variable goes up (temperature)
the other variable increases (ice cream sales)
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
• One way to look at this relationship is to rank order
both variable values like so:
• One way to look at this relationship is to rank order
both variable values like so:
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
• One way to look at this relationship is to rank order
both variable values like so:
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
1st
• One way to look at this relationship is to rank order
both variable values like so:
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
1st 1st
• One way to look at this relationship is to rank order
both variable values like so:
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
1st 1st
• One way to look at this relationship is to rank order
both variable values like so:
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
1st 1st
2nd 2nd
• One way to look at this relationship is to rank order
both variable values like so:
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
1st 1st
2nd
3rd 3rd
2nd
• One way to look at this relationship is to rank order
both variable values like so:
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
1st 1st
2nd
3rd 3rd
2nd
4th 4th
• One way to look at this relationship is to rank order
both variable values like so:
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
1st 1st
2nd
5th 5th
4th 4th
3rd 3rd
2nd
• Notice how their rank orders are identical. And
because their standard deviations are similar as well,
these variables have a +1.0 Pearson Correlations.
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
1st 1st
2nd
5th 5th
4th 4th
3rd 3rd
2nd
• What would a perfectly negative correlation (-1.0)
look like?
• What would a perfectly negative correlation (-1.0)
look like?
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
230
320
350
480
560
1st
1st
2nd
5th
5th
4th
4th
3rd 3rd
2nd
• What would a perfectly negative correlation (-1.0)
look like?
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
230
320
350
480
560
1st
1st
2nd
5th
5th
4th
4th
3rd 3rd
2nd
• What would a perfectly negative correlation (-1.0)
look like?
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
230
320
350
480
560
1st
1st
2nd
5th
5th
4th
4th
3rd 3rd
2nd
• What would a perfectly negative correlation (-1.0)
look like?
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
230
320
350
480
560
1st
1st
2nd
5th
5th
4th
4th
3rd 3rd
2nd
• What would a perfectly negative correlation (-1.0)
look like?
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
230
320
350
480
560
1st
1st
2nd
5th
5th
4th
4th
3rd 3rd
2nd
• What would a zero correlation (0.0) look like?
• What would a zero correlation (0.0) look like?
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
1st
1st
2nd
5th 5th
4th
4th
3rd
3rd
2nd
• What would a zero correlation (0.0) look like?
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
1st
1st
2nd
5th 5th
4th
4th
3rd
3rd
2nd
• What would a zero correlation (0.0) look like?
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
1st
1st
2nd
5th 5th
4th
4th
3rd
3rd
2nd
• What would a zero correlation (0.0) look like?
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
1st
1st
2nd
5th 5th
4th
4th
3rd
3rd
2nd
• What would a zero correlation (0.0) look like?
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
1st
1st
2nd
5th 5th
4th
4th
3rd
3rd
2nd
• What would a zero correlation (0.0) look like?
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
1st
1st
2nd
5th 5th
4th
4th
3rd
3rd
2nd
• What would a zero correlation (0.0) look like?
• Note – Pearson Correlation is not just a comparison of rank ordered data
(that is what a Phi coefficient does) but the rank order is one factor that is
considered with a Pearson Correlation. Another factor is the degree to
which the standard deviations are similar.
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
1st
1st
2nd
5th 5th
4th
4th
3rd
3rd
2nd
• The Pearson Product Moment Correlation (PPMC) is
calculated as the average cross product of the z-
scores of two variables for a single group of people.
Here is the equation for the PPMC
• The Pearson Product Moment Correlation (PPMC) is
calculated as the average cross product of the z-
scores of two variables for a single group of people.
Here is the equation for the PPMC
𝑟 = ∑ (𝑍 𝑋 ∙ 𝑍 𝑌)
𝑛
• Let’s calculate the Pearson Correlation, for the
following data set:
• Let’s calculate the Pearson Correlation, for the
following data set:
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
• Let’s calculate the Pearson Correlation, for the
following data set:
• It is very important to note that the Pearson Correlation
can be computed in a matter of seconds using statistical
software. The next set of slides is designed to help you
see what is happening conceptually as well as
computationally with the Pearson Correlation.
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
• When computing a Pearson Correlation you will
normally have two variables that DO NOT USE THE
SAME METRIC:
• When computing a Pearson Correlation you will
normally have two variables that DO NOT USE THE
SAME METRIC:
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
• When computing a Pearson Correlation you will
normally have two variables that DO NOT USE THE
SAME METRIC:
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
The metric here is degrees
• When computing a Pearson Correlation you will
normally have two variables that DO NOT USE THE
SAME METRIC:
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
The metric here is degrees The metric here is number
of ice cream sales
• So we have to get these two variables on the same
metric. This is done by calculating the z scores or
standardized scores for the values from each
variable.
• So these raw score values in separate metrics are
transformed into standardized values which
converts them into the same metric:
• So these raw score values in separate metrics are
transformed into standardized values which
converts them into the same metric:
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
• So these raw score values in separate metrics are
transformed into standardized values which
converts them into the same metric:
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
• So these raw score values in separate metrics are
transformed into standardized values which
converts them into the same metric:
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
Ave Daily Temp
+1.4
+0.7
0.0
-0.7
-1.4
Ave Daily Ice Cream Sales
+1.5
+0.8
-0.3
-0.6
-1.3
• So these raw score values in separate metrics are
transformed into standardized values which
