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Welcome! Week 1 Live Lecture/Discussion



       Applied Managerial Statistics (GM533)


                Lecturer: Brent Heard

 Please note that I borrowed these charts from Joni
          Bynum and the textbook publisher.
                     Thanks Joni!

I will put my touch on them (in blue) as we go along.
                                                        1
Tonight’s Agenda


•   Week 1 Terminal Course Objectives (TCOs)
•   Essential Questions and Problem Types
•   The Most Important Ideas in Statistics
•   Getting started with Minitab
•   Descriptive Statistics using Minitab
•   Questions?




                                               2
Week 1 Terminal Course Objectives (TCOs)



• TCO A Descriptive Statistics: Given a managerial
  problem and accompanying data set, construct graphs
  (following principles of ethical data presentation),
  calculate and interpret numerical summaries
  appropriate for the situation. Use the graphs and
  numerical summaries as aids in determining a course
  of action relative to the problem at hand.

• TCO F Statistics Software Competency: Students
  should be able to perform the necessary calculations
  for objectives A through E using technology, whether
  that be a computer statistical package or the TI-83,
  and be able to use the output to address a problem at
  hand.
                                                          3
The Most Important Ideas in Statistics


• Central tendency (measures of center) and
  dispersion (spread)
• Quantitative (numbers) and qualitative (words
  and numbers with no meaning) variables
• Description and inference
• One variable versus two or more variables




                                                  4
Selected Slides from the Text Book


• The following slides from the text book are intended
  to complement the live demonstration and provide a
  bridge to Module 1




                                                         5
Population Parameters

  A population parameter is a number
  calculated from all the population
  measurements that describes some aspect of
  the population (Remember “p” goes with “p”)

  The population mean, denoted , is a
  population parameter and is the average of
  the population measurements (Fancy letters
  are used for the population)


                                                6
Point Estimates and Sample Statistics

  A point estimate is a one-number estimate of
  the value of a population parameter
  A sample statistic is a number calculated using
  sample measurements that describes some
  aspect of the sample (“s” goes with “s”)
   Use sample statistics as point estimates of
     the population parameters
  The sample mean, denoted x, is a sample
  statistic and is the average of the sample
  measurements (Plain letters for the sample)
   The sample mean is a point estimate of the
     population mean                                7
Measures of Central Tendency


  Mean,        The average or expected value
  Median, Md The value of the middle point of the
             ordered measurements
  Mode, Mo     The most frequent value




                                                    8
The Mean

 Population X1, X2, …, XN   Sample x1, x2, …, xn


                                    x



  Population Mean             Sample Mean
        N                               n
              Xi                                  xi
                                        i=1
        i=1                     x
              N                               n

                                                       9
The Sample Mean


    For a sample of size n, the sample mean is defined as
                    n
                            xi
                   i 1           x1   x2 ... xn
            x
                        n               n
      and is a point estimate of the population mean
       • It is the value to expect, on average and in the long run




                                                                     10
Example: Car Mileage Case


     Example 3.1: Sample mean for first five car mileages from
                  Table 2.4
                             30.8, 31.7, 30.1, 31.6, 32.1

      5
              xi
     i 1           x1   x2   x3   x4   x5
x
          5                  5

     30.8 31.7 30.1 31.6 32.1 156 .3
x                                                    31.26
                5               5


                                                                 11
The Median

  The population or sample median Md is a value such that
  50% of all measurements, after having been arranged in
  numerical order, lie above (or below) it. (The median is the
  “center.”)
  The median Md is found as follows:
     1. If the number of measurements is odd, the median
        is the middlemost measurement in the ordered
        values

     2. If the number of measurements is even, the median
        is the average of the two middlemost measurements
        in the ordered values

                                                                 12
Example: Sample Median

  Internist’s Yearly Salaries (x$1000)
  127 132 138 141 144 146 152 154 165 171 177 192 241
  (Note that the values are in ascending numerical order from left to
  right)

  Because n = 13 (odd,) then the median is the middlemost or
  7th value of the ordered data, so
                                 Md=152
   • An annual salary of $180,000 is in the high end, well above
     the median salary of $152,000
       • In fact, $180,000 a very high and competitive salary

