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XmR Chart

Farrokh Alemi, Ph.D.. Purpose of Control Chart. Real or random.Tell a story of changes in outcomes of the process.. Farrokh Alemi, Ph.D.. Moving Range. Farrokh Alemi, Ph.D.. Moving Range. Farrokh Alemi, Ph.D.. Moving Range. Farrokh Alemi, Ph.D.. Moving Range. Most commonapproach. Which Chart is Right?.

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XmR Chart

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    1. XmR Chart Farrokh Alemi, Ph.D. This is the lecture on XmR chart by Farrokh Alemi. This lecture was updated in 2007. This is the lecture on XmR chart by Farrokh Alemi. This lecture was updated in 2007.

    2. Farrokh Alemi, Ph.D. Purpose of Control Chart Real or random. Tell a story of changes in outcomes of the process. The purpose of control charts is to verify if the change in the process is real or due to random chance events. Every process has some inherent variability. The purpose of constructing a control chart is distinguish between real change and this inherent noise and variability in the process. Another purpose of constructing a control chart is to tell a visual story about the outcomes of a process. Control charts are more effective than statistical reports because they visually show what has occurred. For many, the picture tells a more effective story than the numbers.The purpose of control charts is to verify if the change in the process is real or due to random chance events. Every process has some inherent variability. The purpose of constructing a control chart is distinguish between real change and this inherent noise and variability in the process. Another purpose of constructing a control chart is to tell a visual story about the outcomes of a process. Control charts are more effective than statistical reports because they visually show what has occurred. For many, the picture tells a more effective story than the numbers.

    3. Farrokh Alemi, Ph.D. Moving Range XmR chart is based on consecutive differences in observed values. Here we see the observations for 7 time periods. A moving range of 2 would select any two consecutive values and calculate their differences. XmR chart is based on consecutive differences in observed values. Here we see the observations for 7 time periods. A moving range of 2 would select any two consecutive values and calculate their differences.

    4. Farrokh Alemi, Ph.D. Moving Range A moving range of 3 would select the maximum difference in three consecutive values. The difference in time period 3 is calculated to be 4 which is the difference between 201 and 197, the maximum and the minimum of three consecutive values.A moving range of 3 would select the maximum difference in three consecutive values. The difference in time period 3 is calculated to be 4 which is the difference between 201 and 197, the maximum and the minimum of three consecutive values.

    5. Farrokh Alemi, Ph.D. Moving Range A moving range of 4 would select the maximum difference in four consecutive values. Differences in consecutive values have Normal distribution as moving range is calculated on larger number of time periods A moving range of 4 would select the maximum difference in four consecutive values. Differences in consecutive values have Normal distribution as moving range is calculated on larger number of time periods

    6. Farrokh Alemi, Ph.D. Moving Range The most common approach is to use the difference of 2 consecutive values. It is the simpler method.The most common approach is to use the difference of 2 consecutive values. It is the simpler method.

    7. Which Chart is Right? For different outcomes different control charts are appropriate. The selection of which chart should be used in a particular situation should be based on the data available. A series of assumptions must be met before XmR chart can be applied. For different outcomes different control charts are appropriate. The selection of which chart should be used in a particular situation should be based on the data available. A series of assumptions must be met before XmR chart can be applied.

    8. Farrokh Alemi, Ph.D. Assumptions There is one observation per time period Observations are measured in an “interval” scale Observations are independent of each other The assumptions of XmR chart include the following. First that there is one observation per time period. Second, that observations are measured in an “interval” scale, i.e. the observation values can be meaningfully added or divided. Third that observations are independent of each other, meaning that knowledge of one observation does not tell much about what the next value will be.  Outcomes of infectious diseases are usually not considered independent as knowing that we have an infectious disease, increases the probability of infection for next time period The assumptions of XmR chart include the following. First that there is one observation per time period. Second, that observations are measured in an “interval” scale, i.e. the observation values can be meaningfully added or divided. Third that observations are independent of each other, meaning that knowledge of one observation does not tell much about what the next value will be.  Outcomes of infectious diseases are usually not considered independent as knowing that we have an infectious disease, increases the probability of infection for next time period

    9. Farrokh Alemi, Ph.D. Selection of Time Period if there is an intervention, we need to decide if the control limits should be calculated from the pre- or post-intervention period.  Select the period with the least variability and that will produce the tightest control limit. if there is an intervention, we need to decide if the control limits should be calculated from the pre- or post-intervention period.  Select the period with the least variability and that will produce the tightest control limit. 

