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Chapter 9 Statistics Frequency Distributions; Measures of Central Tendency Frequency Distributions Three types of frequency distributions: Categorical – primarily for nominal, ordinal level data (FYI) Grouped – range of data is large Ungrouped – range of data is small, single data values for each class (FYI) Frequency Distributions; Measures of Central Tendency Grouped Frequency Distributions Step 1: Order data from smallest to largest Step 2: Determine the number of classes (e.g. class intervals) using Sturges’ Rule k=1+3.322(log10n) where n is the number of observations (data values). *Always round up Class intervals are contiguous, nonoverlapping intervals selected in such a way that they are mutually exclusive and exhaustive. That is, each and every value in the set of data can be placed in one, and only one, of the intervals. Frequency Distributions; Measures of Central Tendency Grouped Frequency Distributions Step 3: Determine width of class intervals Width (W) = Range (R) k where Range= largest value-smallest value k represents Sturges’ Rule Frequency Distributions; Measures of Central Tendency Grouped Frequency Distributions Step 4: Assign observations to class intervals The count in each class interval represents the frequency for that interval. The smallest observation serves as the first lower class limit (LCL). Add the ‘width minus one’ to the LCL to get UCL (upper class limit) NOTE: Technically, class limits (i.e., 0-5, 6-11, 12-17 and so on) are not adjacent. However, class boundaries account for the space between the class limit intervals (i.e., 0.5 – 5.5, 5.5-11.5, 11.5-17.5 and so on). Boundaries are written for convenience but understood to mean all values up to but not including the upper boundary. Frequency Distributions; Measures of Central Tendency Grouped Frequency Distributions Step 5: Calculate cumulative & relative frequencies Cumulative Frequency-Add number of observations from the first interval through the preceding interval, inclusive. Relative Frequency – Divide number of observations in each class interval by the total number of observations Cumulative Relative Frequency-Same calculation as cumulative frequency, but using the relative frequencies A Frequency Distribution Table Class Int. Freq. Cum. Freq. Rel. Freq. Cum. Rel. Freq. LCL - UCL Frequency Distributions; Measures of Central Tendency Measures of Central Tendency – the value(s) the data tends to center around Arithmetic Mode Median mean (average) Frequency Distributions; Measures of Central Tendency Measures of Central Tendency Arithmetic mean (sample mean or sample average) --“x-bar” Ungrouped data (individual data such as 5, 6, 10, 14, etc. _ x = xi n _ x = x1 + x2 + x3 +… + xn n where xi is each data value (observation) in the data set. where n is the number of observations in the data set Frequency Distributions; Measures of Central Tendency Calculate the sample mean for ungrouped data: Step 1: add all values in a data set Step 2: divide the total by the number of values summed. Frequency Distributions; Measures of Central Tendency Example 7.0 6.2 6.5 7.7 7.2 8.0 6.4 6.2 7.2 5.4 *This is ungrouped data 5.4 6.4 n = 12 _ x= 7.0+6.2+7.7+8.0+6.4+6.2+7.2+5.4+6.4+6.5+7.2+5.4 12 = 79.6 12 = 6.63 Frequency Distributions; Measures of Central Tendency Grouped data (assumes each value (observation) falling within a given class interval is equal to the value of the midpoint of that interval _ x = fi x i n where xi represents each class interval midpoint (class mark)* *an easy way to determine the class mark is to simply add the upper class limit (boundary) to the lower class limit (boundary) then divide by 2. Frequency Distributions; Measures of Central Tendency Calculate the sample mean for grouped data: Step 1: multiply each class mark by its corresponding frequency Step 2: add the resulting products Step 3: divide the total by the number of observations Frequency Distributions; Measures of Central Tendency Example Class Limits 90 – 98 99-107 108-116 117-125 126-134 Frequency Class Mark 6 (see note below) 94 22 103 43 112 28 121 9 130 108 xI fI 564 2266 4816 3388 1170 12204 _ x = 12204 = 113 108 Note: Where did the number 6 come from? There are 6 data values (observations) in the data set that fall between the range 90-98 (inclusive) Frequency Distributions; Measures of Central Tendency Measures of Central Tendency Mode Ungrouped data – value that occurs most frequently Step 1: identify the data value that occurs most