                                                                        13
The Mode

  The mode Mo of a population or sample of measurements is
  the measurement that occurs most frequently
   • Modes are the values that are observed “most typically”
   • Sometimes higher frequencies at two or more values
      • If there are two modes, the data is bimodal
      • If more than two modes, the data is multimodal
  • When data are in classes, the class with the highest
    frequency is the modal class
      • The tallest box in the histogram (The Tall Pole)




                                                               14
Relationships Among Mean, Median
and Mode


                                   Notice tail to
                                   right

             Notice tail to left




                                                    15
Central Tendency By Itself Not Enough

Knowing the measures of central tendency is
 not enough
Both of the distributions shown below have
 identical measures of central tendency




                                               16
The Normal Curve

                            Symmetrical and bell-shaped
                            curve for a normally distributed
                            population
                            The height of the normal over any
                            point represents the relative proportion
                            of values near that point




 Example 2.4, The Car Mileages Case




                                                                       17
The Empirical Rule for
Normal Populations

   If a population has mean and standard deviation   and
   is described by a normal curve, then

   68.26% of the population measurements lie within one
   standard deviation of the mean: [

   95.44% of the population measurements lie within two
   standard deviations of the mean: [ 2     2

   99.73% of the population measurements lie within three
   standard deviations of the mean: [ 3     3



                                                            2-18
                                                              18
z Scores (will be very important in our work
    with the Normal Distribution, beginning in
    Week 2 and for the entire course)
 For any x in a population or sample, the associated z
  score is
                           x mean
                   z
                       standarddeviation
 The z score is the number of standard deviations that
  x is from the mean
   A positive z score is for x above (greater than) the
      mean
   A negative z score is for x below (less than) the
      mean



                                      2-19                 19
Measures of Variation (Spread)

  Range
          Largest minus the smallest measurement
  Variance
        The average of the squared deviations of all
        the population measurements from the
        population mean

  Standard Deviation
          The square root of the variance



                                                       20
The Range

 Range = largest measurement - smallest measurement

 The range measures the interval spanned by all the data

  Example:
  Internist’s Salaries (in thousands of dollars)
     127 132 138 141 144 146 152 154 165 171 177 192 241
  Range = 241 - 127 = 114 ($114,000)




                                                           21
Variance

     For a population of size N, the population variance                            2

     is defined as
                N
                                2
                      xi                     2             2                    2
            2   i 1                 x1           x2               xN
                       N                               N

     For a sample of size n, the sample variance s2 is
     defined as
                 n
                                2
                      xi    x                2         2                    2
                                    x1   x       x2    x          xn   x
           s2   i 1
                      n 1                             n 1

     and is a point estimate for             2

                                                                                        22
The Standard Deviation


                                                 2
      Population Standard Deviation, :


                                                 2
      Sample Standard Deviation, s:      s   s




                                                     23
Example: Population Variance
and Standard Deviation
 Population of profit margins for five big American
 companies:
                  8%, 10%, 15%, 12%, 5%

  8 10 15 12 5               50
                                10%
        5                    5
                 2                2           2           2          2
   2   8 10               10 10       15 10       12 10       5 10
                                         5
             2
         2           02    52 2 2   52
                           5
       4 0       25       4 25 58
                                    11 .6
                  5               5
        2
                     11 .6    3.406 %
                                                                         24
Example: Sample Variance
     and Standard Deviation

       Example 3.7: Sample variance and standard deviation for
                    first five car mileages from Table 2.4
                             30.8, 31.7, 30.1, 31.6, 32.1 so           x    = 31.26
      5               2
            xi   x
s2    i 1
            5 1
            30.8 31.26 2    31.7 31.26 2   30.1 31.26 2      31.6 31.26 2   32.1 31.26 2
                                                4

       s2 = 2.572          4 = 0.643

       s         s2       .643 0.8019

                                                      2-25                                 25
Percentiles and Quartiles

 For a set of measurements arranged in increasing order,
 the pth percentile is a value such that p percent of the
 measurements fall at or below the value and (100-p)
 percent of the measurements fall at or above the value


