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Sahirah Ellis
 Math Lay-2
Mrs. Lay                                   2nd      Hour Data




                                                             GhostBlaster
                                   First Name




                                                                              StopWatch
                Last Name




                                                                                          HandSlap
                                                  HeadSize




                                                                                                         MorF

     1   Barkan             Omer                  54          29            29.03             1      F
     2   James              Dion                  55          17            24.31             0      M
     3   Nadrozny           Katherine             54          -9            30.06             1      F
     4   Matatov            Sarah                 55          13            30.09             1      F
     5   Miller             Allyson               57          17            29.91             1      F
     6   Koester            Sophia                57          19            27.11             1      F
     7   Denzer             Haylie                57          28            29.85             1      F
     8   Ray                Megan                 56         -35            29.84             2      F
     9   Hall               Corey                 55          18            29.99             2      M
    10   Nguyen             Serena                56          24            30.25             2      F
    11   Ellis              Sahirah               58          28            29.82             2      F
    12   Sharma             Abhinav               55          33            29.91             2      M
    13   Thomas             George                55          41            29.59             2      M
    14   Yang               Shirley               54          51            29.93             2      F
    15   Berner             Riley                 57          11            30.44             3      M
    16   Martin             Madeline              55          17            30.22             3      F
    17   Donohue            Drew                  56          11            29.62             4      M
    18   Fisher             Ian                   56          18            29.03             4      M
    19   Neitzel            Alec                  55          28            29.83             4      M
    20   Morris             Elizabeth             56          28            29.94             4      F
    21   Miller             Jackson               56          26            29.94             5      M
    22   McNamara           Jonathan              53          26            30.12             5      M
    23   Lemay              Brian                 54          32            29.89             5      M
    24   Cimarusti          Eric                  55          16            30.05             6      M
    25   Woods              Mary                  51           2            29.94             7      F
    26   Caughey            Matthew               56          17            29.94             7      M
    27   Neitzel            Brady                 55          26            29.79             7      M
Measures Of Center and Range
                Ghost Blaster             Stop Watch              Hand Slap




     Mean                       19.7037                29.57185               3




     Median                          19                   29.91               2




     Mode                            17                  29.94                2




     Range                          86                     6.13               7




     Outliers                       -35                   24.31               7
Box Plot For Ghost Blasters

Max: 51
Min: -35
LowerQ : 16
Upper Q: 28
Median: 19


              -35 -30 -25 -20 -15 -10 -5 0 5 10 15 20 25 30 35 40 45 50 51
Box Plot For Stopwatch
Median : 29.91
Maximum:
30.44
Minimum:
24.31
Upper Q :
29.79
Lower Q :
20.05          24.13   25 25.5 26 26.5 27 27.5 28 28.5 29 29.5 30.44
Box Plot For Hand Slaps
Bar Graph for GhostBlasters
     51 points
     41 points
     33 points
     32 points
     28 points
     26 points
     24 points
     19 points
     18 points
                                                                    Series1
     17 points
     16 points
    13 points 1
      11 points
      2 points
     -9 points
     -35 points
 GhostBlasters

                  0   0.5   1   1.5   2   2.5   3   3.5   4   4.5
Histogram for HandSlaps

6-8 Slaps




3-5 Slaps
                                                    Series1




0-2 Slaps




            0   2   4   6   8   10   12   14   16
Tinkerplot for GhostBlaster

 MALE




        FEMALE
Variability for GhostBlasters
The data clusters between 32 points – 51 points , 18
 points – 24 points , and 16 points - -35 points.



The outliers are 28 points , 26 points, and 17 points
 because a lot of people got those answers.



The range for the box plot is 86 because -35 + 51 = 86
 , this means the data is very spread apart.
Variability for HandSlaps
 On the box plot the range is 8 because 8+0 = 8, this
 means the data is very close together

 The data that cluster son the histogram is 0 – 5




 The outlier is 6-8, this means not a lot children could
 slap Mrs. Lay
Variability for StopWatch
The range for the data is 6.31 because 30.44 – 24.13 =
 6.31, this means the data is chunky ( clustered) or
 around each other.

The interquartile range is 9.74 because 29.79 ( the upper
 Q) – 20.05 ( the lower Q ) = 9.74 , this means that the
 data is somewhat close together.

