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Chapter 6 Continuous Random Variables Statistics for Science (ENV) 1.

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1 Chapter 6 Continuous Random Variables Statistics for Science (ENV) 1

2 Continuous Random Variables 6.1 Continuous Probability Distributions 6.2 The Uniform Distribution 6.3 The Normal Probability Distribution 6.4Approximating the Binomial Distribution by Using the Normal Distribution

3 Continuous Probability Distributions A continuous random variable may assume any numerical value in one or more intervals Use a continuous probability distribution to assign probabilities to intervals of values

4 Probability density function (PDF) PDF P(x) has no trivial meaning before integration But after integration, it become probability P(a<X<b) =  a b p(x) dx (Area under the graph from a to b) As a result, P( X=a ) =  a a p(x) dx = 0  = E(X) =  -  +  x p(x) dx.  2 = Var(X) = E((X-  ) 2 ) =  -  +  (x-  ) 2 p(x) dx.

5 Properties of Probability density function (PDF) Properties of P(x): P(x) is a continuous function such that 1.P(x)  0 for all x 2.The total area under the curve of P(x) is equal to 1 Essential point: An area under a PDF is a probability

6 Area and Probability The blue area under the curve f(x) from x = a to x = b is the probability that x could take any value in the range a to b – Symbolized as P(a  x  b) – Or as P(a < x < b), because each of the interval endpoints has a probability of 0

7 Distribution Shapes Symmetrical and rectangular – The uniform distribution (Section 6.2) Symmetrical and bell-shaped – The normal distribution (Section 6.3) Skewed – Skewed either left or right (Section 6.5)

8 The Uniform Distribution If c and d are numbers on the real line (c < d), the probability curve describing the uniform distribution is The probability that x is any value between the values a and b (a < b) is Note: The number ordering is c < a < b < d

9 The Uniform Distribution Continued The mean  X and standard deviation  X of a uniform random variable x are These are the parameters of the uniform distribution with endpoints c and d (c < d)

10 The Uniform Probability Curve

11 Notes on the Uniform Distribution The uniform distribution is symmetrical – Symmetrical about its center  X –  X is the median The uniform distribution is rectangular – For endpoints c and d (c < d) the width of the distribution is d – c and the height is 1/(d – c) – The area under the entire uniform distribution is 1 Because width  height = (d – c)  [1/(d – c)] = 1 So P(c  x  d) = 1

12 Example 6.1: Uniform Waiting Time #1 Suppose you appear at an elevator entry at a random time. The amount of time, X, that you need to wait for the elevator is uniformly distributed between zero and four minutes – So c = 0 and d = 4, and – and

13 Example 6.1: Uniform Waiting Time #2 What is the probability that you have to wait at least 2.5 minutes for an elevator? – The probability is the area under the uniform distribution in the interval [2.5, 4] minutes The probability is the area of a rectangle with height ¼ and base 4 – 2.5 = 1.5 – P(x ≥ 2.5) = P(2.5 ≤ x ≤ 4) = ¼  1.5 = 0.375

14 Example 6.1: Uniform Waiting Time #3 What is the probability that you have to wait less than one minutes for an elevator? – P(x ≤ 1) = P(0 ≤ x ≤ 1) = ¼  1 = 0.25

15 Example 6.1: Uniform Waiting Time #4 Expect to wait the mean time µ X =(0 + 4)/2 = 2 With a standard deviation σ X of – The mean plus/minus one standard deviation is µ X ± σ X = 2 ± 1.1547 = [0.8453, 1.1547] minutes The probability that the waiting time is within one standard deviation of the mean time is P(0.8453 ≤ x ≤ 3.1547)=¼  (3.1547–0.8453) = 0.57735

16 Assignment: waiting for the green light Cars arrive a traffic light randomly in time. The traffic light timing is set so that the green light lasts for 80 seconds, and follows by 40 seconds of red light. What is the probability that a car does not have to wait in front of this traffic light? What is the probability that a car has to wait less than 20 seconds? What is the average waiting time? 16

17 The Normal Probability Distribution The normal probability distribution is defined by the equation for all values x on the real number line –  is the mean and  is the standard deviation –  = 3.14159… and e = 2.71828 is the base of natural logarithms

