SlideShare a Scribd company logo
1 of 7
Statistical quality management
In this file, you can ref useful information about statistical quality management such as statistical
quality managementforms, tools for statistical quality management, statistical quality
managementstrategies … If you need more assistant for statistical quality management, please
leave your comment at the end of file.
Other useful material for statistical quality management:
• qualitymanagement123.com/23-free-ebooks-for-quality-management
• qualitymanagement123.com/185-free-quality-management-forms
• qualitymanagement123.com/free-98-ISO-9001-templates-and-forms
• qualitymanagement123.com/top-84-quality-management-KPIs
• qualitymanagement123.com/top-18-quality-management-job-descriptions
• qualitymanagement123.com/86-quality-management-interview-questions-and-answers
I. Contents of statistical quality management
==================
The purpose of the Statistical Quality Management page is to help you find information on
Australian Bureau of Statistics (ABS) statistical quality management initiatives. We've created
some categories to help you in your search for data quality related information. If you work with
data, then the Statistical Quality Management page may be of use to you.
The ABS Data Quality Framework
Are you trying to figure out whether a particular statistic is fit for your purpose?
Would you like to assess your own data to find where improvements can be made?
Would you like to report the quality of your data?
The ABS Data Quality Framework can help you do all of these things.
This page provides information on the dimensions that define data quality, along with a link to
an online assistant that can help you use the ABS Data Quality Framework for your own data
quality purposes.
Data Quality Management
Managing statistical processes to produce quality data can be difficult, as it is hard to not lose
sight of the outcomes that you are hoping to achieve when you are busy trying to create outputs.
The data quality management page provides information papers to help you think about the risks
that are associated with data quality management, along with information on how to reduce your
exposure to these types of risks.
ABS Quality Information Papers
This page contains links to papers regarding quality authored by ABS staff.
Other Sources of Information Related to Quality in the ABS
Ever wanted to know about the different methods and standards that are applied to the data that
the Australian Bureau of Statistics (ABS) produces?
This page provides links to other useful sources of information regarding this type of data quality
management.
==================
III. Quality management tools
1. Check sheet
The check sheet is a form (document) used to collect data
in real time at the location where the data is generated.
The data it captures can be quantitative or qualitative.
When the information is quantitative, the check sheet is
sometimes called a tally sheet.
The defining characteristic of a check sheet is that data
are recorded by making marks ("checks") on it. A typical
check sheet is divided into regions, and marks made in
different regions have different significance. Data are
read by observing the location and number of marks on
the sheet.
Check sheets typically employ a heading that answers the
Five Ws:
 Who filled out the check sheet
 What was collected (what each check represents,
an identifying batch or lot number)
 Where the collection took place (facility, room,
apparatus)
 When the collection took place (hour, shift, day
of the week)
 Why the data were collected
2. Control chart
Control charts, also known as Shewhart charts
(after Walter A. Shewhart) or process-behavior
charts, in statistical process control are tools used
to determine if a manufacturing or business
process is in a state of statistical control.
If analysis of the control chart indicates that the
process is currently under control (i.e., is stable,
with variation only coming from sources common
to the process), then no corrections or changes to
process control parameters are needed or desired.
In addition, data from the process can be used to
predict the future performance of the process. If
the chart indicates that the monitored process is
not in control, analysis of the chart can help
determine the sources of variation, as this will
result in degraded process performance.[1] A
process that is stable but operating outside of
desired (specification) limits (e.g., scrap rates
may be in statistical control but above desired
limits) needs to be improved through a deliberate
effort to understand the causes of current
performance and fundamentally improve the
process.
The control chart is one of the seven basic tools of
quality control.[3] Typically control charts are
used for time-series data, though they can be used
for data that have logical comparability (i.e. you
want to compare samples that were taken all at
the same time, or the performance of different
individuals), however the type of chart used to do
this requires consideration.
3. Pareto chart
A Pareto chart, named after Vilfredo Pareto, is a type
of chart that contains both bars and a line graph, where
individual values are represented in descending order
by bars, and the cumulative total is represented by the
line.
The left vertical axis is the frequency of occurrence,
but it can alternatively represent cost or another
important unit of measure. The right vertical axis is
the cumulative percentage of the total number of
occurrences, total cost, or total of the particular unit of
measure. Because the reasons are in decreasing order,
