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Hypothesis Testing


By Rama Krishna Kompella
Outline
•   The Null Hypothesis
•   Type I and Type II Error
•   Using Statistics to test the Null Hypothesis
•   The Logic of Data Analysis
Research Questions and Hypotheses
• Research question:
  – Non-directional:
     • No stated expectation about outcome
  – Example:
     • Do men and women differ in terms of brand loyalty?
• Hypothesis:
  – Statement of expected relationship
     • Directionality of relationship
  – Example:
     • Women will have greater brand loyalty than men
Grounding Hypotheses in Theory
• Hypotheses have an underlying rationale:
  – Logical reasoning behind the direction of the
    hypotheses (theoretical rationale – explanation)
  – Why do we expect women to have better brand
    loyalty?
• Theoretical rationale based on:
  – 1. Past research
  – 2. Existing theory
  – 3. Logical reasoning
The Null Hypothesis

• Null Hypothesis - the absence of a relationship
   – E..g., There is no difference between men’s and
     women’s with regards to brand loyalty
• Compare observed results to Null Hypothesis
   – How different are the results from the null hypothesis?
• We do not propose a null hypothesis as research
  hypothesis - need very large sample size / power
   – Used as point of contrast for testing
Hypotheses testing
• When we test observed results against null:
  – We can make two decisions:
     • 1. Accept the null
        – No significant relationship
        – Observed results similar to the Null Hypothesis
     • 2. Reject the null
        – Significant relationship
        – Observed results different from the Null Hypothesis
  – Whichever decision, we risk making an error
Type I and Type II Error
• 1. Type I Error
   – Reality: No relationship
   – Decision: Reject the null
       • Believe your research hypothesis have received support when in fact
         you should have disconfirmed it
       • Analogy: Find an innocent man guilty of a crime
• 2. Type II Error
   – Reality: Relationship
   – Decision: Accept the null
       • Believe your research hypothesis has not received support when in
         fact you should have rejected the null.
       • Analogy: Find a guilty man innocent of a crime
Potential outcomes of testing
                             Decision
                    Accept Null             Reject Null




R
E    No
                    1                   2
A    Relationship
L
I    Relationship
T

                    3                   4
Y
Potential outcomes of testing
                              Decision
                     Accept Null             Reject Null




                    Correct
R
E    No
                    decision             2
A    Relationship
L
I    Relationship
T

                    3                    4
Y
Potential outcomes of testing
                             Decision
                    Accept Null              Reject Null




R
E
A
     No
     Relationship
                    1                   2
L
I    Relationship
T
Y
                                        Correct
                    3                   decision
Potential outcomes of testing
                             Decision
                    Accept Null                Reject Null




R
E    No             1                   Type I Error

A    Relationship
L
I    Relationship
T
Y

                    3                    4
Potential outcomes of testing
                                Decision
                       Accept Null             Reject Null




R
E    No               1                    2
A    Relationship
L
I    Relationship
T
Y
                    Type II Error
                                           4
Potential outcomes of testing
                               Decision
                      Accept Null                Reject Null




                      Correct
                                          Type I Error
                      decision
R
E    No
A    Relationship
L
I    Relationship
T
Y                                            Correct
                    Type II Error
                                             decision
Function of Statistical Tests
• Statistical tests determine:
  – Accept or Reject the Null Hypothesis
• Based on probability of making a Type I
  error
  – Observed results compared to the results
    expected by the Null Hypotheses
  – What is the probability of getting observed
    results if Null Hypothesis were true?
     • If results would occur less than 5% of the time by
       simple chance then we reject the Null Hypothesis
Start by setting level of risk of
         making a Type I Error
• How dangerous is it to make a Type I Error:
   – What risk is acceptable?:
       • 5%?
       • 1%?
       • .1%?