 The first quartile Q1 is the 25th percentile
 The second quartile (or median) Md is the 50th percentile
 The third quartile Q3 is the 75th percentile

 The interquartile range IQR is Q3 - Q1


                                                             26
Example: Quartiles


               20 customer satisfaction ratings:
          1 3 5 5 7 8 8 8 8 8 8 9 9 9 9 9 10 10 10 10




                     Md = (8+8)/2 = 8

Q1 = (7+8)/2 = 7.5                      Q3 = (9+9)/2 = 9

             IQR = Q3     Q1 = 9   7.5 = 1.5

                                                           27
Population and Sample Proportions

     Population X1, X2, …, XN    Sample x1, x2, …, xn


           p                                ˆ
                                            p


                                  Sample Proportion
    Population Proportion
                                               n
                                                     xi
                                       ˆ
                                       p      i =1
                                                     n
                                ^
                                p is the point estimate of p


                                                               28
Example: Sample Proportion

  Marketing Ethics Case
        117 out of 205 marketing researchers disapproved
        of action taken in a hypothetical scenario
 X = 117, number of researches who disapprove
 n = 205, number of researchers surveyed

                           X   117
 Sample Proportion: ˆ
                    p                0.57
                           n   205




                                                           29
Getting Started with Minitab


•   Course Home: Minitab
•   Tutorial
•   Download
•   Getting help with your Minitab installation




                                                  30
Summary of Descriptive Statistics using Minitab
(concluded)



• Central tendency: mean, median, mode
• Dispersion: Range, standard deviation,
  interquartile range
• Stem – and - leaf display
• Histogram and frequency distribution




                                                  31
Essential Questions and Problem Types
for the Week 1 Mastery Module


• For a given data set, use Minitab to find
  numbers, pictures, and tables which show the
  central tendency, including: the mean,
  median, and mode, and the skewness
• For a given data set, use Minitab to find
  numbers, pictures, and tables which show the
  variability, or dispersion, including: the range,
  the standard deviation the interquartile range,
  and the Empirical Rule


                                                      32
Closing


I will post a link to these charts where I hang out on the internet.

I call it the “Statcave.”

http://www.facebook.com/statcave

YOU DO NOT HAVE TO BE A FACEBOOK PERSON TO SEE THE
  LINKS. I DO IT BECAUSE IT’S FREE AND FUN.

In my spare time, I write a syndicated column (humor, life, feel
   goods, etc.) that appears in newspapers and magazines in the
   southeast. If you ever get bored, check it out at:

http://www.cranksmytractor.com

See you next week! Same Stat Time, Same Stat Channel.
                                                                       33

