1 / 32

Chapter 3:

Chapter 3:. Data Description. Learning Target. IWBAT summarize data, using measures of central tendency, such as the mean, median, mode, and midrange. Vocabulary. Statistic A characteristic or measure obtained by using the data values from a sample. Parameter

maryam-bean
Download Presentation

Chapter 3:

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Chapter 3: Data Description

  2. Learning Target • IWBAT summarize data, using measures of central tendency, such as the mean, median, mode, and midrange.

  3. Vocabulary • Statistic • A characteristic or measure obtained by using the data values from a sample • Parameter • A characteristic or measure obtained by using all the data values from a specific population

  4. The Mean • Mean is also known as an arithmetic average. It is found by adding the values of the data and dividing by the total number of values.

  5. Sample Mean and Population Mean • Sample Mean • Population Mean

  6. Rounding Rules • General Rule: • Wait until the end to round. All calculations in between should not be rounded. • Rule for Mean: • The mean should be rounded to one more decimal place than the raw data.

  7. Grouped Frequency Means • Using the frequency distribution, find the mean. Step 1: Create table Step 2: Find the midpoints of each class. Step 3: For each class, multiply the frequency by the midpoint. Step 4: Find the sum of column D. Step 5: divide the sum by n to get the mean.

  8. The Median • The midpoint of the data • Symbol for median is MD • To find median • Step 1: arrange data in order • Step2 : select the middle point • If there are 2 middle numbers, add the numbers and divide by 2.

  9. The Mode • The number that occurs most often • Types of modes • No mode • Unimodal – one mode • Bimodal – 2 modes • Multimodal – more than 2 modes • The mode for grouped data is the modal class. The modal class is the class with the largest frequency.

  10. The Midrange • The midrange is the sum of the largest value and the smallest value, divided by 2. • The symbol for midrange is MR.

  11. The Weighted Mean • To find the weighted mean, multiply each value by its corresponding weight and divide the sum of the products by the sum of the weights.

  12. Example The grade point average is 2.7.

  13. Handouts

  14. Section 3-2 Measures of Variation

  15. Learning Target • IWBAT describe data, using measures of variation, such as the range, variance, and standard deviation.

  16. Range • The range is the highest number minus the lowest number. It is represented by R. • One extremely high or one extremely low number can affect the range.

  17. Population Variance and Standard Deviation • The variance is the average of the squares of the distance each value is from the mean. • Symbol is 2 • Formula is • 2 = (-)2/ •  is lowercase sigma •  is the individual value •  is the mean •  is the number of data values • The standard deviation is the square root of the variance. • Symbol is . • Formula is •  = 2 = (-)2/

  18. Steps to Find 2 and  • Step 1: Find the mean for the data. • Step 2: Subtract the mean from each data value. • Step 3: Square each result. • Step 4: Find the sum of the squares. • Step 5: divide the sum by N to get the variance. • Step 6: Take the square root of the variance to find the standard deviation.

  19. Example: Find the variance and standard deviation of the following data: 10, 60, 50, 30, 40, 20. Step 1: Mean is (10+60+50+30+40+20)/6 210/6 = 35 Step 2: Subtract mean from each data value 10 - 35 = -25 60 – 35 = 25 50 – 35 = 15 30 – 35 = -5 40 – 35 = 5 20 – 35 = -15 Step 3: Square each result. (-25)2 = 625 (25)2 = 625 (15)2 = 225 (-5)2 =25 (5)2 = 25 (-15)2 =225

  20. Example (cont’) Step 4: Find the sum of the squares. 625+625+225+225+25+25 = 1750 Step 5: Divide the sum by N to get the variance. Variance = 1750/6 = 291.7 Step 6: Take the square root to get the standard deviation. 291.7 = 17.1 Variance and Standard deviation will never be negative.

  21. Practice Problem • Find the Variance and Standard Deviation of the following data. 35, 45, 30, 35, 40, 25

  22. Answer • Variance is 250/6 = 41.7 • Standard deviation = 6.5

  23. Why Do We Use Variance and Standard Deviation • When the means are equal, we need to do more tests to analyze the data. Therefore, we can determine the variability of the data by finding the variance and the standard deviation. Variability is also known as the spread of the data. The larger the variance and the standard deviation the more variable the data is or spread out the data is. • For example, in the manufacture of fittings, such as nuts and bolts, the variation in diameter must be small, or parts will not fit together. • The standard deviation also tells you how far the data is away from the mean.

  24. Variance and Standard Deviation of Grouped Data • Process is similar to finding the mean for grouped data. • Step 1: Make a table • Step 2: Multiply the midpoint by the frequency. • Step 3: Multiply the frequency by the square of the midpoint. • Step 4: Find the sum of the frequency, step 2 (m), and step 3 (m2). • Step 5: Find the variance by using this formula s2 = n( m2)-( m)2 n(n-1) • Step 6: Take the square root of step 5 to find the standard deviation.

  25. Example s2 = n( m2)-( m)2 s = 68.7 = 8.3 n(n-1) s2 = 20(13310) – (490)2 20(20-1) s2 = 266200 – 240100 20(19) s2 = 26100 380 s2 = 68.7

  26. Practice Problem

  27. Comparing Standard Deviations when units are different • If the units of two sets of data are different we can use the coefficient of variation to compare the standard deviations. • The coefficient of variation is the standard deviation divided by the mean and is expressed as a percent. • Symbol for the coefficient of variation is CVar. • Formula is CVar = s/X times 100%

  28. Example • The mean of the number of sales of cars over a 3-month period is 87, and the standard deviation is 5. The mean of the commissions is $5225, and the standard deviation is $773. Compare the variations of the two. • Sales = 5/87 times 100% = 5.7% • Commissions = 773/5225 times 100% = 14.8% • The commissions are more variable than the sales.

  29. Practice Problem • The mean for the number of pages of a sample of women’s fitness magazines is 132, with a variance of 23; the mean for the number of advertisements of a sample of women’s fitness magazines is 182, with a variance of 62. Compare the variations.

  30. Answer • The coefficients of variation are • Pages = 23/132 times 100% = 3.6% • Advertisements = 62/182 times 100% = 4.3% • The number of advertisements is more variable than the number of pages.

  31. Worksheets • Pg. 137 • 1, 2, 16, 18 – 25, 27 – 31

  32. Chebyshev’s Theorem • The proportion or percent of values from a data set that will fall within k standard deviations of the mean will be at least 1-1/k2, where k is a number greater than 1. (k is also the number of standard deviations)

More Related