converts them into the same metric:
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
Ave Daily Temp
+1.4
+0.7
0.0
-0.7
-1.4
Ave Daily Ice Cream Sales
+1.5
+0.8
-0.3
-0.6
-1.3
Different Metric
(raw scores)
• Note – this is done by subtracting each value from
it’s mean (e.g., 900 minus 700 = 200) and dividing it
by it’s standard deviation (e.g., 200 / 14.1 = 1.4)
Ave Daily Temp
900
800
700
600
500
Ave Daily Ice Cream Sales
560
480
350
320
230
Ave Daily Temp
+1.4
+0.7
0.0
-0.7
-1.4
Ave Daily Ice Cream Sales
+1.5
+0.8
-0.3
-0.6
-1.3
Different Metric
(raw scores)
• Once the values are standardized we multiply them
• Once the values are standardized we multiply them
𝑟 =
∑ (𝒁 𝑿 ∙ 𝒁 𝒀)
𝑛
• Once the values are standardized we multiply them
𝑟 =
∑ (𝒁 𝑿 ∙ 𝒁 𝒀)
𝑛
• Once the values are standardized we multiply them
Ave Daily Temp
+1.4
+0.7
0.0
-0.7
-1.4
Ave Daily Ice Cream Sales
+1.5
+0.8
-0.3
-0.6
-1.3
𝑟 =
∑ (𝒁 𝑿 ∙ 𝒁 𝒀)
𝑛
• Once the values are standardized we multiply them
Ave Daily Temp
+1.4
+0.7
0.0
-0.7
-1.4
Ave Daily Ice Cream Sales
+1.5
+0.8
-0.3
-0.6
-1.3
X
X
X
X
X
𝑟 =
∑ (𝒁 𝑿 ∙ 𝒁 𝒀)
𝑛
• Once the values are standardized we multiply them
Ave Daily Temp
+1.4
+0.7
0.0
-0.7
-1.4
Ave Daily Ice Cream Sales
+1.5
+0.8
-0.3
-0.6
-1.3
X
X
X
X
X
1.9
0.4
0.0
0.6
2.1
=
=
=
=
=
𝑟 =
∑ (𝒁 𝑿 ∙ 𝒁 𝒀)
𝑛
• Once the values are standardized we multiply them
Ave Daily Temp
+1.4
+0.7
0.0
-0.7
-1.4
Ave Daily Ice Cream Sales
+1.5
+0.8
-0.3
-0.6
-1.3
X
X
X
X
X
1.9
0.4
0.0
0.6
2.1
=
=
=
=
=
𝑟 =
∑ (𝒁 𝑿 ∙ 𝒁 𝒀)
𝑛
These are called cross products
because we are multiplying
across two values
• Once the values are standardized we multiply them
Ave Daily Temp
+1.4
+0.7
0.0
-0.7
-1.4
Ave Daily Ice Cream Sales
+1.5
+0.8
-0.3
-0.6
-1.3
X
X
X
X
X
1.9
0.4
0.0
0.6
2.1
=
=
=
=
=
𝑟 =
∑ (𝒁 𝑿 ∙ 𝒁 𝒀)
𝑛
1.9 + 0.4 + 0.0 + 0.6 + 2.1 = 5.0
• Finally, divide that number (5.0) by the number of
observations
• Finally, divide that number (5.0) by the number of
observations
𝑟 =
∑ (𝒁 𝑿 ∙ 𝒁 𝒀)
𝑛
• Finally, divide that number (5.0) by the number of
observations
𝑟 =
∑ (𝒁 𝑿 ∙ 𝒁 𝒀)
𝑛
The number of observations
(in this case 5)
Ave Daily Temp
+1.4
+0.7
0.0
-0.7
-1.4
Ave Daily Ice Cream Sales
+1.5
+0.8
-0.3
-0.6
-1.3
1
2
3
4
5
𝑟 =
∑ (𝒁 𝑿 ∙ 𝒁 𝒀)
𝟓
𝑟 =
∑ (𝒁 𝑿 ∙ 𝒁 𝒀)
𝟓
The number of observations
(in this case 5)
𝑟 =
𝟓
𝟓
𝑟 =
∑ (𝒁 𝑿 ∙ 𝒁 𝒀)
𝟓
The number of observations
(in this case 5)
𝑟 =
𝟓
𝟓
Sum of the cross products
1.9 + 0.4 + 0.0 + 0.6 + 2.1 =
5.0
𝑟 =
∑ (𝒁 𝑿 ∙ 𝒁 𝒀)
𝟓
The number of observations
(in this case 5)
𝑟 =
𝟓
𝟓
Sum of the cross products
1.9 + 0.4 + 0.0 + 0.6 + 2.1 =
5.0
𝑟 = +𝟏. 𝟎
𝑟 =
∑ (𝒁 𝑿 ∙ 𝒁 𝒀)
𝟓
The number of observations
(in this case 5)
𝑟 =
𝟓
𝟓
Sum of the cross products
1.9 + 0.4 + 0.0 + 0.6 + 2.1 =
5.0
𝑟 = +𝟏. 𝟎
This is the Pearson Correlation
which in this case is a perfect
positive relationship
• In summary:
• In summary:
• The Pearson Product Moment Correlation can range
from -1 to 0 to +1.
• In summary:
• The Pearson Product Moment Correlation can range
from -1 to 0 to +1.
-1 +10
• A correlation of 0 indicates no association between
the variables of interest.
• A correlation of 0 indicates no association between
the variables of interest.
• The direction (positive or negative) simply indicates a
positive or negative (inverse) relationship between
the variables.
• If POSITIVE, when values increase on one variable,
they tend to increase on another variable.
• If POSITIVE, when values increase on one variable,
they tend to increase on another variable.
Variable 1
10
9
8
7
Variable 2
5
4
3
2
-1 +10
• If POSITIVE, when values increase on one variable,
they tend to increase on another variable.
Variable 1
10
9
8
7
Variable 2
5
4
3
2
-1 +10
• If POSITIVE, when values increase on one variable,
they tend to increase on another variable.
Variable 1
10
9
8
7
Variable 2
5
4
3
2
Pearson
Correlation = +1.0
-1 +10
• If NEGATIVE, when values increase on one variable,
they tend to decrease on another variable.
• If NEGATIVE, when values increase on one variable,
they tend to decrease on another variable.
Variable 1
10
9
8
7
Variable 2
5
4
3
2
-1 +10
• If NEGATIVE, when values increase on one variable,
they tend to decrease on another variable.
Variable 1
10
9
8
7
Variable 2
5
4
3
2
Pearson
Correlation = -1.0
-1 +10
• The strength of the relationship depends on the
decimal value.
• The strength of the relationship depends on the
decimal value.
-1 +10
• The strength of the relationship depends on the
decimal value.
-1 +10
• The strength of the relationship depends on the
decimal value.
-1 +10 0.2
weak
• The strength of the relationship depends on the
decimal value.
-1 +10
• The strength of the relationship depends on the
decimal value.
-1 +10 0.8
strong
• The strength of the relationship depends on the
decimal value.
-1 +10
• The strength of the relationship depends on the
decimal value.
-1 +10
0.2
weak
• The strength of the relationship depends on the
decimal value.
-1 +10
• The strength of the relationship depends on the
decimal value.
-1 +10
0.8
strong
• The strength of the relationship depends on the
decimal value.
-1 +10
• There is a tendency to interpret the Pearson Product
Moment Correlation with causal language as though
changes in one variable causes changes in the other.
• There is a tendency to interpret the Pearson Product
Moment Correlation with causal language as though
changes in one variable causes changes in the other.
• Whether to interpret the Pearson Product Moment
Correlation as prediction or causation depends on
the nature of the research design rather than the
nature of the statistic.
• There is a tendency to interpret the Pearson Product
Moment Correlation with causal language as though
changes in one variable causes changes in the other.
• Whether to interpret the Pearson Product Moment
Correlation as prediction or causation depends on
the nature of the research design rather than the
nature of the statistic.
• First, analyze the nature of the research design
before interpreting the Pearson Product Moment
Correlation with causal or prediction language.
• There is a tendency to interpret the Pearson Product
Moment Correlation with causal language as though
changes in one variable causes changes in the other.
• Whether to interpret the Pearson Product Moment
Correlation as prediction or causation depends on
the nature of the research design rather than the
nature of the statistic.
• First, analyze the nature of the research design
before interpreting the Pearson Product Moment
Correlation with causal or prediction language.
• So, if your research question is focused on the
relationship between two continuous variables the
Pearson Product Moment Correlation would be the
appropriate statistical method to use.