   – Smaller percentages are more conservative in
     guarding against a Type I Error
• Level of acceptable risk is called “Significance level” :
   – Usually the cutoff - <.05
Conventional Significance Levels
•   .05 level (5% chance of Type I Error)
•   .01 level (1% chance of Type I Error)
•   .001 level (.1% chance of Type I Error)
•   Rejecting the Null at the .05 level means:
    – Taking a 5% risk of making a Type I Error
Steps in Hypothesis Testing
• 1. State research hypothesis
• 2. State null hypothesis
• 3.Set significance level (e.g., .05 level)
• 4. Observe results
• 5. Statistics calculate probability of results if
  null hypothesis were true
• 6. If probability of observed results is less than
  significance level, then reject the null
Guarding against Type I Error

• Significance level regulates Type I Error
• Conservative standards reduce Type I Error:
  – .01 instead of .05, especially with large sample
• Reducing the probability of Type I Error:
  – Increases the probability of Type II Error
• Sample size regulates Type II Error
  – The larger the sample, the lower the
    probability of Type II Error occurring in
    conservative testing
Statistical Power
• The power to detect significant relationships
  – The larger the sample size, the more power
  – The larger the sample size, the lower the
    probability of Type II Error
• Power = 1 – probability of Type II Error
Statistical Analysis
• Statistical analysis:
   – Examines observed data
   – Calculates the probability that the results could
     occur by chance (I.e., if Null was true)
• Choice of statistical test depends on:
   – Level of measurement of the variables in
     question:
      • Nominal, Ordinal, Interval or Ratio
Logic of data analysis
• Univariate analysis
  – One variable at a time (descriptive)
• Bivariate analysis
  – Two variables at a time (testing relationships)
• Multivariate analysis
  – More than two variables at a time (testing
    relationships and controlling for other variables)
Variables
• Dependent variable:
  – What we are trying to predict
  – E.g., Brand preference
• Independent variables:
  – What we are using as predictors
  – E.g., Gender, Product usage history
Commonality across all statistical
      analysis procedures
• Set the significance level:
  – E.g., .05 level
     • Means that we are willing to conclude that there is a
       relationship if:
         – Chance of Type I error is less than 5%

• Statistical tests tell us whether:
  – The observed relationship has less than a 5%
    chance of occurring by chance
Summary of Statistical Procedures

Variables                     Procedure
Nominal IV, Nominal DV        Chi-square
Nominal IV, Ratio DV          T-test
Multiple Nominal IVs, Ratio   ANOVA
DV
Ratio IV, Ratio DV            Pearson’s R
Multiple Nominal IVs, Ratio   ANCOVA
DV with ratio covariates
Multiple ratio                Multiple Regression
Q & As