the cumulative function is a concave function. To take
the example above, in order to lower the amount of
late arrivals by 78%, it is sufficient to solve the first
three issues.
The purpose of the Pareto chart is to highlight the
most important among a (typically large) set of
factors. In quality control, it often represents the most
common sources of defects, the highest occurring type
of defect, or the most frequent reasons for customer
complaints, and so on. Wilkinson (2006) devised an
algorithm for producing statistically based acceptance
limits (similar to confidence intervals) for each bar in
the Pareto chart.
4. Scatter plot Method
A scatter plot, scatterplot, or scattergraph is a type of
mathematical diagram using Cartesian coordinates to
display values for two variables for a set of data.
The data is displayed as a collection of points, each
having the value of one variable determining the position
on the horizontal axis and the value of the other variable
determining the position on the vertical axis.[2] This kind
of plot is also called a scatter chart, scattergram, scatter
diagram,[3] or scatter graph.
A scatter plot is used when a variable exists that is under
the control of the experimenter. If a parameter exists that
is systematically incremented and/or decremented by the
other, it is called the control parameter or independent
variable and is customarily plotted along the horizontal
axis. The measured or dependent variable is customarily
plotted along the vertical axis. If no dependent variable
exists, either type of variable can be plotted on either axis
and a scatter plot will illustrate only the degree of
correlation (not causation) between two variables.
A scatter plot can suggest various kinds of correlations
between variables with a certain confidence interval. For
example, weight and height, weight would be on x axis
and height would be on the y axis. Correlations may be
positive (rising), negative (falling), or null (uncorrelated).
If the pattern of dots slopes from lower left to upper right,
it suggests a positive correlation between the variables
being studied. If the pattern of dots slopes from upper left
to lower right, it suggests a negative correlation. A line of
best fit (alternatively called 'trendline') can be drawn in
order to study the correlation between the variables. An
equation for the correlation between the variables can be
determined by established best-fit procedures. For a linear
correlation, the best-fit procedure is known as linear
regression and is guaranteed to generate a correct solution
in a finite time. No universal best-fit procedure is
guaranteed to generate a correct solution for arbitrary
relationships. A scatter plot is also very useful when we
wish to see how two comparable data sets agree with each
other. In this case, an identity line, i.e., a y=x line, or an
1:1 line, is often drawn as a reference. The more the two
data sets agree, the more the scatters tend to concentrate in
the vicinity of the identity line; if the two data sets are
numerically identical, the scatters fall on the identity line
exactly.
5.Ishikawa diagram
Ishikawa diagrams (also called fishbone diagrams,
herringbone diagrams, cause-and-effect diagrams, or
Fishikawa) are causal diagrams created by Kaoru
Ishikawa (1968) that show the causes of a specific
event.[1][2] Common uses of the Ishikawa diagram are
product design and quality defect prevention, to identify
potential factors causing an overall effect. Each cause or
reason for imperfection is a source of variation. Causes
are usually grouped into major categories to identify these
sources of variation. The categories typically include
 People: Anyone involved with the process
 Methods: How the process is performed and the
specific requirements for doing it, such as policies,
procedures, rules, regulations and laws
 Machines: Any equipment, computers, tools, etc.
required to accomplish the job
 Materials: Raw materials, parts, pens, paper, etc.
used to produce the final product
 Measurements: Data generated from the process
that are used to evaluate its quality
 Environment: The conditions, such as location,
time, temperature, and culture in which the process
operates
6. Histogram method
A histogram is a graphical representation of the
distribution of data. It is an estimate of the probability
distribution of a continuous variable (quantitative
variable) and was first introduced by Karl Pearson.[1] To
construct a histogram, the first step is to "bin" the range of
values -- that is, divide the entire range of values into a
series of small intervals -- and then count how many
values fall into each interval. A rectangle is drawn with
height proportional to the count and width equal to the bin
size, so that rectangles abut each other. A histogram may
also be normalized displaying relative frequencies. It then
shows the proportion of cases that fall into each of several
categories, with the sum of the heights equaling 1. The
bins are usually specified as consecutive, non-overlapping
intervals of a variable. The bins (intervals) must be
adjacent, and usually equal size.[2] The rectangles of a
histogram are drawn so that they touch each other to
indicate that the original variable is continuous.[3]
III. Other topics related to Statistical quality management (pdf download)
quality management systems
quality management courses
quality management tools
iso 9001 quality management system
quality management process
quality management system example
quality system management
quality management techniques
quality management standards
quality management policy
quality management strategy
quality management books