More Related Content

Viewers also liked

Pearson product moment correlation
Pearson product moment correlationPearson product moment correlation
Pearson product moment correlationDenmar Marasigan
 
Pearson product moment correlation
Pearson product moment correlationPearson product moment correlation
Pearson product moment correlationSharlaine Ruth
 
Null hypothesis for Pearson Correlation (independence)
Null hypothesis for Pearson Correlation (independence)Null hypothesis for Pearson Correlation (independence)
Null hypothesis for Pearson Correlation (independence)Ken Plummer
 
Reporting Pearson Correlation Test of Independence in APA
Reporting Pearson Correlation Test of Independence in APAReporting Pearson Correlation Test of Independence in APA
Reporting Pearson Correlation Test of Independence in APAKen Plummer
 
Reporting a paired sample t test
Reporting a paired sample t testReporting a paired sample t test
Reporting a paired sample t testKen Plummer
 
Reporting point biserial correlation in apa
Reporting point biserial correlation in apaReporting point biserial correlation in apa
Reporting point biserial correlation in apaKen Plummer
 
Pearson Correlation, Spearman Correlation &Linear Regression
Pearson Correlation, Spearman Correlation &Linear RegressionPearson Correlation, Spearman Correlation &Linear Regression
Pearson Correlation, Spearman Correlation &Linear RegressionAzmi Mohd Tamil
 
Reporting pearson correlation in apa
Reporting pearson correlation in apaReporting pearson correlation in apa
Reporting pearson correlation in apaKen Plummer
 

Viewers also liked (11)

Pearson product moment correlation
Pearson product moment correlationPearson product moment correlation
Pearson product moment correlation
 
Pearson product moment correlation
Pearson product moment correlationPearson product moment correlation
Pearson product moment correlation
 
Pearson Correlation
Pearson CorrelationPearson Correlation
Pearson Correlation
 
PEARSON'CORRELATION
PEARSON'CORRELATION PEARSON'CORRELATION
PEARSON'CORRELATION
 
Null hypothesis for Pearson Correlation (independence)
Null hypothesis for Pearson Correlation (independence)Null hypothesis for Pearson Correlation (independence)
Null hypothesis for Pearson Correlation (independence)
 
Correlation
CorrelationCorrelation
Correlation
 
Reporting Pearson Correlation Test of Independence in APA
Reporting Pearson Correlation Test of Independence in APAReporting Pearson Correlation Test of Independence in APA
Reporting Pearson Correlation Test of Independence in APA
 
Reporting a paired sample t test
Reporting a paired sample t testReporting a paired sample t test
Reporting a paired sample t test
 
Reporting point biserial correlation in apa
Reporting point biserial correlation in apaReporting point biserial correlation in apa
Reporting point biserial correlation in apa
 
Pearson Correlation, Spearman Correlation &Linear Regression
Pearson Correlation, Spearman Correlation &Linear RegressionPearson Correlation, Spearman Correlation &Linear Regression
Pearson Correlation, Spearman Correlation &Linear Regression
 
Reporting pearson correlation in apa
Reporting pearson correlation in apaReporting pearson correlation in apa
Reporting pearson correlation in apa
 

Similar to Pearson product moment correlation

Correlation by ramesh kumar
Correlation by ramesh kumarCorrelation by ramesh kumar
Correlation by ramesh kumarKVS
 
What is a Single Linear Regression
What is a Single Linear RegressionWhat is a Single Linear Regression
What is a Single Linear RegressionKen Plummer
 
CONSUMER BEHAVIOR-2.pptx
CONSUMER BEHAVIOR-2.pptxCONSUMER BEHAVIOR-2.pptx
CONSUMER BEHAVIOR-2.pptxShahena2
 
Single linear regression
Single linear regressionSingle linear regression
Single linear regressionKen Plummer
 
Measure of Relationship: Correlation Coefficient
Measure of Relationship: Correlation CoefficientMeasure of Relationship: Correlation Coefficient
Measure of Relationship: Correlation CoefficientLade Asrah Carim
 