18 The Normal Probability Distribution Continued The normal curve is symmetrical about its mean  – The mean is in the middle under the curve – So  is also the median It is tallest over its mean  The area under the entire normal curve is 1 – The area under either half of the curve is 0.5

19 The Normal Probability Distribution Continued

20 -5 0.4 0.3 0.2 0.1.0 x f ( x ral itrbuion:  =0,  = 1 Mean, median, and mode are equal Theoretically, curve extends to infinity a Characteristics of a Normal Distribution Normal curve is symmetrical

21 Properties of the Normal Distribution There are an infinite number of normal curves – The shape of any individual normal curve depends on its specific mean  and standard deviation  standard normalN(0,1) The standard normal N(0,1) distribution is a normal distribution with a mean of 0 and a standard deviation of 1. z distribution. P(z) ~ exp(-0.5*z 2 ) also called the z distribution.

22 Properties of the Normal Distribution Continued The tails of the normal extend to infinity in both directions – The tails get closer to the horizontal axis but never touch it The area under the normal curve to the right of the mean equals the area under the normal to the left of the mean – The area under each half is 0.5

23 The Position and Shape of the Normal Curve (a)The mean  positions the peak of the normal curve over the real axis (b)The variance  2 measures the width or spread of the normal curve

24 Relationship with other distributions The binomial distribution B(n, p) is approximately normal N(np, np(1 − p)) for large n and for p not too close to zero or one. The Poisson(λ) distribution is approximately normal N(λ, λ) for large values of λ.

25 Normal Probabilities Suppose X is a normally distributed random variable with mean  and standard deviation  The probability that X could take any value in the range between two given values a and b (a < b) is P(a ≤ X ≤ b)

26 Normal Probabilities Continued P(a ≤ X ≤ b) is the area colored in blue under the normal curve and between the values x = a and x = b

27 Three Important Areas under the Normal Curve 1.P(µ – σ ≤ X ≤ µ + σ) = 0.6826 – So 68.26% of all possible observed values of x are within (plus or minus) one standard deviation of µ 2.P(µ – 2σ ≤ X ≤ µ + 2σ) = 0.9544 – So 95.44% of all possible observed values of x are within (plus or minus) two standard deviations of µ 3.P(µ – 3σ ≤ X ≤ µ + 3σ) = 0.9973 – So 99.73% of all possible observed values of x are within (plus or minus) three standard deviations of µ

28 Three Important Percentages

29 The Standard Normal Distribution If x is normally distributed with mean  and standard deviation , then the random variable z is normally distributed with mean 0 and standard deviation 1 This normal is called the standard normal distribution

30 The Standard Normal Distribution Continued – The algebraic sign on z indicates on which side of  is x – z is positive if x >  (x is to the right of  on the number line) – z is negative if x <  (x is to the left of  on the number line) z measures the number of standard deviations that x is from the mean m

31 The Standard Normal Table The standard normal table is a table that lists the area under the standard normal curve to the right of the mean (z=0) up to the z value of interest – See Table 6.1, Table A.3 in Appendix A, and the table on the back of the front cover This table is so important that it is repeated 3 times in the textbook! Always look at the accompanying figure for guidance on how to use the table

32 The Standard Normal Table Continued The values of z (accurate to the nearest tenth) in the table range from 0.00 to 3.09 in increments of 0.01 – z accurate to tenths are listed in the far left column – The hundredths digit of z is listed across the top of the table The areas under the normal curve to the right of the mean up to any value of z are given in the body of the table

33 A Standard Normal Table

34 The Standard Normal Table Example Find P(0 ≤ z ≤ 1) – Find the area listed in the table corresponding to a z value of 1.00 – Starting from the top of the far left column, go down to “1.0” – Read across the row z = 1.0 until under the column headed by “.00” – The area is in the cell that is the intersection of this row with this column – As listed in the table, the area is 0.3413, so P(0 ≤ z ≤ 1) = 0.3413

35 Areas under the Standard Normal Curve

36 Calculating P(-2.53 ≤ z ≤ 2.53) First, find P(0 ≤ z ≤ 2.53) – Go to the table of areas under the standard normal curve – Go down left-most column for z = 2.5 – Go across the row 2.5 to the column headed by.03 – The area to the right of the mean up to a value of z = 2.53 is the value contained in the cell that is the intersection of the 2.5 row and the.03 column – The table value for the area is 0.4943 Continued