More Related Content

What's hot

Certification in quality management
Certification in quality managementCertification in quality management
Certification in quality managementselinasimpson2101
 
Quality document management system
Quality document management systemQuality document management system
Quality document management systemselinasimpson2501
 
Quality management certification courses
Quality management certification coursesQuality management certification courses
Quality management certification coursesselinasimpson2101
 
Quality management system consultants
Quality management system consultantsQuality management system consultants
Quality management system consultantsselinasimpson2001
 
Quality management consultant
Quality management consultantQuality management consultant
Quality management consultantselinasimpson2501
 
Continual improvement of the quality management system
Continual improvement of the quality management systemContinual improvement of the quality management system
Continual improvement of the quality management systemselinasimpson1501
 
Example of quality management
Example of quality managementExample of quality management
Example of quality managementselinasimpson2401
 
Certificate in quality management
Certificate in quality managementCertificate in quality management
Certificate in quality managementselinasimpson1201
 
Functions of quality management
Functions of quality managementFunctions of quality management
Functions of quality managementselinasimpson2901
 
Quality management system certification
Quality management system certificationQuality management system certification
Quality management system certificationselinasimpson0801
 
Quality management international
Quality management internationalQuality management international
Quality management internationalselinasimpson2301
 
Risk management and quality management
Risk management and quality managementRisk management and quality management
Risk management and quality managementselinasimpson2201
 
Data quality management definition
Data quality management definitionData quality management definition
Data quality management definitionselinasimpson311
 
Medical quality management
Medical quality managementMedical quality management
Medical quality managementselinasimpson321
 

What's hot (20)

Certification in quality management
Certification in quality managementCertification in quality management
Certification in quality management
 
Water quality management
Water quality managementWater quality management
Water quality management
 
Quality document management system
Quality document management systemQuality document management system
Quality document management system
 
Quality management certification courses
Quality management certification coursesQuality management certification courses
Quality management certification courses
 
Quality management system consultants
Quality management system consultantsQuality management system consultants
Quality management system consultants
 
Quality management project
Quality management projectQuality management project
Quality management project
 
Quality management consultant
Quality management consultantQuality management consultant
Quality management consultant
 
Continual improvement of the quality management system
Continual improvement of the quality management systemContinual improvement of the quality management system
Continual improvement of the quality management system
 
Example of quality management
Example of quality managementExample of quality management
Example of quality management
 
Certificate in quality management
Certificate in quality managementCertificate in quality management
Certificate in quality management
 
Functions of quality management
Functions of quality managementFunctions of quality management
Functions of quality management
 
Quality management system certification
Quality management system certificationQuality management system certification
Quality management system certification
 
Quality management international
Quality management internationalQuality management international
Quality management international
 
Quality management quotes
Quality management quotesQuality management quotes
Quality management quotes
 
Quality management book
Quality management bookQuality management book
Quality management book
 
Risk management and quality management
Risk management and quality managementRisk management and quality management
Risk management and quality management
 
Data quality management definition
Data quality management definitionData quality management definition
Data quality management definition
 
Supply quality management
Supply quality managementSupply quality management
Supply quality management
 
Quality management example
Quality management exampleQuality management example
Quality management example
 
Medical quality management
Medical quality managementMedical quality management
Medical quality management
 

Similar to Statistical quality management tools and strategies

Asian institute of quality management
Asian institute of quality managementAsian institute of quality management
Asian institute of quality managementselinasimpson1301
 
Open source quality management software
Open source quality management softwareOpen source quality management software
Open source quality management softwareselinasimpson1301
 
Presentation on quality management system
Presentation on quality management systemPresentation on quality management system
Presentation on quality management systemselinasimpson3001
 