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Week1 GM533 Slides

  • 1. Welcome! Week 1 Live Lecture/Discussion Applied Managerial Statistics (GM533) Lecturer: Brent Heard Please note that I borrowed these charts from Joni Bynum and the textbook publisher. Thanks Joni! I will put my touch on them (in blue) as we go along. 1
  • 2. Tonight’s Agenda • Week 1 Terminal Course Objectives (TCOs) • Essential Questions and Problem Types • The Most Important Ideas in Statistics • Getting started with Minitab • Descriptive Statistics using Minitab • Questions? 2
  • 3. Week 1 Terminal Course Objectives (TCOs) • TCO A Descriptive Statistics: Given a managerial problem and accompanying data set, construct graphs (following principles of ethical data presentation), calculate and interpret numerical summaries appropriate for the situation. Use the graphs and numerical summaries as aids in determining a course of action relative to the problem at hand. • TCO F Statistics Software Competency: Students should be able to perform the necessary calculations for objectives A through E using technology, whether that be a computer statistical package or the TI-83, and be able to use the output to address a problem at hand. 3
  • 4. The Most Important Ideas in Statistics • Central tendency (measures of center) and dispersion (spread) • Quantitative (numbers) and qualitative (words and numbers with no meaning) variables • Description and inference • One variable versus two or more variables 4
  • 5. Selected Slides from the Text Book • The following slides from the text book are intended to complement the live demonstration and provide a bridge to Module 1 5
  • 6. Population Parameters A population parameter is a number calculated from all the population measurements that describes some aspect of the population (Remember “p” goes with “p”) The population mean, denoted , is a population parameter and is the average of the population measurements (Fancy letters are used for the population) 6
  • 7. Point Estimates and Sample Statistics A point estimate is a one-number estimate of the value of a population parameter A sample statistic is a number calculated using sample measurements that describes some aspect of the sample (“s” goes with “s”) Use sample statistics as point estimates of the population parameters The sample mean, denoted x, is a sample statistic and is the average of the sample measurements (Plain letters for the sample) The sample mean is a point estimate of the population mean 7
  • 8. Measures of Central Tendency Mean, The average or expected value Median, Md The value of the middle point of the ordered measurements Mode, Mo The most frequent value 8
  • 9. The Mean Population X1, X2, …, XN Sample x1, x2, …, xn x Population Mean Sample Mean N n Xi xi i=1 i=1 x N n 9
  • 10. The Sample Mean For a sample of size n, the sample mean is defined as n xi i 1 x1 x2 ... xn x n n and is a point estimate of the population mean • It is the value to expect, on average and in the long run 10
  • 11. Example: Car Mileage Case Example 3.1: Sample mean for first five car mileages from Table 2.4 30.8, 31.7, 30.1, 31.6, 32.1 5 xi i 1 x1 x2 x3 x4 x5 x 5 5 30.8 31.7 30.1 31.6 32.1 156 .3 x 31.26 5 5 11
  • 12. The Median The population or sample median Md is a value such that 50% of all measurements, after having been arranged in numerical order, lie above (or below) it. (The median is the “center.”) The median Md is found as follows: 1. If the number of measurements is odd, the median is the middlemost measurement in the ordered values 2. If the number of measurements is even, the median is the average of the two middlemost measurements in the ordered values 12
  • 13. Example: Sample Median Internist’s Yearly Salaries (x$1000) 127 132 138 141 144 146 152 154 165 171 177 192 241 (Note that the values are in ascending numerical order from left to right) Because n = 13 (odd,) then the median is the middlemost or 7th value of the ordered data, so Md=152 • An annual salary of $180,000 is in the high end, well above the median salary of $152,000 • In fact, $180,000 a very high and competitive salary 13
  • 14. The Mode The mode Mo of a population or sample of measurements is the measurement that occurs most frequently • Modes are the values that are observed “most typically” • Sometimes higher frequencies at two or more values • If there are two modes, the data is bimodal • If more than two modes, the data is multimodal • When data are in classes, the class with the highest frequency is the modal class • The tallest box in the histogram (The Tall Pole) 14
  • 15. Relationships Among Mean, Median and Mode Notice tail to right Notice tail to left 15
  • 16. Central Tendency By Itself Not Enough Knowing the measures of central tendency is not enough Both of the distributions shown below have identical measures of central tendency 16
