Survey
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
S1: Chapter 4 Representation of Data Dr J Frost ([email protected]) Last modified: 25th September 2014 Stem and Leaf recap Put the following measurements into a stem and leaf diagram: 4.7 3.6 3.8 4.7 4.1 2.2 3.6 4.0 4.4 5.0 3.7 4.6 4.8 3.7 3.2 2.5 3.6 4.5 4.7 5.2 4.7 4.2 3.8 5.1 1.4 2.1 3.5 4.2 2.4 5.1 1 2 3 4 5 4 1 2 0 0 2 5 1 1 4 6 2 1 5 6 6 7 7 8 8 ? 2 4 5 6 7 7 7 7 8 2 (1) (4) (9) (12) (4) Key: 2 | 1 means 2.1 Now find: ππππ = 4.7 ? πΏππ€ππ ππ’πππ‘πππ = 3.6? πππππ ππ’πππ‘πππ = 4.7 ? ππππππ = 4.05? Back-to-Back Stem and Leaf recap 55 92 66 90 Girls 80 84 91 98 40 60 72 96 85 76 54 58 78 80 79 80 64 88 92 Boys 80 60 91 65 67 59 75 46 72 71 74 57 64 60 50 68 The data above shows the pulse rate of boys and girls in a school. Comment on the results. The back-to-back stem and leaf diagram shows that ? tends to be boyβs pulse rate lower than girlsβ. Girls 8 6 9 8 8 5 4 0 8 6 2 2 5 4 6 0 1 0 4 0 2 0 0 Boys 4 5 6 7? 8 9 6 0 7 9 0 0 4 5 7 8 1 2 4 5 0 1 Key: 0|4|6 Means 40 for girls and 46 for boys. Box Plot recap Box Plots allow us to visually represent the distribution of the data. Minimum Lower Quartile Median Upper Quartile Maximum 3 15 22 Sketch 17 Sketch Sketch 27 Sketch Sketch range IQR 0 5 How is the IQR represented in this diagram? 10 Sketch 15 20 25 30 How is the range Sketch represented in this diagram? Box Plots recap Sketch a box plot to represent the given weights of cats: 5lb, 6lb, 7.5lb, 8lb, 8lb, 9lb, 12lb, 14lb, 20lb Minimum 5 ? Maximum Median ? 20 0 ? 8 4 Lower Quartile Upper Quartile 8 7.5 12 Sketch ? 16 12 20 ? 24 Outliers An outlier is: 0 an extreme ? value. 5 10 Outliers beyond this point 15 20 25 30 More specifically, itβs generally when weβre 1.5 IQRs beyond the lower and upper quartiles. (But you will be told in the exam if the rule differs from this) Outliers We can display outliers as crosses on a box plot. But if we have one, how do we display the marks for the minimum/maximum? 0 5 10 15 20 25 30 Maximum point is not an outlier, so remains unchanged. 0 5 10 15 20 25 30 But we have points that are outliers here. This mark becomes the βoutlier boundaryβ, rather than the minimum. Examples Smallest values Largest values Lower Quartile Median Upper Quartile 0, 3 8 14 21, 27 10 ? 0 5 10 15 20 25 30 Smallest values Largest values Lower Quartile Median Upper Quartile 3, 7 12 16 20, 25, 26 13 ? 0 5 10 15 20 25 30 Exercises Pages 58 Exercise 4B Q2 Page 59 Exercise 4C Q1, 2 Comparing Box Plots Box Plot comparing house prices of Croydon and Kingston-upon-Thames. Croydon Kingston £100k £150k £200k £250k £300k £350k £400k £450k βCompare the prices of houses in Croydon with those in Kingstonβ. (2 marks) For 1 mark, one of: β’In interquartile range of house prices in Kingston is greater than Croydon. β’The range of house prices in Kingston is greater than Croydon. i.e. Something spread related. ? For 1 mark: β’The median house price in Kingston was greater than that in Croydon. β’i.e. Compare some measure of location (could be minimum, lower quartile, etc.) ? Bar Charts vs Histograms Histograms Bar Charts β’ For continuous ? data. β’ Data divided into (potentially uneven) intervals. β’ [GCSE definition] Frequency given by area ? of bars.* β’ No gaps between bars. Frequency Frequency Density β’ For discrete ? data. β’ Frequency given by height ? of bars. 6 7 8 Shoe Size 9 Use this as a reason whenever youβre asked to justify use of a histogram. 1.0m 1.2m 1.4m 1.6m 1.8m Height * Not actually true. Weβll correct this in a sec. Bar Charts vs Histograms Weight (w kg) Frequency Frequency Density 0 < w β€ 10 40 4 10 < w β€ 15 6 1.2 15 < w β€ 35 52 35 < w β€ 45 10 Frequency Density 5 Frequency = 15? ? ? ? ? Freq 2.6 F.D. 1 Frequency = 25? Frequency = 30 ? 2 1 10 20 Width Frequency = 40? 