Quality management statement template
Quality management statement templateQuality management statement template
Quality management statement templateselinasimpson361
 
Quality management in radiology
Quality management in radiologyQuality management in radiology
Quality management in radiologyselinasimpson351
 
Key concepts of quality management
Key concepts of quality managementKey concepts of quality management
Key concepts of quality managementselinasimpson311
 
Quality management policy example
Quality management policy exampleQuality management policy example
Quality management policy exampleselinasimpson2401
 
Quality management companies
Quality management companiesQuality management companies
Quality management companiesselinasimpson321
 
Examples of quality management
Examples of quality managementExamples of quality management
Examples of quality managementselinasimpson2201
 
Iso 9001 audit questions
Iso 9001 audit questionsIso 9001 audit questions
Iso 9001 audit questionspogerita
 

Similar to Statistical quality management tools and strategies (15)

Asian institute of quality management
Asian institute of quality managementAsian institute of quality management
Asian institute of quality management
 
Open source quality management software
Open source quality management softwareOpen source quality management software
Open source quality management software
 
Presentation on quality management system
Presentation on quality management systemPresentation on quality management system
Presentation on quality management system
 
Project quality management
Project quality managementProject quality management
Project quality management
 
Quality management statement template
Quality management statement templateQuality management statement template
Quality management statement template
 
Quality management in radiology
Quality management in radiologyQuality management in radiology
Quality management in radiology
 
Key concepts of quality management
Key concepts of quality managementKey concepts of quality management
Key concepts of quality management
 
Quality management policy example
Quality management policy exampleQuality management policy example
Quality management policy example
 
Quality management iso 9001
Quality management iso 9001Quality management iso 9001
Quality management iso 9001
 
Quality data management
Quality data managementQuality data management
Quality data management
 
Quality data management
Quality data managementQuality data management
Quality data management
 
Quality management companies
Quality management companiesQuality management companies
Quality management companies
 
Btech quality management
Btech quality managementBtech quality management
Btech quality management
 
Examples of quality management
Examples of quality managementExamples of quality management
Examples of quality management
 
Iso 9001 audit questions
Iso 9001 audit questionsIso 9001 audit questions
Iso 9001 audit questions
 

More from selinasimpson2601

Quality management system model
Quality management system modelQuality management system model
Quality management system modelselinasimpson2601
 
Quality management strategy prince2
Quality management strategy prince2Quality management strategy prince2
Quality management strategy prince2selinasimpson2601
 
Quality management organization
Quality management organizationQuality management organization
Quality management organizationselinasimpson2601
 
Quality management essentials
Quality management essentialsQuality management essentials
Quality management essentialsselinasimpson2601
 
Quality management coordinator
Quality management coordinatorQuality management coordinator
Quality management coordinatorselinasimpson2601
 
International quality management system
International quality management systemInternational quality management system
International quality management systemselinasimpson2601
 
Effective quality management system
Effective quality management systemEffective quality management system
Effective quality management systemselinasimpson2601
 
Call center quality management
Call center quality managementCall center quality management
Call center quality managementselinasimpson2601
 

More from selinasimpson2601 (12)

Quality management topics
Quality management topicsQuality management topics
Quality management topics
 
Quality management system model
Quality management system modelQuality management system model
Quality management system model
 
Quality management strategy prince2
Quality management strategy prince2Quality management strategy prince2
Quality management strategy prince2
 
Quality management organization
Quality management organizationQuality management organization
Quality management organization
 
Quality management masters
Quality management mastersQuality management masters
Quality management masters
 
Quality management essentials
Quality management essentialsQuality management essentials
Quality management essentials
 
Quality management coordinator
Quality management coordinatorQuality management coordinator
Quality management coordinator
 
Nursing quality management
Nursing quality managementNursing quality management
Nursing quality management
 
International quality management system
International quality management systemInternational quality management system
International quality management system
 
High quality management
High quality managementHigh quality management
High quality management
 
Effective quality management system
Effective quality management systemEffective quality management system
Effective quality management system
 
Call center quality management
Call center quality managementCall center quality management
Call center quality management
 