37 Calculating P(-2.53 ≤ z ≤ 2.53) Continued From last slide, P(0 ≤ z ≤ 2.53)=0.4943 By symmetry of the normal curve, this is also the area to the left of the mean down to a value of z = –2.53 Then P(-2.53 ≤ z ≤ 2.53) = 0.4943 + 0.4943 = 0.9886

38 Calculating P(z  -1) An example of finding the area under the standard normal curve to the right of a negative z value Shown is finding the under the standard normal for z ≥ -1

39 Calculating P(z  1)

40 Finding Normal Probabilities 1.Formulate the problem in terms of x values 2.Calculate the corresponding z values, and restate the problem in terms of these z values 3.Find the required areas under the standard normal curve by using the table Note: It is always useful to draw a picture showing the required areas before using the normal table

41 Example: scores of IQ test Most of the IQ tests are standardized with a mean score of 100 and a standard deviation of 15. If scores on an IQ test are normally distributed, what is the probability that a person who takes the test will score between 90 and 110? Solution: We want to know the probability that the test score falls between 90 and 110. Since the mean is 100 and the sd is 15, we need to find the probability between z>- 0.67 and z<0.67 from table. The answer is 2X0.2486 = 0.4972.

42 Example: scores of IQ test 2 With the same assumption as last example, what is the probability that a person with IQ score above 130? Solution:We have z= (130-100)/15 = 2. From the table, P(z>2) = 0.5-0.4772 = 2.28%

43 The Cumulative Normal Curve The cumulative normal curve is shown below: The cumulative normal table gives the shaded area

44 Cumulative area under the standard normal curve

45 The Cumulative Normal Table Useful for finding the probabilities of threshold values like P(z ≤ a) or P(z ≥ b) – Find P(z ≤ 1) Find directly from cumulative normal table that P(z ≤ 1) = 0.8413 – Find P(z ≥ 1) Find directly from cumulative normal table that P(z ≤ 1) = 0.8413 Because areas under the normal sum to 1 P(z ≥ 1) = 1 – P(z ≤ 1) = 1 – 0.8413 = 0.1587

46 Cumulative area under the standard normal curve

47 Albert Einstein, the famous physicist of last century, was considered to "only" have an IQ of about 160. What is the probability that a person with IQ score above 160? Solution:We have z= (160-100)/15 = 4. From table 6.1, P(z<4) = 0.99997 P(z>4) = 1-0.99997 = 0.00003 or lest than 3 in 100,000 persons Cumulative area under the standard normal curve: example

48 Example: probability of getting an “A” Only the top 10% students in this class can get the “A” grade. If the final scores of the class are normally distributed, what is the minimum z-value one should have in order to get an “A”? Solution: We need to find z such that the cumulative area under the standard normal curve is 0.9. From table 6.1, we get z>1.28.

49 Example 6.2: The Car Mileage Case Want the probability that the mileage of a randomly selected midsize car will be between 32 and 35 mpg – Let x be the random variable of mileage of midsize cars – Want P(32 ≤ x ≤ 35 mpg) Given: – x is normally distributed – µ = 33 mpg – σ = 0.7 mpg Procedure (from previous slide): 1.Formulate the problem in terms of x (as above) 2.Restate in terms of corresponding z values (see next slide) 3.Find the indicated area under the standard normal curve using the z table (see the slide after that)

50 Example 6.2: The Car Mileage Case 2 For x = 32 mpg, the corresponding z value is So the mileage of 32 mpg is 1.43 standard deviations below (to the left of) the mean For x = 35 mpg, the corresponding z value is Then P(32 ≤ x ≤ 35 mpg) = P(-1.43 ≤ z ≤ 2.86)

51 Example 6.2: The Car Mileage Case 3 Want: the area under the normal curve between 32 and 35 mpg Will find: the area under the standard normal curve between -1.43 and 2.86 Continued

52 Example 6.2: The Car Mileage Case 4 Break this into two pieces, around the mean – The area to the left of µ between -1.43 and 0 By symmetry, this is the same as the area between 0 and 1.43 From the standard normal table, this area is 0.4236 – The area to the right of µ between 0 and 2.86 From the standard normal table, this area is 0.4979 – The total area of both pieces is 0.4236 + 0.4979 = 0.9215 – Then, P(-1.43 ≤ z ≤ 2.86) = 0.9215 Returning to x, P(32 ≤ x ≤ 35 mpg) = 0.9215

