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Module II Lecture 4 Special Probability Distributions Certain probability distributions occur with such regularity in real-life situations that they have been given their own names and it is worth studying their properties. In this section, we look at three probability distributions that arise in almost every aspect of business. The Binomial Distribution Consider the following situations: a) You audit a transaction, it is either in compliance with procedures of it is not; b) You hire a person, that person is either a female or a male; c) You visit a customer, it either leads to a sale or it doesn’t; d) You lower the price of a product, sales either increase or they don’t; e) You have a model for the stock market, you predict that it will go up at least 30 points, it either goes up 30 or more points or it doesn’t; f) You have an intermittent problem on your company’s network, on any given day the problem either appears or doesn’t appear. All of these situations are ones where the Binomial Distribution may be applicable. There is a canonical definition for the binomial distribution. This is a set of assumptions, which, if they hold, indicate that the binomial distribution may be applied to a particular situation. Let us suppose that in a given situation only one of two possible things can occur. For example, if we flip a fair coin then we can only get the outcomes heads or tails. Flipping the coin is called an experiment in statistical jargon, and heads or tails are called the possible outcomes of the experiment. Each repetition of the experiment is called a trial. The binomial distribution applies in the following situation: a) The outcome of any trial can only take on two possible values, say success and failure; b) There is a constant probability p of success on each trial; c) The experiment is repeated n times (i.e. n trials are conducted); d) The trials are statistically independent (i.e. the outcome of past trials does not affect subsequent trials; then if x equals the number of successes in the n trials, we have: P( x ) for x = 0, 1, 2, …… n. n! p x (1 p) n x x !(n x )! For example, if we flipped a fair coin ten times, and let x equal the number of heads, the above formula would give the following probabilities: x P(x) 0 1 2 3 4 5 6 7 8 9 10 0.00098 0.00977 0.04395 0.11719 0.20508 0.24609 0.20508 0.11719 0.04395 0.00977 0.00098 1 Graphically, the probability distribution looks like: Probability Binomial Distribution, n= 10, p=.5 0.30000 0.25000 0.20000 0.15000 0.10000 0.05000 0.00000 0 1 2 3 4 5 x 6 7 8 9 10 If we used a biased coin so that the probability of getting a head is only .3, then the probability distribution would look like: Probability Binomial Distribution, n= 10, p=.3 0.30000 0.25000 0.20000 0.15000 0.10000 0.05000 0.00000 0 1 2 3 4 5 x 6 7 8 9 10 If the coin were extremely biased so that the probability of heads was only .05, then the distribution would look like: Probability Binomial Distribution, n= 10, p=.05 0.70000 0.60000 0.50000 0.40000 0.30000 0.20000 0.10000 0.00000 0 1 2 3 4 5 x 6 7 8 9 10 EXCEL allows one to compute the binomial probability distribution directly. The form of the function is: =binomdist(x, n, p, condition), where x is the value of interest, n is the number of trials, p is the probability of success and condition is either “false” or “true”. If you specify the following command, =binomdist(3, 10, .50, false), then EXCEL will compute the probability that x = 3. If you use the command, =binomdist(3, 10, .50, true), then Excel will compute the probability that x<=3. In other words EXCEL will accumulate the probabilities for x = 0, x = 1, x = 2, and x = 3 and report the total. The following table shows the use of both conditions in the case where n = 10, and p = .5: Condition false true x P(x) P(<=x) 0 1 2 3 4 5 6 7 8 9 10 0.00098 0.00977 0.04395 0.11719 0.20508 0.24609 0.20508 0.11719 0.04395 0.00977 0.00098 0.00098 0.01074 0.05469 0.17188 0.37695 0.62305 0.82813 0.94531 0.98926 0.99902 1.00000 1 One can show that, E(x) = np, and, SD( x) np(1 p) If instead of x, the number of successes, we are interested in p x / n that is the proportion of successes in n trials, then one can show that E ( p ) p and, SD( p ) p(1 p) n In our case, E(x) = 10 * .5 = 5, and, SD( x) (.5) *(.5) * 10 1581139 . Let us apply the binomial distribution to a more practical problem then flipping coins. Suppose that you are going to hire 10 persons from a pool of qualified candidates which is 30 % women. You find that only 1 woman, and 9 men were hired. Is this evidence that the firm is discriminating against women in hiring? The first question is to determine if the binomial distribution is applicable. Clearly each hire can only be a man or woman so that condition is fulfilled. The hires are