Statistical quality management tools and strategies

  • 1. Statistical quality management In this file, you can ref useful information about statistical quality management such as statistical quality managementforms, tools for statistical quality management, statistical quality managementstrategies … If you need more assistant for statistical quality management, please leave your comment at the end of file. Other useful material for statistical quality management: • qualitymanagement123.com/23-free-ebooks-for-quality-management • qualitymanagement123.com/185-free-quality-management-forms • qualitymanagement123.com/free-98-ISO-9001-templates-and-forms • qualitymanagement123.com/top-84-quality-management-KPIs • qualitymanagement123.com/top-18-quality-management-job-descriptions • qualitymanagement123.com/86-quality-management-interview-questions-and-answers I. Contents of statistical quality management ================== The purpose of the Statistical Quality Management page is to help you find information on Australian Bureau of Statistics (ABS) statistical quality management initiatives. We've created some categories to help you in your search for data quality related information. If you work with data, then the Statistical Quality Management page may be of use to you. The ABS Data Quality Framework Are you trying to figure out whether a particular statistic is fit for your purpose? Would you like to assess your own data to find where improvements can be made? Would you like to report the quality of your data? The ABS Data Quality Framework can help you do all of these things. This page provides information on the dimensions that define data quality, along with a link to an online assistant that can help you use the ABS Data Quality Framework for your own data quality purposes. Data Quality Management Managing statistical processes to produce quality data can be difficult, as it is hard to not lose sight of the outcomes that you are hoping to achieve when you are busy trying to create outputs. The data quality management page provides information papers to help you think about the risks that are associated with data quality management, along with information on how to reduce your exposure to these types of risks.
  • 2. ABS Quality Information Papers This page contains links to papers regarding quality authored by ABS staff. Other Sources of Information Related to Quality in the ABS Ever wanted to know about the different methods and standards that are applied to the data that the Australian Bureau of Statistics (ABS) produces? This page provides links to other useful sources of information regarding this type of data quality management. ================== III. Quality management tools 1. Check sheet The check sheet is a form (document) used to collect data in real time at the location where the data is generated. The data it captures can be quantitative or qualitative. When the information is quantitative, the check sheet is sometimes called a tally sheet. The defining characteristic of a check sheet is that data are recorded by making marks ("checks") on it. A typical check sheet is divided into regions, and marks made in different regions have different significance. Data are read by observing the location and number of marks on the sheet. Check sheets typically employ a heading that answers the Five Ws:  Who filled out the check sheet  What was collected (what each check represents, an identifying batch or lot number)  Where the collection took place (facility, room, apparatus)  When the collection took place (hour, shift, day of the week)  Why the data were collected
  • 3. 2. Control chart Control charts, also known as Shewhart charts (after Walter A. Shewhart) or process-behavior charts, in statistical process control are tools used to determine if a manufacturing or business process is in a state of statistical control. If analysis of the control chart indicates that the process is currently under control (i.e., is stable, with variation only coming from sources common to the process), then no corrections or changes to process control parameters are needed or desired. In addition, data from the process can be used to predict the future performance of the process. If the chart indicates that the monitored process is not in control, analysis of the chart can help determine the sources of variation, as this will result in degraded process performance.[1] A process that is stable but operating outside of desired (specification) limits (e.g., scrap rates may be in statistical control but above desired limits) needs to be improved through a deliberate effort to understand the causes of current performance and fundamentally improve the process. The control chart is one of the seven basic tools of quality control.[3] Typically control charts are used for time-series data, though they can be used for data that have logical comparability (i.e. you want to compare samples that were taken all at the same time, or the performance of different individuals), however the type of chart used to do this requires consideration. 3. Pareto chart