  • 17. The Normal Curve Symmetrical and bell-shaped curve for a normally distributed population The height of the normal over any point represents the relative proportion of values near that point Example 2.4, The Car Mileages Case 17
  • 18. The Empirical Rule for Normal Populations If a population has mean and standard deviation and is described by a normal curve, then 68.26% of the population measurements lie within one standard deviation of the mean: [ 95.44% of the population measurements lie within two standard deviations of the mean: [ 2 2 99.73% of the population measurements lie within three standard deviations of the mean: [ 3 3 2-18 18
  • 19. z Scores (will be very important in our work with the Normal Distribution, beginning in Week 2 and for the entire course)  For any x in a population or sample, the associated z score is x mean z standarddeviation  The z score is the number of standard deviations that x is from the mean A positive z score is for x above (greater than) the mean A negative z score is for x below (less than) the mean 2-19 19
  • 20. Measures of Variation (Spread) Range Largest minus the smallest measurement Variance The average of the squared deviations of all the population measurements from the population mean Standard Deviation The square root of the variance 20
  • 21. The Range Range = largest measurement - smallest measurement The range measures the interval spanned by all the data Example: Internist’s Salaries (in thousands of dollars) 127 132 138 141 144 146 152 154 165 171 177 192 241 Range = 241 - 127 = 114 ($114,000) 21
  • 22. Variance For a population of size N, the population variance 2 is defined as N 2 xi 2 2 2 2 i 1 x1 x2  xN N N For a sample of size n, the sample variance s2 is defined as n 2 xi x 2 2 2 x1 x x2 x  xn x s2 i 1 n 1 n 1 and is a point estimate for 2 22
  • 23. The Standard Deviation 2 Population Standard Deviation, : 2 Sample Standard Deviation, s: s s 23
  • 24. Example: Population Variance and Standard Deviation Population of profit margins for five big American companies: 8%, 10%, 15%, 12%, 5% 8 10 15 12 5 50 10% 5 5 2 2 2 2 2 2 8 10 10 10 15 10 12 10 5 10 5 2 2 02 52 2 2 52 5 4 0 25 4 25 58 11 .6 5 5 2 11 .6 3.406 % 24
  • 25. Example: Sample Variance and Standard Deviation Example 3.7: Sample variance and standard deviation for first five car mileages from Table 2.4 30.8, 31.7, 30.1, 31.6, 32.1 so x = 31.26 5 2 xi x s2 i 1 5 1 30.8 31.26 2 31.7 31.26 2 30.1 31.26 2 31.6 31.26 2 32.1 31.26 2 4 s2 = 2.572 4 = 0.643 s s2 .643 0.8019 2-25 25
  • 26. Percentiles and Quartiles For a set of measurements arranged in increasing order, the pth percentile is a value such that p percent of the measurements fall at or below the value and (100-p) percent of the measurements fall at or above the value The first quartile Q1 is the 25th percentile The second quartile (or median) Md is the 50th percentile The third quartile Q3 is the 75th percentile The interquartile range IQR is Q3 - Q1 26
  • 27. Example: Quartiles 20 customer satisfaction ratings: 1 3 5 5 7 8 8 8 8 8 8 9 9 9 9 9 10 10 10 10 Md = (8+8)/2 = 8 Q1 = (7+8)/2 = 7.5 Q3 = (9+9)/2 = 9 IQR = Q3 Q1 = 9 7.5 = 1.5 27
  • 28. Population and Sample Proportions Population X1, X2, …, XN Sample x1, x2, …, xn p ˆ p Sample Proportion Population Proportion n xi ˆ p i =1 n ^ p is the point estimate of p 28
  • 29. Example: Sample Proportion Marketing Ethics Case 117 out of 205 marketing researchers disapproved of action taken in a hypothetical scenario X = 117, number of researches who disapprove n = 205, number of researchers surveyed X 117 Sample Proportion: ˆ p 0.57 n 205 29
  • 30. Getting Started with Minitab • Course Home: Minitab • Tutorial • Download • Getting help with your Minitab installation 30
  • 31. Summary of Descriptive Statistics using Minitab (concluded) • Central tendency: mean, median, mode • Dispersion: Range, standard deviation, interquartile range • Stem – and - leaf display • Histogram and frequency distribution 31
  • 32. Essential Questions and Problem Types for the Week 1 Mastery Module • For a given data set, use Minitab to find numbers, pictures, and tables which show the central tendency, including: the mean, median, and mode, and the skewness • For a given data set, use Minitab to find numbers, pictures, and tables which show the variability, or dispersion, including: the range, the standard deviation the interquartile range, and the Empirical Rule 32
  • 33. Closing I will post a link to these charts where I hang out on the internet. I call it the “Statcave.” http://www.facebook.com/statcave YOU DO NOT HAVE TO BE A FACEBOOK PERSON TO SEE THE LINKS. I DO IT BECAUSE IT’S FREE AND FUN. In my spare time, I write a syndicated column (humor, life, feel goods, etc.) that appears in newspapers and magazines in the southeast. If you ever get bored, check it out at: http://www.cranksmytractor.com See you next week! Same Stat Time, Same Stat Channel. 33

Notas do Editor

  1. Go to the course: show the students where to go