probably independent or close to independent so that condition is probably fulfilled. The major problem is whether or not the probability of success, p, is constant from trial to trial. If there were only a total of 20 applicants, 6 women and 14 men, then if you hired one of the women on the first hire, that would leave 5 women and 14 men which would mean the probability of hiring a woman for the second hire could only be 5 / 19 = .2632, which is very large change from the initial probability of .30. On the other hand if the hiring pool consisted of 100 applicants, 30 women and 70 men, then if you hired one of the women on the first hire, that would leave 29 women and 70 men, which would mean the probability of hiring a woman for the second hire would be 29 / 99 = .2929 which is a very small change. The actual probability distribution to use is called the hypergeometric distribution. However it is well know that if the probability p in the binomial distribution does not change much from trial to trial, then the results from the hypergeometric distribution and the binomial distribution are almost identical. Assuming that the probability of hiring a woman does not change much over the 10 hires, then we can reasonably assume that the probability is approximately constant over the 10 hires and the assumptions of the binomial distribution are approximately fulfilled. The next problem we face is that any value between 0 and 10 can possibly occur. Indeed the probability distribution for this situation, i.e. binomial with n = 10, and p = .3, is given in the table below: Female Hires Prob Cumulative Prob 0 1 2 3 4 5 6 7 8 9 10 0.028248 0.121061 0.233474 0.266828 0.200121 0.102919 0.036757 0.009002 0.001447 0.000138 0.000006 0.028248 0.149308 0.382783 0.649611 0.849732 0.952651 0.989408 0.998410 0.999856 0.999994 1.000000 Notice that although any value is possible the values are not all equally probable. For example it would not at all seem odd if we hired 3 women or 2 women or 4 women since these values all have reasonably high probabilities. On the other hand, it would seem odd if we hired 10 women since the probability of this outcome is approximately 6 chances in 1, 000, 000. Almost as rare as winning the Texas Lottery!! Statistical logic works like this: a) define what you think is a rare event (most users of statistics define rare as 1 chance in 20 [.05] or 1 chance in 100 [.01]); b) if the probability of the observed result or anything more extreme is less than what you define as rare, then the assumptions of the binomial distribution are suspect. In our case we observed 1 female hire. More extreme is to hire 0 women. Therefore we want the probability of observing 1 or fewer women. This can be obtained directly from the above table or by using the =binomdist(1, 10, .3, true) command. The result is a probability of .149308. This is roughly a chance of 1 in 7 which most people would not think is rare. Accordingly this data would not be suggestive of disproportionate hiring of women. (Of course if it happened more than once, it might be indicative. Suppose a month later the same thing happens. The probability of hiring 1 woman in 10 hires from a pool that is 30% women twice would be: (.149308) * (.149308) = .0223 which for many people would make one suspect of a fair hiring environment. Graphically, the probability distribution we would expect for x = the number of women hired when you are hiring for 10 positions (n) from a pool of qualified applicants which is 30% female ( p = .30) is given below with the observed and more extreme value highlighted: Number of Women Hires 0.300000 Probability 0.250000 0.200000 0.150000 0.100000 0.050000 0.000000 0 1 2 3 4 5 x 6 7 8 9 10 Now let us leave the percentage of women in the qualified pool the same as previously (i.e. p =.3) but now hire for 50 positions (n=50). And assume again we only hire 10% women (x=5). Then the probability distribution would look like: Number of Women Hires Probability 0.15 0.1 0.05 x=5 x As can be seen, hiring only 5 women in 50 hires from a pool of 30 % women, is a relatively rare event. Using the binomdist function I can compute: P(x<= 5) = binomidist(5, 50, .3, true) = .00072. This amounts to a chance of approximately 7 in 10,000 which is highly improbable. Accordingly, we would be suspect in this situation that women are being hired proportionate to their representation in the applicant pool . 