    10. Farrokh Alemi, Ph.D. Selection of Time Period The variability within pre- and post intervention period can be examined visually or by calculating the difference between maximum and minimum value in each time period.  Calculate the control limit from the pre-intervention period if it has the smaller difference.  Otherwise, calculate the control limits from the post intervention period.  Control limits are calculated from one time period and extended to the other so that we can judge if the post and pre-intervention periods differ.  The variability within pre- and post intervention period can be examined visually or by calculating the difference between maximum and minimum value in each time period.  Calculate the control limit from the pre-intervention period if it has the smaller difference.  Otherwise, calculate the control limits from the post intervention period.  Control limits are calculated from one time period and extended to the other so that we can judge if the post and pre-intervention periods differ. 

    11. Farrokh Alemi, Ph.D. Calculate Average Moving Range for 2 Consecutive Values Control limits in XmR chart are calculated from moving range (mR).  A range is based on the absolute value of consecutive differences in observations. To calculate the average of the moving range, count the number of observations. Then calculate the absolute value of the difference of every consecutive value, call this moving range. Add the moving ranges and divide by number of observations minus 1 to get the average moving range. Control limits in XmR chart are calculated from moving range (mR).  A range is based on the absolute value of consecutive differences in observations. To calculate the average of the moving range, count the number of observations. Then calculate the absolute value of the difference of every consecutive value, call this moving range. Add the moving ranges and divide by number of observations minus 1 to get the average moving range.

    12. Farrokh Alemi, Ph.D. Formula for Calculating Upper and Lower Control Limits Upper Control Limit = Average of observations + E * Average of moving range Lower Control Limit = Average of observations - E * Average of moving range Upper control limit is average of the observations plus the constant E times the average range,  The lower control limit is calculated as the average of the observations minus the constant E times the average moving range. The value of constant E is chosen so that 99% of the data fall within the control limits.  Upper control limit is average of the observations plus the constant E times the average range,  The lower control limit is calculated as the average of the observations minus the constant E times the average moving range. The value of constant E is chosen so that 99% of the data fall within the control limits. 

    13. Farrokh Alemi, Ph.D. E Depends on Number of Time Periods in the Range The constant E depends on the number of time periods within the moving range. If the moving range is calculated from two consecutive time periods, then the correction factor that should be used is 2.66. If moving range is calculated from 4 time periods then 1.467 should be used. The constant E depends on the number of time periods within the moving range. If the moving range is calculated from two consecutive time periods, then the correction factor that should be used is 2.66. If moving range is calculated from 4 time periods then 1.467 should be used.

    14. Farrokh Alemi, Ph.D. Example Diabetes patient measured weight for 16 weeks First 7 weeks were pre-intervention Has the patient’s weight changed? Let’s look at a diabetic patient’s weight.  His clinician asked him to weigh himself weekly and to bring the data to their follow-up visit.  The patient attempted to lose weight by changing the food shopped for the household.  He started the intervention in week 8, so the first 7 weeks show the data prior to the intervention and the remainder show the data post the intervention.  The data in this Table show Jim's weight over time. He started at 199 but his weight went up and down. The question is has he improved? Let’s look at a diabetic patient’s weight.  His clinician asked him to weigh himself weekly and to bring the data to their follow-up visit.  The patient attempted to lose weight by changing the food shopped for the household.  He started the intervention in week 8, so the first 7 weeks show the data prior to the intervention and the remainder show the data post the intervention.  The data in this Table show Jim's weight over time. He started at 199 but his weight went up and down. The question is has he improved?

    15. Farrokh Alemi, Ph.D. 1. Check Assumptions One observation per time period Interval scale Independent observations We analyze this data in seven steps. First we need to check that the assumptions of XmR chart apply to this sample data. There is one observations per time period. Therefore this assumption is met. Data are weights, which are indeed calculated on an interval scale, therefore this assumption is also met. Finally observations are independent or can reasonably be assumed to be independent. There is no reason to expect that last week’s weight might tell us if this week Jim’s weight goes up or down. Therefore all assumptions are met.We analyze this data in seven steps. First we need to check that the assumptions of XmR chart apply to this sample data. There is one observations per time period. Therefore this assumption is met. Data are weights, which are indeed calculated on an interval scale, therefore this assumption is also met. Finally observations are independent or can reasonably be assumed to be independent. There is no reason to expect that last week’s weight might tell us if this week Jim’s weight goes up or down. Therefore all assumptions are met.