4 3 Still using the βincorrectβ GCSE formula: 30 Height (m) 40 50 Area = frequency? The area of each bar in fact isnβt necessarily equal to the frequency. Actually: πππππππππ β π¨πππ ππ π©ππ i.e. πΉππππ’ππππ¦ = π × π΄πππ ππ πππ Similarly: πππππππππ πππππππππ π ππππππ β πͺππππ πΎππ ππ However, we often let π = 1, so that that the β becomes an =, as we were allowed to assume at GCSE. The key to almost every histogram questionβ¦ β¦This diagram! Area ×π Frequency For a given histogram, thereβs some scaling to get from an area (whether the total area of the area of a particular bar) to the corresponding frequency. Once youβve worked out this scaling, any subsequent areas you calculate can be converted to frequencies. Area = frequency? There were 60 runners in a 100m race. The following histogram represents their times. Determine the number of runners with times above 14s. Frequency Density 5 We first find what area represents the total frequency. 4 Total area = 15 + 9 = 24 3 Area ×2.5 2 24 60 Then use this scaling along with the desired area. 1 0 Freq ? 9 12 Time (s) 18 Area = 4 × 1.5 Area 6 Freq ×2.5 15? Frequency Density = Frequency ÷ Class width? Weight (to nearest kg) Frequency 1-2 4 3-6 3? 7-9 3? Note the gaps! We can use the complete set of information in the first row combined with the bar to again work out the correct βscalingβ. Frequency Density 5 4 3 2 1 0 1 2 3 Time (s) 4 5 6 7 8 9 10 May 2012 A policeman records the speed of the traffic on a busy road with a 30 mph speed limit. He records the speeds of a sample of 450 cars. The histogram in Figure 2 represents the results. (a) Calculate the number of cars that were exceeding the speed limit by at least 5 mph in the sample. (4 marks) We can make the frequency density scale what we like. 7 M1 A1: Determine what one small square or one large square is worth. 6 (i.e. work out ππππ β ππππ scaling) 5 4 3 2 1 Area 112.5 Freq ×4 ?450 M1 A1: Use this to find number of cars travelling >35mph. Area 22.5 ? ×4 Freq 90 May 2012 A policeman records the speed of the traffic on a busy road with a 30 mph speed limit. He records the speeds of a sample of 450 cars. The histogram in Figure 2 represents the results. (b) Estimate the value of the mean speed of the cars in the sample. (3 marks) M1 M1: Use histogram to construct sum of speeds. 30 × 12.5 + 240 × 25 + β― ? 450 A1 Correct value = 28.8 ? Bro Tip: Whenever you are asked to calculate mean, median or quartiles from a histogram, form a grouped frequency table. Use your scaling factor to work out the frequency of each bar. May 2012 π Speed π 10-15 12.5 30 20-30 15 240 30-35 32.5 90 35-40 37.5 30 40-45 42.5 60 Jan 2012 Bro Tip: Be careful that you use the correct class widths! ? 14 5? 21 + 45 + 3?= 69 Jan 2008 ? ? ? ? ? M1 A1 B1 M1 = 12 runners A1 Answer: Distance ? is continuous Note that gaps in the class intervals! 4 / 5 = 0.8 19 / 5 = 3.8 ? 53 / 10 = 5.3 ... Jun 2007 35 ? 15 ? (5 x 5) +?15 = 40 Skew Skew gives a measure of whether the values are more spread out above the median or below the median. mode mode median Frequency Frequency median mean mean Height Sketch Mode Sketch Median Weight Sketch Mean We say this distribution has positive ? skew. (To remember, think that the βtailβ points in the positive direction) Sketch Mode Sketch Median Sketch Mean We say this distribution has negative ? skew. Skew Remember, think what direction the βtailβ is likely to point. Distribution Skew Salaries on the UK. High salaries drag mean up. So positive skew. ? Mean >? Median IQ A symmetrical distribution, i.e. no skew. ? Mean =? Median Heights of people in the UK Will probably be a nice βbell curveβ. i.e. No skew. ? Mean =? Median Age of retirement Likely to be people who retire significantly before the median age, but not many who retire ? significantly after. So negative skew. Mean <? Median Exam Question In the previous parts of a question youβve calculated that the mean mark of students in a test was ππππ = 55.48 and ππππππ = 56. (d) Describe the skewness of the marks of the students, giving a reason for your answer. (2) 1st mark Negative skew ? 2nd mark because mean ? < median Skew ? Positive skew ? Negative skew ? No skew Given the quartiles and median, how would you work out whether the distribution had positive or negative skew? Exam Question 1st mark π3 β π2 > π2 β?