48 44 40 36 32 28 24 20 16 12 8 4 0 0 It is very easy to simulate the binomial distribution. Suppose we wish to simulate values of x from a binomial distribution with n = 10 and p = .4. For each trial, we could use the statement: =if(rand()<=.4, 1, 0) This would generate a value of 1 approximately 40% of the time. If we repeated the above statement 10 times and added up the results, this would be equivalent to taking a sample of n = 10 and observing x where x followed the binomial distribution with p = .4. The above procedure, however, is cumbersome. Notice that what we really did was to divide the range of values between 0 and 1 into two regions. The first went from 0 to .4. If the random number fell in this range, we said that the outcome should be 1. If the random number fell in the range .4 to 1 we said the outcome should be 0. If we had a random variable with three possible outcomes, then we could divide the interval between 0 and 1 into three regions with the size of each region proportional to its probability. In our case, with n = 10, we have eleven possible values which can occur, namely the values 0, 1, 2, . . . , 10. We wish to divide these proportionally to their probability given as: Binomial Distribution n = 10, p = .4 x P(x) 0 1 2 3 4 5 6 7 8 9 10 0.006047 0.040311 0.120932 0.214991 0.250823 0.200658 0.111477 0.042467 0.010617 0.001573 0.000105 1 This can easily be accomplished by computing the cumulative binomial probability distribution which is shown below: Cumulative Binomial Distribution n = 10, p = .4 x P(<=x) 0 1 2 3 4 5 6 7 8 9 10 0.006047 0.046357 0.16729 0.382281 0.633103 0.833761 0.945238 0.987705 0.998322 0.999895 1 We now set up the following rule: If Random number is between 0 0.006047 0.046357 0.16729 0.382281 0.633103 0.833761 0.945238 0.987705 0.998322 0.999895 and and and and and and and and and and and 0.006047 0.046357 0.16729 0.382281 0.633103 0.833761 0.945238 0.987705 0.998322 0.999895 1 Then x = 0 1 2 3 4 5 6 7 8 9 10 For example if we generated the random number .188754, this value falls between .16729 and .382281 so we would say that x = 3 for those 10 trials. If we generated a second random number, say .99461, then this value falls between .987705 and .998322 so that we would say that x = 8 for those 10 trials. The entire process can be automated in further in EXCEL using the function “LOOKUP”. This function has three arguments. The first is the value we wish to look up, in this case this is the random number. The second argument is the table in which you want to look up the probability, in our case this is the cumulative probability distribution column (but we must add the value “0” in the row proceeding the first probability). Finally, the third argument is the table containing the results, in our case the values of x. The entire process is shown in the following screen shot: The first argument of the function “LOOKUP” is the random number in column F row 175 (shown in blue). The second argument is the table of the cumulative binomial distribution (with zero added) shown in green. The third argument is the actual value of the lookup process, the value of x shown in lavender. Notice that the ranges of the second and third arguments have the symbol “$” prefixing both the column and row entry. This is necessary so that if the entries are copied (as in using a table of random numbers), the relevant look up table entries remain constant since in EXCEL relative addressing is always used. The following steps a), b), and c) show the entire process simulating 25 times the number of success when 10 trials are run. Simulate Binomial with n = 10 and pi = .4 a) Generate Distribution binomdist(x,10,.4,true) x 0 0 0.006047 1 0.046357 2 0.16729 3 0.382281 4 0.633103 5 0.833761 6 0.945238 7 0.987705 8 0.998322 9 0.999895 10 1 b) Generate Random Numbers (25) 0.188754 0.105325 0.555951 0.480493 0.131033 0.99461 0.608283 0.207534 0.129214 0.085797 0.280296 0.161509 0.404118 0.220414 0.821619 0.997045 0.394184 0.052352 0.892615 0.335211 0.562853 0.490515 0.363331 0.583843 0.316501 c) Use LOOKUP(x,ProbCOL,ResultCOL) after anchoring results 3 2 4 4 2 8 4 3 2 2 3 2 4 3 5 8 4 2 6 3 4 4 3 4 3 The Poisson Distribution The Poisson Distribution is another distribution which arises in a great number of business situations. It usually is applicable in situations where random phenomenon occur at a certain rate over a period of time. For example, it describes the number of people in line at a checkout counter as well as the number of telephone calls received at a switching point. It, like the Binomial Distribution, has a canonical definition. Assume you have an “exposure” variable such as time (it does not have to be time, but it has to be continuous). Assume that this time period can be divided into small enough increments, say of width dt, so that in any one of these intervals something happens or doesn’t happen. For example, consider phone calls during an hour period. Obviously we can divide the hour into small intervals, maybe of width 1 second, so that we can either receive one call or no call. Assume the probability of an event occurring in an interval of width dt is dt. Assume further that the occurrence or non-occurrence of an event in one