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Bims Descriptive Statistics

In: Business and Management

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Using the BIMS Part I data, Team C presents various descriptive statistics in the forms of frequency distribution table, measures of mean, median, mode, standard deviation, and graphical display of data. The first table is a frequency distribution table of one quantitative question in the BIMS data. Team C finds that the majority of the 78 respondents have between 0 to 20 months service with BIMS. The second highest group has between 40 to 60 months service with BIMS. The lowest frequency of one appears in five of the 17 classes. The classes with the lowest frequency of one are 120 < 140, 140 < 160, 240 < 260, 260 < 280, and 320 < 340. After summarizing the months of service per respondents, Team C focuses on the gender, division of employment, and manager/supervisors role questions. Team C completes the statistical summary of the BIMS data using the first 10 questions that represent the ordinal-level data. Frequency Distribution - Quantitative B. How long have you worked for BIMS? cumulative lower upper midpoint width frequency percent frequency percent 0 < 20 10 20 34 43.6 34 43.6 20 < 40 30 20 8 10.3 42 53.8 40 < 60 50 20 12 15.4 54 69.2 60 < 80 70 20 7 9.0 61 78.2 80 < 100 90 20 7 9.0 68 87.2 100 < 120 110 20 3 3.8 71 91.0 120 < 140 130 20 1 1.3 72 92.3 140 < 160 150 20 1 1.3 73 93.6 160 < 180 170 20 0 0.0 73 93.6 180 < 200 190 20 0 0.0 73 93.6 200 < 220 210 20 2 2.6 75 96.2 220 < 240 230 20 0 0.0 75 96.2 240 < 260 250 20 1 1.3 76 97.4 260 < 280 270 20 1 1.3 77 98.7 280 < 300 290 20 0 0.0 77 98.7 300 < 320 310 20 0 0.0 77 98.7 320 < 340 330 20 1…...

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