frequently Bi-modal -two values occurring at the same frequency No mode – all values different (not same as mode=0) Grouped data Step 1: specify the modal class (i.e., the class interval containing the largest number of observations Frequency Distributions; Measures of Central Tendency For ungrouped data <mode> 7.0 6.4 6.2 6.5 7.7 7.2 8.0 5.4 6.4 6.2 7.2 5.4 There are four numbers that appear two times each: 5.4 6.2 6.4 7.2 Therefore there are four modes. The data set is quad-modal Frequency Distributions; Measures of Central Tendency For grouped data The <modal class> modal class: 108-116 or 3rd class (The class with the largest number of data values) Frequency Distributions; Measures of Central Tendency Measures of Central Tendency – The value above which half the values in a data set lie and below which the other half lie. (The middle value) Median Ungrouped Data Step 1: arrange the values in order of magnitude (smallest to largest) Step 2: locate the middle value Frequency Distributions; Measures of Central Tendency For ungrouped data 5.4 <median> 5.4 6.2 6.2 6.4 6.4 6.5 7.0 7.2 7.2 7.7 Even 8.0 number of values therefore we must get an average of the middle two values 6.4 + 6.5 2 = 6.45 Measures of Variation (Dispersion) Range (R) (for ungrouped data only) Ungrouped data Step 1: Take the difference between the largest and smallest values in a data set. For example, a data set such as 5, 6, 10, 14 has a range of 9 because 14 (the largest value) minus 5 (the smallest value) is 9. Measures of Variation (Dispersion) Deviations from the Mean Differences found by subtracting the mean from each number in a sample Given 3, 5, 2, 6 The mean ( x ) is 4 The deviations from the mean would be -1, 1, -2, 2 Measures of Variation (Dispersion) Variance (s2) - an average of the squares of the deviations of the individual values from their mean. Ungrouped data s2 = (xi – x )2 n-1 Measures of Variation (Dispersion) Standard deviation (s) Step 1: Calculate the sample standard deviation for grouped or ungrouped data by: taking the square root of the variance Measures of Variation (Dispersion) Example 8 6 2 1 _ x = 4.2 n = 15 3 3 0 7 0 5 10 0 *This is ungrouped data 9 3 6 (a) Range (R) = 10 – 0 = 10 (b) variance (s2) = (8-4.2)2 + (6-4.2)2 + (3-4.2)2 + (0-4.2)2 + (0-4.2)2 + (5-4.2)2 + (9-4.2)2 + (2-4.2)2 + (1-4.2)2 + (3-4.2)2 + (7-4.2)2 + (10-4.2)2 + (0-4.2)2 +(3-4.2)2 + (6-4.2)2 _________ 15-1 = 158.40__ 14 = 11.31 (c) standard deviation (s) = the square root of 11.31 = 3.36 Measures of Variation (Dispersion) Grouped data s2 = n ( xi2 fi) - (xi fi)2 n(n-1) where xi represents each class boundary (or limit) midpoint (class mark)* where fi represents each class frequency *an easy way to determine the class mark is to simply add the upper class limit (boundary) to the lower class limit (boundary) then divide by 2. Measures of Variation (Dispersion) Calculate the sample variance for grouped data: Step 1: multiply each squared class mark by its corresponding frequency Step 2: add the resulting products Step 3: multiply the sum by n [A] Step 4: multiply each class mark by its corresponding frequency Step 5: add the resulting products Step 6 :square the sum [B] Step 7: perform subtraction [C] = [A] – [B] Step 8: divide [C] by n(n-1) Measures of Variation (Dispersion) Example Class limits freq(fi) 90 – 98 99-107 108-116 117-125 126-134 6 22 43 28 9 108 xi 94 103 112 121 130 xifi 564 (946) 2266 4816 3388 1170 12204 xi2fi 53,016 [(942)6] 233,398 539,392 409,948 152,100 1,387,854 Measures of Variation (Dispersion) Refer to the formula for variance of grouped data below and see if you can fill in the formula using values from the table on the previous slide. s2 = n ( xi2 fi) - (xi fi)2 n(n-1) Measures of Variation (Dispersion) s2 = 108(1,387,854) – (12,204)2 108(107) = 149,888,232.0 - 148,937,616.0 11,556 = 950,616 11,556 = 82.26 Therefore s = 9.07 The Normal Distribution The Normal Distribution f(x) Also x known as the “bell-shaped” curve Some statisticians say it is the most important distribution in statistics Most popular distribution in statistics The Normal Distribution The normal density function is given by (x - ) f(x) = 1 where ∏≈ 3.142 and ex ≈ 2.718 e 2 The Normal Distribution Properties of the Normal Distribution - symmetrical about mean; mean = median = mode area under the curve = 1 each different and specifies different normal distribution, thus the normal distribution is really a family of distributions - a very important member of the family is the standard normal