    16. Farrokh Alemi, Ph.D. 2. Select Pre- Or Post-Intervention Period Second, we need to make a decision whether to calculate the control limit from either pre-intervention or post intervention data.  To make this decision, we need to select a time period with least variability.  The maximum value minus the minimum value in the pre-intervention period is 8 Lbs. The range for the post intervention period is 13 Lbs.  The pre-intervention period has the lower variability and therefore control limits calculated from this period will be tighter.   Therefore, we select to calculate the control limits from the pre-intervention period.  Second, we need to make a decision whether to calculate the control limit from either pre-intervention or post intervention data.  To make this decision, we need to select a time period with least variability.  The maximum value minus the minimum value in the pre-intervention period is 8 Lbs. The range for the post intervention period is 13 Lbs.  The pre-intervention period has the lower variability and therefore control limits calculated from this period will be tighter.   Therefore, we select to calculate the control limits from the pre-intervention period. 

    17. Farrokh Alemi, Ph.D. 3. Calculation of Moving Range Third, we calculate the average range between any two consecutive values.  This is done by calculating the absolute value of the difference of any two consecutive number and then taking the average of these differences  Third, we calculate the average range between any two consecutive values.  This is done by calculating the absolute value of the difference of any two consecutive number and then taking the average of these differences  

    18. Farrokh Alemi, Ph.D. This slide shows how the various values were calculated within Excel. The value of moving range was calculated using the absolute value function within Excel.This slide shows how the various values were calculated within Excel. The value of moving range was calculated using the absolute value function within Excel.

    19. Farrokh Alemi, Ph.D. The average value of moving range was calculated using the average function within Excel. Note that the average is taken over the 6 time period in which there are valid values for moving range.The average value of moving range was calculated using the average function within Excel. Note that the average is taken over the 6 time period in which there are valid values for moving range.

    20. Farrokh Alemi, Ph.D. The average value of observations is also calculated from the pre-intervention period.The average value of observations is also calculated from the pre-intervention period.

    21. Farrokh Alemi, Ph.D. 4. Calculation of Control Limits UCL = 197.43 + 2.66 * 2.67 = 204.52 LCL = 197.43  - 2.66 * 2.67 = 190.33 Fourth, using the averages, we calculate the Upper and Lower control limits.  Note that the E correction factor 2.66 is used in the calculations because the range was over two consecutive differences.  Fourth, using the averages, we calculate the Upper and Lower control limits.  Note that the E correction factor 2.66 is used in the calculations because the range was over two consecutive differences.  

    22. Farrokh Alemi, Ph.D. 5. Plot the Control Chart Plot the x and y axis, plot the observations Plot the limits as line with no marker Plot solid line for pre-intervention period fifth, we plot the chart for the entire 16 weeks. We show the control limits as solid lines for the pre-intervention period and as a dashed line for the post intervention period. The x-axis is weeks since start and the Y-axis is the weight of Jim.   fifth, we plot the chart for the entire 16 weeks. We show the control limits as solid lines for the pre-intervention period and as a dashed line for the post intervention period. The x-axis is weeks since start and the Y-axis is the weight of Jim.  

    23. Farrokh Alemi, Ph.D. 6. Interpret the Chart Points outside the limits show real changes in outcomes of the process Sixth, we interpret the findings.  During the first 7 weeks, no points are outside the control limit.  After this period, when food shopping patterns were changed, we see 4 points outside the limit.  These points mark a departure from the pattern in the first 7 weeks.  They show that the patient's weight has declined.  This decline is not a random fluctuation but marks a real change in the process.                       Sixth, we interpret the findings.  During the first 7 weeks, no points are outside the control limit.  After this period, when food shopping patterns were changed, we see 4 points outside the limit.  These points mark a departure from the pattern in the first 7 weeks.  They show that the patient's weight has declined.  This decline is not a random fluctuation but marks a real change in the process.                      

    24. Farrokh Alemi, Ph.D. 7. Distribute the Chart Distribute the chart by electronic media, as part of company newsletter, or as an element of a story board display Keep following in mind: Show that you have verified assumptions Check that your chart is accurately labeled Include your interpretation of the finding Finally in the last step the control chart and our interpretation is distributed. The assumptions and the interpretation of the chart is also included.Finally in the last step the control chart and our interpretation is distributed. The assumptions and the interpretation of the chart is also included.

    25. Take Home Lesson How and When to Construct an XmR chart This lecture was intended to show you when and how to construct an XmR chart.This lecture was intended to show you when and how to construct an XmR chart.

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