The outlier is 24.13 because no other number is around
 it.
Typical Conclusions
 The typical sixth grader hits Mrs. Lay between 0 and 5
 times. You can see that the data clusters on the
 histogram. Not a lot of children could hit Mrs. Lay
 between 6-8 because she is hard to hit, so on the
 histogram you can see that it is an outlier.
Final Conclusions
 Males are faster because on the tinker plot the males
 have more people on the faster side which is 0 – 51.
 There are two girls the have negatives and the boys
 don’t have any negative scores

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Sahirah Ellis

  • 2. Mrs. Lay 2nd Hour Data GhostBlaster First Name StopWatch Last Name HandSlap HeadSize MorF 1 Barkan Omer 54 29 29.03 1 F 2 James Dion 55 17 24.31 0 M 3 Nadrozny Katherine 54 -9 30.06 1 F 4 Matatov Sarah 55 13 30.09 1 F 5 Miller Allyson 57 17 29.91 1 F 6 Koester Sophia 57 19 27.11 1 F 7 Denzer Haylie 57 28 29.85 1 F 8 Ray Megan 56 -35 29.84 2 F 9 Hall Corey 55 18 29.99 2 M 10 Nguyen Serena 56 24 30.25 2 F 11 Ellis Sahirah 58 28 29.82 2 F 12 Sharma Abhinav 55 33 29.91 2 M 13 Thomas George 55 41 29.59 2 M 14 Yang Shirley 54 51 29.93 2 F 15 Berner Riley 57 11 30.44 3 M 16 Martin Madeline 55 17 30.22 3 F 17 Donohue Drew 56 11 29.62 4 M 18 Fisher Ian 56 18 29.03 4 M 19 Neitzel Alec 55 28 29.83 4 M 20 Morris Elizabeth 56 28 29.94 4 F 21 Miller Jackson 56 26 29.94 5 M 22 McNamara Jonathan 53 26 30.12 5 M 23 Lemay Brian 54 32 29.89 5 M 24 Cimarusti Eric 55 16 30.05 6 M 25 Woods Mary 51 2 29.94 7 F 26 Caughey Matthew 56 17 29.94 7 M 27 Neitzel Brady 55 26 29.79 7 M
  • 3. Measures Of Center and Range Ghost Blaster Stop Watch Hand Slap Mean 19.7037 29.57185 3 Median 19 29.91 2 Mode 17 29.94 2 Range 86 6.13 7 Outliers -35 24.31 7
  • 4. Box Plot For Ghost Blasters Max: 51 Min: -35 LowerQ : 16 Upper Q: 28 Median: 19 -35 -30 -25 -20 -15 -10 -5 0 5 10 15 20 25 30 35 40 45 50 51
  • 5. Box Plot For Stopwatch Median : 29.91 Maximum: 30.44 Minimum: 24.31 Upper Q : 29.79 Lower Q : 20.05 24.13 25 25.5 26 26.5 27 27.5 28 28.5 29 29.5 30.44
  • 6. Box Plot For Hand Slaps
  • 7. Bar Graph for GhostBlasters 51 points 41 points 33 points 32 points 28 points 26 points 24 points 19 points 18 points Series1 17 points 16 points 13 points 1 11 points 2 points -9 points -35 points GhostBlasters 0 0.5 1 1.5 2 2.5 3 3.5 4 4.5
  • 8. Histogram for HandSlaps 6-8 Slaps 3-5 Slaps Series1 0-2 Slaps 0 2 4 6 8 10 12 14 16
  • 10. Variability for GhostBlasters The data clusters between 32 points – 51 points , 18 points – 24 points , and 16 points - -35 points. The outliers are 28 points , 26 points, and 17 points because a lot of people got those answers. The range for the box plot is 86 because -35 + 51 = 86 , this means the data is very spread apart.
  • 11. Variability for HandSlaps  On the box plot the range is 8 because 8+0 = 8, this means the data is very close together  The data that cluster son the histogram is 0 – 5  The outlier is 6-8, this means not a lot children could slap Mrs. Lay
  • 12. Variability for StopWatch The range for the data is 6.31 because 30.44 – 24.13 = 6.31, this means the data is chunky ( clustered) or around each other. The interquartile range is 9.74 because 29.79 ( the upper Q) – 20.05 ( the lower Q ) = 9.74 , this means that the data is somewhat close together. The outlier is 24.13 because no other number is around it.
  • 13. Typical Conclusions  The typical sixth grader hits Mrs. Lay between 0 and 5 times. You can see that the data clusters on the histogram. Not a lot of children could hit Mrs. Lay between 6-8 because she is hard to hit, so on the histogram you can see that it is an outlier.
  • 14. Final Conclusions  Males are faster because on the tinker plot the males have more people on the faster side which is 0 – 51. There are two girls the have negatives and the boys don’t have any negative scores