Class 9 Covariance & Correlation Concepts.pptx
Class 9 Covariance & Correlation Concepts.pptxClass 9 Covariance & Correlation Concepts.pptx
Class 9 Covariance & Correlation Concepts.pptxCallplanetsDeveloper
 
Correlation and Regression Analysis.pptx
Correlation and Regression Analysis.pptxCorrelation and Regression Analysis.pptx
Correlation and Regression Analysis.pptxasemzkgmu
 
G5-Statistical-Relationship-Among-Variables.pptx
G5-Statistical-Relationship-Among-Variables.pptxG5-Statistical-Relationship-Among-Variables.pptx
G5-Statistical-Relationship-Among-Variables.pptxArmanBenedictNuguid
 

Similar to Pearson product moment correlation (13)

Correlation by ramesh kumar
Correlation by ramesh kumarCorrelation by ramesh kumar
Correlation by ramesh kumar
 
What is a Single Linear Regression
What is a Single Linear RegressionWhat is a Single Linear Regression
What is a Single Linear Regression
 
correlation ;.pptx
correlation ;.pptxcorrelation ;.pptx
correlation ;.pptx
 
correlation.pptx
correlation.pptxcorrelation.pptx
correlation.pptx
 
CONSUMER BEHAVIOR-2.pptx
CONSUMER BEHAVIOR-2.pptxCONSUMER BEHAVIOR-2.pptx
CONSUMER BEHAVIOR-2.pptx
 
Single linear regression
Single linear regressionSingle linear regression
Single linear regression
 
BS_5Correlation.pptx
BS_5Correlation.pptxBS_5Correlation.pptx
BS_5Correlation.pptx
 
Measure of Relationship: Correlation Coefficient
Measure of Relationship: Correlation CoefficientMeasure of Relationship: Correlation Coefficient
Measure of Relationship: Correlation Coefficient
 
Class 9 Covariance & Correlation Concepts.pptx
Class 9 Covariance & Correlation Concepts.pptxClass 9 Covariance & Correlation Concepts.pptx
Class 9 Covariance & Correlation Concepts.pptx
 
Correlation and Regression Analysis.pptx
Correlation and Regression Analysis.pptxCorrelation and Regression Analysis.pptx
Correlation and Regression Analysis.pptx
 
G5-Statistical-Relationship-Among-Variables.pptx
G5-Statistical-Relationship-Among-Variables.pptxG5-Statistical-Relationship-Among-Variables.pptx
G5-Statistical-Relationship-Among-Variables.pptx
 
Correlation & Regression.pptx
Correlation & Regression.pptxCorrelation & Regression.pptx
Correlation & Regression.pptx
 
Correlation.pptx
Correlation.pptxCorrelation.pptx
Correlation.pptx
 

More from CTLTLA

Covariates practice
Covariates practice Covariates practice
Covariates practice CTLTLA
 
Covariates explain & demo (revised)
Covariates   explain & demo (revised)Covariates   explain & demo (revised)
Covariates explain & demo (revised)CTLTLA
 
Chi square goodness of fit
Chi square goodness of fitChi square goodness of fit
Chi square goodness of fitCTLTLA
 
Chi square test of independence (conceptual)
Chi square test of independence (conceptual)Chi square test of independence (conceptual)
Chi square test of independence (conceptual)CTLTLA
 
Central tendency spread
Central tendency spreadCentral tendency spread
Central tendency spreadCTLTLA
 
Null hypothesis for pearson correlation (conceptual)
Null hypothesis for pearson correlation (conceptual)Null hypothesis for pearson correlation (conceptual)
Null hypothesis for pearson correlation (conceptual)CTLTLA
 
Null hypothesis for point biserial (conceptual)
Null hypothesis for point biserial (conceptual)Null hypothesis for point biserial (conceptual)
Null hypothesis for point biserial (conceptual)CTLTLA
 
Single sample z test - explain (final)
Single sample z test - explain (final)Single sample z test - explain (final)
Single sample z test - explain (final)CTLTLA
 

More from CTLTLA (8)

Covariates practice
Covariates practice Covariates practice
Covariates practice
 
Covariates explain & demo (revised)
Covariates   explain & demo (revised)Covariates   explain & demo (revised)
Covariates explain & demo (revised)
 
Chi square goodness of fit
Chi square goodness of fitChi square goodness of fit
Chi square goodness of fit
 
Chi square test of independence (conceptual)
Chi square test of independence (conceptual)Chi square test of independence (conceptual)
Chi square test of independence (conceptual)
 
Central tendency spread
Central tendency spreadCentral tendency spread
Central tendency spread
 
Null hypothesis for pearson correlation (conceptual)
Null hypothesis for pearson correlation (conceptual)Null hypothesis for pearson correlation (conceptual)
Null hypothesis for pearson correlation (conceptual)
 
Null hypothesis for point biserial (conceptual)
Null hypothesis for point biserial (conceptual)Null hypothesis for point biserial (conceptual)
Null hypothesis for point biserial (conceptual)
 
Single sample z test - explain (final)
Single sample z test - explain (final)Single sample z test - explain (final)
Single sample z test - explain (final)
 

Recently uploaded

Introduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptxIntroduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptxpboyjonauth
 
Employee wellbeing at the workplace.pptx
Employee wellbeing at the workplace.pptxEmployee wellbeing at the workplace.pptx
Employee wellbeing at the workplace.pptxNirmalaLoungPoorunde1
 
Concept of Vouching. B.Com(Hons) /B.Compdf
Concept of Vouching. B.Com(Hons) /B.CompdfConcept of Vouching. B.Com(Hons) /B.Compdf
Concept of Vouching. B.Com(Hons) /B.CompdfUmakantAnnand
 
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxSOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxiammrhaywood
 
Presiding Officer Training module 2024 lok sabha elections
Presiding Officer Training module 2024 lok sabha electionsPresiding Officer Training module 2024 lok sabha elections
Presiding Officer Training module 2024 lok sabha electionsanshu789521
 
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️9953056974 Low Rate Call Girls In Saket, Delhi NCR
 
Interactive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communicationInteractive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communicationnomboosow
 
CARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxCARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxGaneshChakor2
 
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...Krashi Coaching
 
Mastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory InspectionMastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory InspectionSafetyChain Software
 
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdfBASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdfSoniaTolstoy
 
How to Make a Pirate ship Primary Education.pptx
How to Make a Pirate ship Primary Education.pptxHow to Make a Pirate ship Primary Education.pptx
How to Make a Pirate ship Primary Education.pptxmanuelaromero2013
 
Class 11 Legal Studies Ch-1 Concept of State .pdf
Class 11 Legal Studies Ch-1 Concept of State .pdfClass 11 Legal Studies Ch-1 Concept of State .pdf
Class 11 Legal Studies Ch-1 Concept of State .pdfakmcokerachita
 
Science 7 - LAND and SEA BREEZE and its Characteristics
Science 7 - LAND and SEA BREEZE and its CharacteristicsScience 7 - LAND and SEA BREEZE and its Characteristics
Science 7 - LAND and SEA BREEZE and its CharacteristicsKarinaGenton
 
MENTAL STATUS EXAMINATION format.docx
MENTAL     STATUS EXAMINATION format.docxMENTAL     STATUS EXAMINATION format.docx
MENTAL STATUS EXAMINATION format.docxPoojaSen20
 
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions  for the students and aspirants of Chemistry12th.pptxOrganic Name Reactions  for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions for the students and aspirants of Chemistry12th.pptxVS Mahajan Coaching Centre
 
Accessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactAccessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactdawncurless
 
Crayon Activity Handout For the Crayon A
Crayon Activity Handout For the Crayon ACrayon Activity Handout For the Crayon A
Crayon Activity Handout For the Crayon AUnboundStockton
 
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdfssuser54595a
 

Recently uploaded (20)

Introduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptxIntroduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptx
 
Employee wellbeing at the workplace.pptx
Employee wellbeing at the workplace.pptxEmployee wellbeing at the workplace.pptx
Employee wellbeing at the workplace.pptx
 
Concept of Vouching. B.Com(Hons) /B.Compdf
Concept of Vouching. B.Com(Hons) /B.CompdfConcept of Vouching. B.Com(Hons) /B.Compdf
Concept of Vouching. B.Com(Hons) /B.Compdf
 
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxSOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
 
Presiding Officer Training module 2024 lok sabha elections
Presiding Officer Training module 2024 lok sabha electionsPresiding Officer Training module 2024 lok sabha elections
Presiding Officer Training module 2024 lok sabha elections
 
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
 
Interactive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communicationInteractive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communication
 
CARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxCARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptx
 
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
 
Mastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory InspectionMastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory Inspection
 
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdfBASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
 
How to Make a Pirate ship Primary Education.pptx
How to Make a Pirate ship Primary Education.pptxHow to Make a Pirate ship Primary Education.pptx
How to Make a Pirate ship Primary Education.pptx
 
Class 11 Legal Studies Ch-1 Concept of State .pdf
Class 11 Legal Studies Ch-1 Concept of State .pdfClass 11 Legal Studies Ch-1 Concept of State .pdf
Class 11 Legal Studies Ch-1 Concept of State .pdf
 
Science 7 - LAND and SEA BREEZE and its Characteristics
Science 7 - LAND and SEA BREEZE and its CharacteristicsScience 7 - LAND and SEA BREEZE and its Characteristics
Science 7 - LAND and SEA BREEZE and its Characteristics
 
MENTAL STATUS EXAMINATION format.docx
MENTAL     STATUS EXAMINATION format.docxMENTAL     STATUS EXAMINATION format.docx
MENTAL STATUS EXAMINATION format.docx
 
9953330565 Low Rate Call Girls In Rohini Delhi NCR
9953330565 Low Rate Call Girls In Rohini  Delhi NCR9953330565 Low Rate Call Girls In Rohini  Delhi NCR
9953330565 Low Rate Call Girls In Rohini Delhi NCR
 
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions  for the students and aspirants of Chemistry12th.pptxOrganic Name Reactions  for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
 
Accessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactAccessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impact
 
Crayon Activity Handout For the Crayon A
Crayon Activity Handout For the Crayon ACrayon Activity Handout For the Crayon A
Crayon Activity Handout For the Crayon A
 