distribution The Normal Distribution The Standard Normal Distribution has mean (μ) = 0 has standard deviation (σ) = 1 the normal density function reduces to f(z) = 1 e z 2 The Normal Distribution The probability that z lies between any two points on the z-axis is determined by the area bounded by perpendiculars erected at each of the points, the curve, and the horizontal axis. f(z) z a b P(a <z< b) The Normal Distribution Generally we find the area under the curve for a continuous distribution via calculus by integrating the function between a & b. b a 1 e z 2 dz The Normal Distribution However, we don't have to integrate because we have a table that has calculated this area See TABLE 1 of Appendix A-2 The Normal Distribution Exercises 6-3 #7 p. 282 Find the area under the normal distribution curve between z = 0 and z = 0.56 So, we want P (0 < z < 0.56) From the standard normal table we find that P (0 < z f(z) < 0.56) = 0.2123 z a b where a = 0 and b = 0.56 The Normal Distribution Exercises 6-3 #16 p. 283 Find the area under the normal distribution curve between z = -0.87 and z = -0.21 So we want P(-0.87 < z < -0.21) a b0 where a = -0.87 and b =-0.21 The Normal Distribution Exercises 6-3 #16 p. 283 con’t The table gives a probability of 0.3078 at z = 0.87 (note area same for negative or positive z since distribution is symmetrical). This area covers values of z from 0 out to .87. Since we don’t want that entire area we subtract the area from 0 out to -.21. That is , we subtract .0832 which is the area under the curve at z = 0.21 So 0.3078 – 0.0832 = 0.2246 The Normal Distribution Exercises 6-3 #25 p. 283 Find the area under the normal distribution curve to the right of z = 1.92 and to the left of z = -0.44 So we want P(z >1.92) P(z < -0.44) = 0.3574 a0 b where a = -0.44 and b = 1.92 The Normal Distribution Exercises 6-3 #25 p. 283 Con’t Since the area at z = .44 is 0.1700 which is the area under the curve from 0 out to 0.44, the remaining area of interest has to be 0.5 – 0.1700 = 0.3300. AND Since the area at z = 1.92 is .4726 which is the area under the curve from 0 out to 1.92, the remaining area of interest has to be 0.5 – 0.4726 = 0.0274. So the combined areas of interest are 0.3300 + 0.0274 = 0.3574 The Normal Distribution Exercises 6-3 #45 z=? Given that the shaded area is 0.8962, what would be the value of z? z has to be equal to -1.26. Since the area from 0 out to z is equal to 0.3962 (0.8962 - 0.5000) Recall that one-half of the area under the curve is .5. If we look in the body of the standard normal table for an area of 0.3962 we find that value at the intersection of the 13th row and 7th column which corresponds to a z value of 1.26. Since z is located to the left of 0 it has to be negative, hence – 1.26. 0.8962 z 0 The Normal Distribution Section 6-4 Applications of the Normal Distribution To solve problems for a normally distributed variable with a 0 or 1 we MUST transform the variable to a standard normal variable, that is P(x1 < X < x2) becomes P(z1 < Z < z2) which allows us to use the standard normal table. Using z = value – mean = x - standard dev. The Normal Distribution Example A survey found that people keep their television sets an average of 4.8 years. The standard deviation is 0.89 year. If a person decides to buy a new TV set, find the probability that he or she has owned the set for the following amount of time. Assume the variable is normally distributed. Less than 2.5 years Between 3 and 4 years More than 4.2 years = 4.8 = 0.89 -2.58 0 (a) P(x < 2.5) becomes P(z<-2.58) because z = (2.5 – 4.8)/ 0.89 = -2.58 The area under the curve at Z=2.58 is 0.4951 therefore the P(z<-2.58) = 0.5 – 0.4951 = 0.0049 The Normal Distribution (b) P(3 < X < 4) becomes P(-2.02 < z < -0.9) because z = (3-4.8)/ .89 = -2.02 and z=(4-4.8)/.89 = -0.90 from the standard normal table at a z of 2.02 we get .4783 and at a z of .9 we get .3159 so the P(-2.02 < z < -0.9) = .4783 - .3159 = .1624 -2.02 -.9 0 The Normal Distribution (c) P (x > 4.2) becomes P(z > -0.67) because z = (4.2-4.8)/.89 = -0.67 from the standard normal table at z of .67 we get .2486 so the P(z > 0.67) = 0.2486 + 0.5 = 0.7486 -.67 0 The Normal Distribution Review Exercises #9 Area (%age) = .5 = 100 = 15 We can find the X values that correspond to the z values by using the same transformation equation. -0.67 = (x – 100)/15 and 0.67 = (x -100)/15 15(-.67) = x – 100 15(.67) = x - 100 x = 89.95 x = 110.05 therefore the highest and lowest scores are in the range (89.95 < x < 110.05) -.67 0 .67