π1 2nd mark Therefore positive ? skew. Calculating Skew One measure of skew can be calculated using the following formula: (Important Note: this will be given to you in the exam if required) 3(mean β median) standard deviation When mean > median, mean < median, and mean = median, we can see this gives us a positive value, negative value, and 0 respectively, as expected. Find the skew of the following teachersβ annual salaries: £3 £3.50 £4 £7 £100 Mean = £23.50 ? Median = £4 ? Skew = 1.53 ? Standard Deviation = £38.28 ? S1: Chapter 4 Revision! Revision Stem and leaf diagrams: β’ Can you construct one, and write the appropriate key? β’ Can you calculate mode, mean, median and quartiles? β’ Can you assess skewness by using these above values? Back-to-back stem and leaf diagrams: β’ Can you construct one with appropriate key? β’ Can you compare the data on each side? 1 2 3 4 5 4 1 2 0 0 2 5 1 1 4 6 2 1 5 6 6 7 7 8 8 2 4 5 6 7 7 7 7 8 2 ππππ = 4.7 ? Key: 2 | 1 means ? 2.1 πΏππ€ππ ππ’πππ‘πππ = 3.6? πππππ ππ’πππ‘πππ = 4.7 ? Type of skew: πππ ππ‘ππ£π ? (1) (4) (9) (12) (4) ππππππ = 4.05? Reason: π3 β π2 >? π2 β π1 Revision Girls 8 6 9 8 8 5 4 0 8 6 2 2 5 4 6 0 1 0 4 0 2 0 0 Boys 4 5 6 7 8 9 6 0 7 9 0 0 4 5 7 8 1 2 4 5 0 1 The data above shows the pulse rate of boys and girls in a school. Comment on the results. Boyβs pulse rate tends to be ? lower than girlsβ. Notice the values go outwards from the centre. Key: 0|4|6 ? Means 40 for girls and 46 for boys. ? Revision Histograms Can you: β’ Appreciate that the frequency density scale doesnβt matter. This is why frequency is only proportional to area, and not equal to it. ×π β’ You often need to identify the scaling π¨πππ πππππππππ. You might only be given the total frequency (in which case you need to find the total area of the histogram to find π). But if you know the frequency associated with a particular bar, just find the area of that single bar. πΉππππ’ππππ¦ β’ If you donβt care about the scaling, then πΉππππ’ππππ¦ π·πππ ππ‘π¦ = πΆπππ π ππππ‘β β’ Be incredibly careful about class widths (i.e. widths of boxes). If the class interval in the frequency table was 20 β 25 with gaps, then youβd draw 19.5 β 25.5 on the histogram, and use 6 as the width of the box. β’ If you want to find the quartiles/median/mean, you need to first construct a grouped frequency table using the histogram. β’ When asked to find the number of people with values in a certain range (e.g. with times between 10 and 15s) and it crosses multiple ranges/bars, itβs easier to use the frequency table youβve constructed from the histogram. Use linear interpolation where necessary. Revision ? ? ? ? ? M1 A1 B1 M1 = 12 runners A1 Revision Given that an outlier is a value 1.5 × πΌππ outside the lower and upper quartilesβ¦ Smallest values Largest values Lower Quartile Median Upper Quartile 0, 3 8 14 21, 27 10 ? 0 5 10 15 20 25 30 Smallest values Largest values Lower Quartile Median Upper Quartile 3, 7 12 16 20, 25, 26 13 ? 0 5 10 15 20 25 30 Revision Skewness You can determine skewness in three ways: β’ Comparing quartiles: When π3 β π2 > π2 β π1 , the width of the right box in the box plot is wider, so itβs positive skew. If a box plot is drawn, it should be immediately obvious! β’ Comparing mean/median: When ππππ > ππππππ, large values have dragged up the mean, so thereβs a tail in the positive direction, and thus the skew is positive. β’ Looking at the shape of the distribution. If thereβs a βpositive tailβ, the skew is positive. When asked to justify your answer for skewness, youβre expected to put either something like βπ3 β π2 > π2 β π1 β or "ππππ > ππππππβ. You will always be given a formula if you have to calculate a value for skew. But for all formulae, 0 means no skew (i.e. a βsymmetric distributionβ), >0 means positive skew and <0 means negative skew. Find the skew of the following teachersβ annual salaries: £3 £3.50 £4 £7 £100 Mean = £23.50 ? Median = £4 ? 3 ππππ β ππππππ ππππ€ = π π‘ππππππ πππ£πππ‘πππ Standard Deviation = £38.28 ? Skew = 1.53 ?