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
 

Pearson product moment correlation

  • 1. Pearson Product Moment Correlation Welcome to the Pearson Product Moment Correlation Learning Module
  • 2. • The Pearson Product Moment Correlation is the most widely used statistic when determining the relationship between two variables that are continuous.
  • 3. • The Pearson Product Moment Correlation is the most widely used statistic when determining the relationship between two variables that are continuous. Variable A Variable B
  • 4. • By continuous we mean a variable that can take any valuable between two points.
  • 5. • By continuous we mean a variable that can take any valuable between two points. • Here is an example:
  • 6. • By continuous we mean a variable that can take any valuable between two points. • Here is an example: Suppose the fire department mandates that all fire fighters must weigh between 150 and 250 pounds. The weight of a fire fighter would be an example of a continuous variable; since a fire fighter's weight could take on any value between 150 and 250 pounds.
  • 7. • By continuous we mean a variable that can take any valuable between two points. • Here is an example: Suppose the fire department mandates that all fire fighters must weigh between 150 and 250 pounds. The weight of a fire fighter would be an example of a continuous variable; since a fire fighter's weight could take on any value between 150 and 250 pounds.
  • 8. • The Pearson Product Moment Correlation will either indicate a strong relationship
  • 9. • The Pearson Product Moment Correlation will either indicate a strong relationship Variable A Variable B
  • 10. • Or a weak even nonexistent relationship
  • 11. • Or a weak even nonexistent relationship Variable A Variable B
  • 12. • Strong relationships can either be positive
  • 13. • Strong relationships can either be positive Variable A Variable B
  • 15. • Or negative Variable A Variable B
  • 16. • The Pearson Product Moment Correlation or simply Pearson Correlation values range from -1.0 to 1.0
  • 17. • The Pearson Product Moment Correlation or simply Pearson Correlation values range from -1.0 to 1.0 -1 +10
  • 18. • A Pearson Correlation of 1.0 has a perfect postive relationship. Note two qualities here:
  • 19. • A Pearson Correlation of 1.0 has a perfect postive relationship. Note two qualities here: (1) direction
  • 20. • A Pearson Correlation of 1.0 has a perfect postive relationship. Note two qualities here: (1) direction (2) strength
  • 21. • A Pearson Correlation of 1.0 has a perfect postive relationship. Note two qualities here: (1) direction (2) strength • A +1.0 Pearson Correlation’s direction is positive and it’s strength is very or perfectly strong.
  • 22. • A Pearson Correlation of 1.0 has a perfect postive relationship. Note two qualities here: (1) direction (2) strength • A +1.0 Pearson Correlation’s direction is positive and it’s strength is very or perfectly strong. • A -1.0 Pearson Correlation’s direction is negative and it’s strength is very or perfectly strong.
  • 23. • A Pearson Correlation of 1.0 has a perfect postive relationship. Note two qualities here: (1) direction (2) strength • A +1.0 Pearson Correlation’s direction is positive and it’s strength is very or perfectly strong. • A -1.0 Pearson Correlation’s direction is negative and it’s strength is very or perfectly strong. • A 0.0 Pearson Correlation has no direction and has no strength.
  • 24. • A Pearson Correlation of 1.0 has a perfect postive relationship. Note two qualities here: (1) direction (2) strength • A +1.0 Pearson Correlation’s direction is positive and it’s strength is very or perfectly strong. • A -1.0 Pearson Correlation’s direction is negative and it’s strength is very or perfectly strong. • A 0.0 Pearson Correlation has no direction and has no strength. • A +0.3 Pearson Correlation’s direction is positive and it’s strength is moderately weak.
  • 25. • A Pearson Correlation of 1.0 has a perfect postive relationship. Note two qualities here: (1) direction (2) strength • A +1.0 Pearson Correlation’s direction is positive and it’s strength is very or perfectly strong. • A -1.0 Pearson Correlation’s direction is negative and it’s strength is very or perfectly strong. • A 0.0 Pearson Correlation has no direction and has no strength. • A +0.3 Pearson Correlation’s direction is positive and it’s strength is moderately weak. • A -0.1 Pearson Correlation’s direction is negative and it’s strength is very weak.
  • 26. • There is another quality as well. With a Pearson correlation you are considering the relationship between only two variables.
  • 27. • There is another quality as well. With a Pearson correlation you are considering the relationship between only two variables.
  • 28. • There is another quality as well. With a Pearson correlation you are considering the relationship between only two variables. • Three’s a crowd:
  • 29. • There is another quality as well. With a Pearson correlation you are considering the relationship between only two variables. • Three’s a crowd:
  • 30. • There is another quality as well. With a Pearson correlation you are considering the relationship between only two variables. • Three’s a crowd: • Bottom line: The Pearson Correlation is used only when exploring the relationship between two variables.
  • 31. • Let’s look at a fictitious problem to illustrate how the Pearson Correlation is calculated.
  • 32. • Imagine you are conducting a study to determine the relationship between the average daily temperature and the average daily ice cream sales in a particular city.
  • 33. • Imagine you are conducting a study to determine the relationship between the average daily temperature and the average daily ice cream sales in a particular city.
  • 34. • Imagine the data set looks like this:
  • 35. • Imagine the data set looks like this: Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230
  • 36. • Notice how as one variable goes up (temperature) the other variable increases (ice cream sales)
  • 37. • Notice how as one variable goes up (temperature) the other variable increases (ice cream sales) Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230
  • 38. • Notice how as one variable goes up (temperature) the other variable increases (ice cream sales) Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230
  • 39. • One way to look at this relationship is to rank order both variable values like so:
  • 40. • One way to look at this relationship is to rank order both variable values like so: Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230
  • 41. • One way to look at this relationship is to rank order both variable values like so: Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 1st