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T8 hypothesis testing

  • 1. Hypothesis Testing By Rama Krishna Kompella
  • 2. Outline • The Null Hypothesis • Type I and Type II Error • Using Statistics to test the Null Hypothesis • The Logic of Data Analysis
  • 3. Research Questions and Hypotheses • Research question: – Non-directional: • No stated expectation about outcome – Example: • Do men and women differ in terms of brand loyalty? • Hypothesis: – Statement of expected relationship • Directionality of relationship – Example: • Women will have greater brand loyalty than men
  • 4. Grounding Hypotheses in Theory • Hypotheses have an underlying rationale: – Logical reasoning behind the direction of the hypotheses (theoretical rationale – explanation) – Why do we expect women to have better brand loyalty? • Theoretical rationale based on: – 1. Past research – 2. Existing theory – 3. Logical reasoning
  • 5. The Null Hypothesis • Null Hypothesis - the absence of a relationship – E..g., There is no difference between men’s and women’s with regards to brand loyalty • Compare observed results to Null Hypothesis – How different are the results from the null hypothesis? • We do not propose a null hypothesis as research hypothesis - need very large sample size / power – Used as point of contrast for testing
  • 6. Hypotheses testing • When we test observed results against null: – We can make two decisions: • 1. Accept the null – No significant relationship – Observed results similar to the Null Hypothesis • 2. Reject the null – Significant relationship – Observed results different from the Null Hypothesis – Whichever decision, we risk making an error
  • 7. Type I and Type II Error • 1. Type I Error – Reality: No relationship – Decision: Reject the null • Believe your research hypothesis have received support when in fact you should have disconfirmed it • Analogy: Find an innocent man guilty of a crime • 2. Type II Error – Reality: Relationship – Decision: Accept the null • Believe your research hypothesis has not received support when in fact you should have rejected the null. • Analogy: Find a guilty man innocent of a crime
  • 8. Potential outcomes of testing Decision Accept Null Reject Null R E No 1 2 A Relationship L I Relationship T 3 4 Y
  • 9. Potential outcomes of testing Decision Accept Null Reject Null Correct R E No decision 2 A Relationship L I Relationship T 3 4 Y
  • 10. Potential outcomes of testing Decision Accept Null Reject Null R E A No Relationship 1 2 L I Relationship T Y Correct 3 decision
  • 11. Potential outcomes of testing Decision Accept Null Reject Null R E No 1 Type I Error A Relationship L I Relationship T Y 3 4
  • 12. Potential outcomes of testing Decision Accept Null Reject Null R E No 1 2 A Relationship L I Relationship T Y Type II Error 4
  • 13. Potential outcomes of testing Decision Accept Null Reject Null Correct Type I Error decision R E No A Relationship L I Relationship T Y Correct Type II Error decision
  • 14. Function of Statistical Tests • Statistical tests determine: – Accept or Reject the Null Hypothesis • Based on probability of making a Type I error – Observed results compared to the results expected by the Null Hypotheses – What is the probability of getting observed results if Null Hypothesis were true? • If results would occur less than 5% of the time by simple chance then we reject the Null Hypothesis
  • 15. Start by setting level of risk of making a Type I Error • How dangerous is it to make a Type I Error: – What risk is acceptable?: • 5%? • 1%? • .1%? – Smaller percentages are more conservative in guarding against a Type I Error • Level of acceptable risk is called “Significance level” : – Usually the cutoff - <.05
  • 16. Conventional Significance Levels • .05 level (5% chance of Type I Error) • .01 level (1% chance of Type I Error) • .001 level (.1% chance of Type I Error) • Rejecting the Null at the .05 level means: – Taking a 5% risk of making a Type I Error
  • 17. Steps in Hypothesis Testing • 1. State research hypothesis • 2. State null hypothesis • 3.Set significance level (e.g., .05 level) • 4. Observe results • 5. Statistics calculate probability of results if null hypothesis were true • 6. If probability of observed results is less than significance level, then reject the null
  • 18. Guarding against Type I Error • Significance level regulates Type I Error • Conservative standards reduce Type I Error: – .01 instead of .05, especially with large sample • Reducing the probability of Type I Error: – Increases the probability of Type II Error • Sample size regulates Type II Error – The larger the sample, the lower the probability of Type II Error occurring in conservative testing
  • 19. Statistical Power • The power to detect significant relationships – The larger the sample size, the more power – The larger the sample size, the lower the probability of Type II Error • Power = 1 – probability of Type II Error
  • 20. Statistical Analysis • Statistical analysis: – Examines observed data – Calculates the probability that the results could occur by chance (I.e., if Null was true) • Choice of statistical test depends on: – Level of measurement of the variables in question: • Nominal, Ordinal, Interval or Ratio
  • 21. Logic of data analysis • Univariate analysis – One variable at a time (descriptive) • Bivariate analysis – Two variables at a time (testing relationships) • Multivariate analysis – More than two variables at a time (testing relationships and controlling for other variables)
  • 22. Variables • Dependent variable: – What we are trying to predict – E.g., Brand preference • Independent variables: – What we are using as predictors – E.g., Gender, Product usage history
  • 23. Commonality across all statistical analysis procedures • Set the significance level: – E.g., .05 level • Means that we are willing to conclude that there is a relationship if: – Chance of Type I error is less than 5% • Statistical tests tell us whether: – The observed relationship has less than a 5% chance of occurring by chance
  • 24. Summary of Statistical Procedures Variables Procedure Nominal IV, Nominal DV Chi-square Nominal IV, Ratio DV T-test Multiple Nominal IVs, Ratio ANOVA DV Ratio IV, Ratio DV Pearson’s R Multiple Nominal IVs, Ratio ANCOVA DV with ratio covariates Multiple ratio Multiple Regression