  • 4. A Pareto chart, named after Vilfredo Pareto, is a type of chart that contains both bars and a line graph, where individual values are represented in descending order by bars, and the cumulative total is represented by the line. The left vertical axis is the frequency of occurrence, but it can alternatively represent cost or another important unit of measure. The right vertical axis is the cumulative percentage of the total number of occurrences, total cost, or total of the particular unit of measure. Because the reasons are in decreasing order, the cumulative function is a concave function. To take the example above, in order to lower the amount of late arrivals by 78%, it is sufficient to solve the first three issues. The purpose of the Pareto chart is to highlight the most important among a (typically large) set of factors. In quality control, it often represents the most common sources of defects, the highest occurring type of defect, or the most frequent reasons for customer complaints, and so on. Wilkinson (2006) devised an algorithm for producing statistically based acceptance limits (similar to confidence intervals) for each bar in the Pareto chart. 4. Scatter plot Method A scatter plot, scatterplot, or scattergraph is a type of mathematical diagram using Cartesian coordinates to display values for two variables for a set of data. The data is displayed as a collection of points, each having the value of one variable determining the position on the horizontal axis and the value of the other variable determining the position on the vertical axis.[2] This kind of plot is also called a scatter chart, scattergram, scatter diagram,[3] or scatter graph. A scatter plot is used when a variable exists that is under the control of the experimenter. If a parameter exists that
  • 5. is systematically incremented and/or decremented by the other, it is called the control parameter or independent variable and is customarily plotted along the horizontal axis. The measured or dependent variable is customarily plotted along the vertical axis. If no dependent variable exists, either type of variable can be plotted on either axis and a scatter plot will illustrate only the degree of correlation (not causation) between two variables. A scatter plot can suggest various kinds of correlations between variables with a certain confidence interval. For example, weight and height, weight would be on x axis and height would be on the y axis. Correlations may be positive (rising), negative (falling), or null (uncorrelated). If the pattern of dots slopes from lower left to upper right, it suggests a positive correlation between the variables being studied. If the pattern of dots slopes from upper left to lower right, it suggests a negative correlation. A line of best fit (alternatively called 'trendline') can be drawn in order to study the correlation between the variables. An equation for the correlation between the variables can be determined by established best-fit procedures. For a linear correlation, the best-fit procedure is known as linear regression and is guaranteed to generate a correct solution in a finite time. No universal best-fit procedure is guaranteed to generate a correct solution for arbitrary relationships. A scatter plot is also very useful when we wish to see how two comparable data sets agree with each other. In this case, an identity line, i.e., a y=x line, or an 1:1 line, is often drawn as a reference. The more the two data sets agree, the more the scatters tend to concentrate in the vicinity of the identity line; if the two data sets are numerically identical, the scatters fall on the identity line exactly.
  • 6. 5.Ishikawa diagram Ishikawa diagrams (also called fishbone diagrams, herringbone diagrams, cause-and-effect diagrams, or Fishikawa) are causal diagrams created by Kaoru Ishikawa (1968) that show the causes of a specific event.[1][2] Common uses of the Ishikawa diagram are product design and quality defect prevention, to identify potential factors causing an overall effect. Each cause or reason for imperfection is a source of variation. Causes are usually grouped into major categories to identify these sources of variation. The categories typically include  People: Anyone involved with the process  Methods: How the process is performed and the specific requirements for doing it, such as policies, procedures, rules, regulations and laws  Machines: Any equipment, computers, tools, etc. required to accomplish the job  Materials: Raw materials, parts, pens, paper, etc. used to produce the final product  Measurements: Data generated from the process that are used to evaluate its quality  Environment: The conditions, such as location, time, temperature, and culture in which the process operates 6. Histogram method
  • 7. A histogram is a graphical representation of the distribution of data. It is an estimate of the probability distribution of a continuous variable (quantitative variable) and was first introduced by Karl Pearson.[1] To construct a histogram, the first step is to "bin" the range of values -- that is, divide the entire range of values into a series of small intervals -- and then count how many values fall into each interval. A rectangle is drawn with height proportional to the count and width equal to the bin size, so that rectangles abut each other. A histogram may also be normalized displaying relative frequencies. It then shows the proportion of cases that fall into each of several categories, with the sum of the heights equaling 1. The bins are usually specified as consecutive, non-overlapping intervals of a variable. The bins (intervals) must be adjacent, and usually equal size.[2] The rectangles of a histogram are drawn so that they touch each other to indicate that the original variable is continuous.[3] III. Other topics related to Statistical quality management (pdf download) quality management systems quality management courses quality management tools iso 9001 quality management system quality management process quality management system example quality system management quality management techniques quality management standards quality management policy quality management strategy quality management books