53 Illustrating the Results of Example 6.2

54 Finding Z Points on a Standard Normal Curve

55 Example 6.5: Stocking to prevent out of inventory A discount store sells packs of 50 DVD’s Want to know how many packs to stock so that there is only a 5 percent chance of stocking out during the week – Let x be the random variable of weekly demand – Let st be the number of packs so there is only a 5% probability that weekly demand will exceed st – Want the value of st so that P(x ≥ st) = 0.05 Given x is normally distributed, µ = 100 packs, and σ = 10 packs

56 Example 6.5 #2

57 Example 6.5 #3 In panel (a), st is located on the horizontal axis under the right-tail of the normal curve having mean µ = 100 and standard deviation σ = 10 The z value corresponding to st is In panel (b), the right-tail area is 0.05, so the area under the standard normal curve to the right of the mean z = 0 is 0.5 – 0.05 = 0.45

58 Example 6.5 #4 Use the standard normal table to find the z value associated with a table entry of 0.45 – But do not find 0.45; instead find values that bracket 0.45 – For a table entry of 0.4495, z = 1.64 – For a table entry of 0.4505, z = 1.65 – For an area of 0.45, use the z value midway between these – So z = 1.645

59 Example 6.5 #5 Combining this result with the result from a prior slide: Solving for st gives st = 100 + (1.645  10) = 116.45 – Rounding up, 117 packs should be stocked so that the probability of running out will not be more than 5 percent

60 Finding a Tolerance Interval Finding a tolerance interval [   k  ] that contains 99% of the measurements in a normal population

61 Example: Given a population with mean height of 170 cm and sd=15 cm What is the interval in height which contains 99% of the population? 61

62 Approximating the Binomial Distribution by Using the Normal Distribution The figure below shows several binomial distributions Can see that as n gets larger and as p gets closer to 0.5, the graph of the binomial distribution tends to have the symmetrical, bell-shaped, form of the normal curve

63 63

64 Normal Approximation to the Binomial Continued Generalize observation from last slide for large p Suppose x is a binomial random variable, where n is the number of trials, each having a probability of success p – Then the probability of failure is 1 – p If n and p are such that np  5 and n(1–p)  5, then x is approximately normal with

65 Example 6.8: Normal Approximation to a Binomial #1 Suppose there is a binomial variable X with n = 50 and p = 0.5 Want the probability of X = 23 successes in the n = 50 trials – Want P(x = 23) – Approximating using the normal curve with

66 Example 6.8: Normal Approximation to a Binomial #2 With continuity correction, find the normal probability P(22.5 ≤ x ≤ 23.5)

67 Example 6.8: Normal Approximation to a Binomial #3 For x = 22.5, the corresponding z value is For x = 23.5, the corresponding z value is Then P(22.5 ≤ x ≤ 23.5) = P(-0.71 ≤ z ≤ -0.42) = 0.2611 – 0.1628 = 0.0983 Therefore the estimate of the binomial probability P(x = 23) is 0.0983

68 68 Example: Suppose that you are taking a multiple-choice test where each question has 4 possible answers. If there are 48 questions on the test, what is the probability that you would get exactly 14 questions correct by simply guessing at the answers? If you are just guessing, then the probability of getting a question correct is p = 1/4, and the probability of guessing wrong is q = 3/4. With a sample of n = 48 questions, this example meets the criteria for using the normal approximation to the binomial: pn = 0.25*(48) = 12 qn = 0.75*(48) = 36 (both greater than 10) Therefore, the distribution showing the number correct out of 48 questions will be normal with parameters: mean = pn = 12;sd = sqrt(npq) = sqrt(9) = 3 We want the proportion of this distribution that corresponds to X = 14, that is, the portion bounded by X = 13.5 and X = 14.5.

69 69 Notice that the score X = 14 corresponds to an interval bounded by X = 13.5 and X = 14.5. The binomial distribution (normal approximation) for the number of answers guessed correctly (X) on a 48-question multiple-choice test. The shaded portion corresponds to the probability of guessing exactly 14 questions.

70 Summary 6.1 Continuous Probability Distributions 6.2 The Uniform Distribution 6.3 The Normal Probability Distribution 6.4Approximating the Binomial Distribution by using the Normal Distribution


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