  • 42. • One way to look at this relationship is to rank order both variable values like so: Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 1st 1st
  • 43. • One way to look at this relationship is to rank order both variable values like so: Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 1st 1st
  • 44. • One way to look at this relationship is to rank order both variable values like so: Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 1st 1st 2nd 2nd
  • 45. • One way to look at this relationship is to rank order both variable values like so: Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 1st 1st 2nd 3rd 3rd 2nd
  • 46. • One way to look at this relationship is to rank order both variable values like so: Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 1st 1st 2nd 3rd 3rd 2nd 4th 4th
  • 47. • One way to look at this relationship is to rank order both variable values like so: Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 1st 1st 2nd 5th 5th 4th 4th 3rd 3rd 2nd
  • 48. • Notice how their rank orders are identical. And because their standard deviations are similar as well, these variables have a +1.0 Pearson Correlations. Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 1st 1st 2nd 5th 5th 4th 4th 3rd 3rd 2nd
  • 49. • What would a perfectly negative correlation (-1.0) look like?
  • 50. • What would a perfectly negative correlation (-1.0) look like? Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 230 320 350 480 560 1st 1st 2nd 5th 5th 4th 4th 3rd 3rd 2nd
  • 51. • What would a perfectly negative correlation (-1.0) look like? Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 230 320 350 480 560 1st 1st 2nd 5th 5th 4th 4th 3rd 3rd 2nd
  • 52. • What would a perfectly negative correlation (-1.0) look like? Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 230 320 350 480 560 1st 1st 2nd 5th 5th 4th 4th 3rd 3rd 2nd
  • 53. • What would a perfectly negative correlation (-1.0) look like? Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 230 320 350 480 560 1st 1st 2nd 5th 5th 4th 4th 3rd 3rd 2nd
  • 54. • What would a perfectly negative correlation (-1.0) look like? Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 230 320 350 480 560 1st 1st 2nd 5th 5th 4th 4th 3rd 3rd 2nd
  • 55. • What would a zero correlation (0.0) look like?
  • 56. • What would a zero correlation (0.0) look like? Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 1st 1st 2nd 5th 5th 4th 4th 3rd 3rd 2nd
  • 57. • What would a zero correlation (0.0) look like? Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 1st 1st 2nd 5th 5th 4th 4th 3rd 3rd 2nd
  • 58. • What would a zero correlation (0.0) look like? Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 1st 1st 2nd 5th 5th 4th 4th 3rd 3rd 2nd
  • 59. • What would a zero correlation (0.0) look like? Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 1st 1st 2nd 5th 5th 4th 4th 3rd 3rd 2nd
  • 60. • What would a zero correlation (0.0) look like? Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 1st 1st 2nd 5th 5th 4th 4th 3rd 3rd 2nd
  • 61. • What would a zero correlation (0.0) look like? Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 1st 1st 2nd 5th 5th 4th 4th 3rd 3rd 2nd
  • 62. • What would a zero correlation (0.0) look like? • Note – Pearson Correlation is not just a comparison of rank ordered data (that is what a Phi coefficient does) but the rank order is one factor that is considered with a Pearson Correlation. Another factor is the degree to which the standard deviations are similar. Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 1st 1st 2nd 5th 5th 4th 4th 3rd 3rd 2nd
  • 63. • The Pearson Product Moment Correlation (PPMC) is calculated as the average cross product of the z- scores of two variables for a single group of people. Here is the equation for the PPMC
  • 64. • The Pearson Product Moment Correlation (PPMC) is calculated as the average cross product of the z- scores of two variables for a single group of people. Here is the equation for the PPMC 𝑟 = ∑ (𝑍 𝑋 ∙ 𝑍 𝑌) 𝑛
  • 65. • Let’s calculate the Pearson Correlation, for the following data set:
  • 66. • Let’s calculate the Pearson Correlation, for the following data set: Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230
  • 67. • Let’s calculate the Pearson Correlation, for the following data set: • It is very important to note that the Pearson Correlation can be computed in a matter of seconds using statistical software. The next set of slides is designed to help you see what is happening conceptually as well as computationally with the Pearson Correlation. Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230
  • 68. • When computing a Pearson Correlation you will normally have two variables that DO NOT USE THE SAME METRIC:
  • 69. • When computing a Pearson Correlation you will normally have two variables that DO NOT USE THE SAME METRIC: Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230
  • 70. • When computing a Pearson Correlation you will normally have two variables that DO NOT USE THE SAME METRIC: Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 The metric here is degrees
  • 71. • When computing a Pearson Correlation you will normally have two variables that DO NOT USE THE SAME METRIC: Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 The metric here is degrees The metric here is number of ice cream sales
  • 72. • So we have to get these two variables on the same metric. This is done by calculating the z scores or standardized scores for the values from each variable.
  • 73. • So these raw score values in separate metrics are transformed into standardized values which converts them into the same metric:
  • 74. • So these raw score values in separate metrics are transformed into standardized values which converts them into the same metric: Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230
  • 75. • So these raw score values in separate metrics are transformed into standardized values which converts them into the same metric: Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230
  • 76. • So these raw score values in separate metrics are transformed into standardized values which converts them into the same metric: Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 Ave Daily Temp +1.4 +0.7 0.0 -0.7 -1.4 Ave Daily Ice Cream Sales +1.5 +0.8 -0.3 -0.6 -1.3
  • 77. • So these raw score values in separate metrics are transformed into standardized values which converts them into the same metric: Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 Ave Daily Temp +1.4 +0.7 0.0 -0.7 -1.4 Ave Daily Ice Cream Sales +1.5 +0.8 -0.3 -0.6 -1.3 Different Metric (raw scores)
