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Chapter 3 Numerically Summarizing Data

Chapter 3 Numerically Summarizing Data. 3.3 Measures of Central Tendency and Dispersion from Grouped Data. EXAMPLE Approximating the Mean from a Frequency Distribution.

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Chapter 3 Numerically Summarizing Data

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  1. Chapter 3Numerically Summarizing Data 3.3 Measures of Central Tendency and Dispersion from Grouped Data

  2. EXAMPLE Approximating the Mean from a Frequency Distribution The following frequency distribution represents the time between eruptions (in seconds) for a random sample of 45 eruptions at the Old Faithful Geyser in California. Approximate the mean time between eruptions.

  3. EXAMPLE Computed a Weighted Mean Bob goes the “Buy the Weigh” Nut store and creates his own bridge mix. He combines 1 pound of raisins, 2 pounds of chocolate covered peanuts, and 1.5 pounds of cashews. The raisins cost $1.25 per pound, the chocolate covered peanuts cost $3.25 per pound, and the cashews cost $5.40 per pound. What is the cost per pound of this mix.

  4. EXAMPLE Approximating the Mean from a Frequency Distribution The following frequency distribution represents the time between eruptions (in seconds) for a random sample of 45 eruptions at the Old Faithful Geyser in California. Approximate the standard deviation time between eruptions.

  5. Chapter 3Numerically Summarizing Data 3.4 Measures of Location

  6. The z-score represents the number of standard deviations that a data value is from the mean. It is obtained by subtracting the mean from the data value and dividing this result by the standard deviation. The z-score is unitless with a mean of 0 and a standard deviation of 1.

  7. Population Z - score Sample Z - score

  8. EXAMPLE Using Z-Scores The mean height of males 20 years or older is 69.1 inches with a standard deviation of 2.8 inches. The mean height of females 20 years or older is 63.7 inches with a standard deviation of 2.7 inches. Data based on information obtained from National Health and Examination Survey. Who is relatively taller: Shaquille O’Neal whose height is 85 inches or Lisa Leslie whose height is 77 inches.

  9. Answer: • Shaquille O’Neal Z-Score: (85-69.1)/2.8 =5.67857143 • Lisa Leslie (77-63.7)/2.7 =4.92592593 Because O’Neal Z-Score > Lisa ‘s Z-Score, We say O’Neal is in a higher position than Lisa in their Goups.

  10. The median divides the lower 50% of a set of data from the upper 50% of a set of data. In general, the kth percentile, denoted Pk , of a set of data divides the lower k% of a data set from the upper (100 – k) % of a data set.

  11. Computing the kth Percentile, Pk Step 1:Arrange the data in ascending order.

  12. Computing the kth Percentile, Pk Step 1:Arrange the data in ascending order. Step 2: Compute an index i using the following formula: where k is the percentile of the data value and n is the number of individuals in the data set.

  13. Computing the kth Percentile, Pk Step 1:Arrange the data in ascending order. Step 2: Compute an index i using the following formula: where k is the percentile of the data value and n is the number of individuals in the data set. Step 3: (a) If i is not an integer, round up to the next highest integer. Locate the ith value of the data set written in ascending order.This number represents the kth percentile. (b) If i is an integer, the kth percentile is the arithmetic mean of the ith and (i + 1)st data value.

  14. EXAMPLE Finding a Percentile For the employment ratio data on the next slide, find the (a) 60th percentile (b) 33rd percentile

  15. Answer: • A) 60th Percentile i) the index: I = (60/100)*51 =30.6 30.6 in not an integer, we round it up to 31. so the data value is 66.1 • 33rd i) the index: I =(33/100)*51=16.83 Round it up to 17. So the data value at 17th is 63.6.

  16. Finding the Percentile that Corresponds to a Data Value Step 1: Arrange the data in ascending order.

  17. Finding the Percentile that Corresponds to a Data Value Step 1: Arrange the data in ascending order. Step 2: Use the following formula to determine the percentile of the score, x: Percentile of x = Round this number to the nearest integer.

  18. EXAMPLE Finding the Percentile Rank of a Data Value Find the percentile rank of the employment ratio of Michigan.

  19. The most common percentiles are quartiles. Quartiles divide data sets into fourths or four equal parts. • The 1st quartile, denoted Q1, divides the bottom 25% the data from the top 75%. Therefore, the 1st quartile is equivalent to the 25th percentile.

  20. The most common percentiles are quartiles. Quartiles divide data sets into fourths or four equal parts. • The 1st quartile, denoted Q1, divides the bottom 25% the data from the top 75%. Therefore, the 1st quartile is equivalent to the 25th percentile. • The 2nd quartile divides the bottom 50% of the data from the top 50% of the data, so that the 2nd quartile is equivalent to the 50th percentile, which is equivalent to the median.

  21. The most common percentiles are quartiles. Quartiles divide data sets into fourths or four equal parts. • The 1st quartile, denoted Q1, divides the bottom 25% the data from the top 75%. Therefore, the 1st quartile is equivalent to the 25th percentile. • The 2nd quartile divides the bottom 50% of the data from the top 50% of the data, so that the 2nd quartile is equivalent to the 50th percentile, which is equivalent to the median. • The 3rd quartile divides the bottom 75% of the data from the top 25% of the data, so that the 3rd quartile is equivalent to the 75th percentile.

  22. EXAMPLE Finding the Quartiles Find the quartiles corresponding to the employment ratio data.

  23. Checking for Outliers Using Quartiles Step 1: Determine the first and third quartiles of the data.

  24. Checking for Outliers Using Quartiles Step 1: Determine the first and third quartiles of the data. Step 2:Compute the interquartile range. The interquartile range or IQR is the difference between the third and first quartile. That is, IQR = Q3 - Q1

  25. Checking for Outliers Using Quartiles Step 1: Determine the first and third quartiles of the data. Step 2:Compute the interquartile range. The interquartile range or IQR is the difference between the third and first quartile. That is, IQR = Q3 - Q1 Step 3:Compute the fences that serve as cut-off points for outliers. Lower Fence = Q1 - 1.5(IQR) Upper Fence = Q3 + 1.5(IQR)

  26. Checking for Outliers Using Quartiles Step 1: Determine the first and third quartiles of the data. Step 2:Compute the interquartile range. The interquartile range or IQR is the difference between the third and first quartile. That is, IQR = Q3 - Q1 Step 3:Compute the fences that serve as cut-off points for outliers. Lower Fence = Q1 - 1.5(IQR) Upper Fence = Q3 + 1.5(IQR) Step 4:If a data value is less than the lower fence or greater than the upper fence, then it is considered an outlier.

  27. EXAMPLE Check the employment ratio data for outliers. Q1:13 th—62.9 ; Q3: 38th—67.2 Q3-Q1=4.3 So (62.9-1.5*4.3, 67.2+1.5*4.3)=(56.45,73.65) The OUTLIER is 52.7

  28. West Virginia

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