  • 78. • Note – this is done by subtracting each value from it’s mean (e.g., 900 minus 700 = 200) and dividing it by it’s standard deviation (e.g., 200 / 14.1 = 1.4) Ave Daily Temp 900 800 700 600 500 Ave Daily Ice Cream Sales 560 480 350 320 230 Ave Daily Temp +1.4 +0.7 0.0 -0.7 -1.4 Ave Daily Ice Cream Sales +1.5 +0.8 -0.3 -0.6 -1.3 Different Metric (raw scores)
  • 79. • Once the values are standardized we multiply them
  • 80. • Once the values are standardized we multiply them 𝑟 = ∑ (𝒁 𝑿 ∙ 𝒁 𝒀) 𝑛
  • 81. • Once the values are standardized we multiply them 𝑟 = ∑ (𝒁 𝑿 ∙ 𝒁 𝒀) 𝑛
  • 82. • Once the values are standardized we multiply them Ave Daily Temp +1.4 +0.7 0.0 -0.7 -1.4 Ave Daily Ice Cream Sales +1.5 +0.8 -0.3 -0.6 -1.3 𝑟 = ∑ (𝒁 𝑿 ∙ 𝒁 𝒀) 𝑛
  • 83. • Once the values are standardized we multiply them Ave Daily Temp +1.4 +0.7 0.0 -0.7 -1.4 Ave Daily Ice Cream Sales +1.5 +0.8 -0.3 -0.6 -1.3 X X X X X 𝑟 = ∑ (𝒁 𝑿 ∙ 𝒁 𝒀) 𝑛
  • 84. • Once the values are standardized we multiply them Ave Daily Temp +1.4 +0.7 0.0 -0.7 -1.4 Ave Daily Ice Cream Sales +1.5 +0.8 -0.3 -0.6 -1.3 X X X X X 1.9 0.4 0.0 0.6 2.1 = = = = = 𝑟 = ∑ (𝒁 𝑿 ∙ 𝒁 𝒀) 𝑛
  • 85. • Once the values are standardized we multiply them Ave Daily Temp +1.4 +0.7 0.0 -0.7 -1.4 Ave Daily Ice Cream Sales +1.5 +0.8 -0.3 -0.6 -1.3 X X X X X 1.9 0.4 0.0 0.6 2.1 = = = = = 𝑟 = ∑ (𝒁 𝑿 ∙ 𝒁 𝒀) 𝑛 These are called cross products because we are multiplying across two values
  • 86. • Once the values are standardized we multiply them Ave Daily Temp +1.4 +0.7 0.0 -0.7 -1.4 Ave Daily Ice Cream Sales +1.5 +0.8 -0.3 -0.6 -1.3 X X X X X 1.9 0.4 0.0 0.6 2.1 = = = = = 𝑟 = ∑ (𝒁 𝑿 ∙ 𝒁 𝒀) 𝑛 1.9 + 0.4 + 0.0 + 0.6 + 2.1 = 5.0
  • 87. • Finally, divide that number (5.0) by the number of observations
  • 88. • Finally, divide that number (5.0) by the number of observations 𝑟 = ∑ (𝒁 𝑿 ∙ 𝒁 𝒀) 𝑛
  • 89. • Finally, divide that number (5.0) by the number of observations 𝑟 = ∑ (𝒁 𝑿 ∙ 𝒁 𝒀) 𝑛 The number of observations (in this case 5) Ave Daily Temp +1.4 +0.7 0.0 -0.7 -1.4 Ave Daily Ice Cream Sales +1.5 +0.8 -0.3 -0.6 -1.3 1 2 3 4 5
  • 90. 𝑟 = ∑ (𝒁 𝑿 ∙ 𝒁 𝒀) 𝟓
  • 91. 𝑟 = ∑ (𝒁 𝑿 ∙ 𝒁 𝒀) 𝟓 The number of observations (in this case 5) 𝑟 = 𝟓 𝟓
  • 92. 𝑟 = ∑ (𝒁 𝑿 ∙ 𝒁 𝒀) 𝟓 The number of observations (in this case 5) 𝑟 = 𝟓 𝟓 Sum of the cross products 1.9 + 0.4 + 0.0 + 0.6 + 2.1 = 5.0
  • 93. 𝑟 = ∑ (𝒁 𝑿 ∙ 𝒁 𝒀) 𝟓 The number of observations (in this case 5) 𝑟 = 𝟓 𝟓 Sum of the cross products 1.9 + 0.4 + 0.0 + 0.6 + 2.1 = 5.0 𝑟 = +𝟏. 𝟎
  • 94. 𝑟 = ∑ (𝒁 𝑿 ∙ 𝒁 𝒀) 𝟓 The number of observations (in this case 5) 𝑟 = 𝟓 𝟓 Sum of the cross products 1.9 + 0.4 + 0.0 + 0.6 + 2.1 = 5.0 𝑟 = +𝟏. 𝟎 This is the Pearson Correlation which in this case is a perfect positive relationship
  • 96. • In summary: • The Pearson Product Moment Correlation can range from -1 to 0 to +1.
  • 97. • In summary: • The Pearson Product Moment Correlation can range from -1 to 0 to +1. -1 +10
  • 98. • A correlation of 0 indicates no association between the variables of interest.
  • 99. • A correlation of 0 indicates no association between the variables of interest. • The direction (positive or negative) simply indicates a positive or negative (inverse) relationship between the variables.
  • 100. • If POSITIVE, when values increase on one variable, they tend to increase on another variable.
  • 101. • If POSITIVE, when values increase on one variable, they tend to increase on another variable. Variable 1 10 9 8 7 Variable 2 5 4 3 2 -1 +10
  • 102. • If POSITIVE, when values increase on one variable, they tend to increase on another variable. Variable 1 10 9 8 7 Variable 2 5 4 3 2 -1 +10
  • 103. • If POSITIVE, when values increase on one variable, they tend to increase on another variable. Variable 1 10 9 8 7 Variable 2 5 4 3 2 Pearson Correlation = +1.0 -1 +10
  • 104. • If NEGATIVE, when values increase on one variable, they tend to decrease on another variable.
  • 105. • If NEGATIVE, when values increase on one variable, they tend to decrease on another variable. Variable 1 10 9 8 7 Variable 2 5 4 3 2 -1 +10
  • 106. • If NEGATIVE, when values increase on one variable, they tend to decrease on another variable. Variable 1 10 9 8 7 Variable 2 5 4 3 2 Pearson Correlation = -1.0 -1 +10
  • 107. • The strength of the relationship depends on the decimal value.
  • 108. • The strength of the relationship depends on the decimal value. -1 +10
  • 109. • The strength of the relationship depends on the decimal value. -1 +10
  • 110. • The strength of the relationship depends on the decimal value. -1 +10 0.2 weak
  • 111. • The strength of the relationship depends on the decimal value. -1 +10
  • 112. • The strength of the relationship depends on the decimal value. -1 +10 0.8 strong
  • 113. • The strength of the relationship depends on the decimal value. -1 +10
  • 114. • The strength of the relationship depends on the decimal value. -1 +10 0.2 weak
  • 115. • The strength of the relationship depends on the decimal value. -1 +10
  • 116. • The strength of the relationship depends on the decimal value. -1 +10 0.8 strong
  • 117. • The strength of the relationship depends on the decimal value. -1 +10
  • 118. • There is a tendency to interpret the Pearson Product Moment Correlation with causal language as though changes in one variable causes changes in the other.
  • 119. • There is a tendency to interpret the Pearson Product Moment Correlation with causal language as though changes in one variable causes changes in the other. • Whether to interpret the Pearson Product Moment Correlation as prediction or causation depends on the nature of the research design rather than the nature of the statistic.
  • 120. • There is a tendency to interpret the Pearson Product Moment Correlation with causal language as though changes in one variable causes changes in the other. • Whether to interpret the Pearson Product Moment Correlation as prediction or causation depends on the nature of the research design rather than the nature of the statistic. • First, analyze the nature of the research design before interpreting the Pearson Product Moment Correlation with causal or prediction language.
  • 121. • There is a tendency to interpret the Pearson Product Moment Correlation with causal language as though changes in one variable causes changes in the other. • Whether to interpret the Pearson Product Moment Correlation as prediction or causation depends on the nature of the research design rather than the nature of the statistic. • First, analyze the nature of the research design before interpreting the Pearson Product Moment Correlation with causal or prediction language. • So, if your research question is focused on the relationship between two continuous variables the Pearson Product Moment Correlation would be the appropriate statistical method to use.