interval is independent of the occurrence or non-occurrence of the same event in another interval. Then if one defines, = t where t is the length of the interval, then the probability of x occurrences in the interval of length t is given by, e x P( x ) x! for x = 0, 1, 2, ……………… One can show that for the Poisson Distribution with parameter , E ( x) and, SD( x) One can usually easily recognize situations where the Poisson Distribution is applicable since they usually involve a rate and an exposure. For example, suppose an office receives, on average, 15 calls per hour. In a two hour period the office received 45 calls. Is this a rare event? Here the rate is 15 calls per hour and the exposure is a two hour period. This implies that = 15 * 2 = 30. As another example, suppose a manufacturing plant has, on average, 24 accidents per year. In a one month period it has 5 accidents. Is this a rare event? Here the rate is 24 accidents per year and the exposure is one month ( 1 /12 of a year). This implies that = 24 * (1 / 12) = 2. The exposure rate does not have to be time. For example consider the situation where, on average, a driver has 1 accident per 50,000 miles driven. Suppose the person drives a vehicle for 100,000 miles and has no accidents is this a rare event? Here the rate is 1 accident per 50,000 miles driven and the exposure is 100,000 miles so that = 100,000 * ( 1 / 50,000) = 2. The probability distribution for this last case is given below: x P(x) P(<=x) 0 1 2 3 4 5 6 7 8 9 10 11 12 13 0.135335 0.270671 0.270671 0.180447 0.090224 0.036089 0.012030 0.003437 0.000859 0.000191 0.000038 0.000007 0.000001 0.000000 0.135335 0.406006 0.676676 0.857123 0.947347 0.983436 0.995466 0.998903 0.999763 0.999954 0.999992 0.999999 1.000000 1.000000 Note that the probabilities continue on past 12, it is just that they are so small that they appear in the table as zero. Graphically, the distribution is as shown below: Poisson Distribution mu = 2 0.300000 0.250000 0.150000 0.100000 0.050000 x 12 10 8 6 4 2 0.000000 0 Prob 0.200000 Now consider the situation where we are inspecting parts for defects. Assume we have a defective rate of 1/1000. If we inspect 1000 parts and observe 3 defects, should we worry? In this case = 1000 * ( 1 / 1000) = 1. As in the binomial case, EXCEL can be used to compute the probability of this or any more extreme event. The function to use has the form, =Poisson(x, mu, condition), where, just as in the case of the binomial distribution, a condition of ‘false’ gives us the probability of x , and a condition of ‘true’ gives us the probability of being less than or equal to x. In this case we want the probability of 3 or anything more extreme, that is the probability of three or more. We can find , P( x 2) POISSON (2,1, true) .919699 so that, P( x 3) 1 P( x 2) 1.919699 .080311 which is not rare by the usual standards of .05 or .01. A picture of the probabilities to be added is shown below: 0.4 0.35 0.3 0.25 0.2 0.15 0.1 0.05 0 0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 Now assume we scale up the situation and inspect 5,000 parts. Then the parameter would change to = 5,000 * (1 / 1000) = 5. If we scale up the defective rate to mirror that in the first problem, this would correspond to observing 5 * 3 = 15 defectives. Graphically the Poisson Distribution with = 5 would look like: 24 20 22 16 18 12 14 8 10 6 4 x=15 2 0 0.2 0.18 0.16 0.14 0.12 0.1 0.08 0.06 0.04 0.02 0 By using the Poisson function in EXCEL, one obtains: P( x 15) 1 P( x 14) 1 POISSON (14,5, true) 1.999774 .000226 which is clearly a relatively rare event which might encourage us to improve quality control. Actually, I have been misleading you a bit. For in fact if we inspect 5,000 parts each of which has a probability of .001 (1 / 1000) of being defective, I am really describing a Binomial situation. However if n is large and p is small, so that n * p is moderate, then the Poisson distribution can be used to approximate the binomial distribution by taking = n * p. The graph below shows how good this approximation is in this case with n = 5,000 and p = .001 and = 5. Poisson Approximation to Binomial 0.18 0.16 0.14 0.12 Prob 0.1 0.08 poisson 0.06 binomial 0.04 24 22 20 18 16 14 12 10 8 6 4 2 0 0 0.02 x The Poisson distribution gave the probability of 15 or more defectives as .000226, while the exact value from the Binomial distribution is .000224, a small error in the sixth decimal place! Simulating a Poisson distribution is essentially the same as the procedure for the Binomial Distribution. Below is a screen shot of the procedure: A step by step illustration of simulating 25 realizations of the Poisson Distribution with parameter 5 is shown below: Simulate a Poisson with mu = 5 a) Generate Distribution poisson(x,5,true) x 0 0 0.006738 1 0.040428 2 0.124652 3 0.265026 4 0.440493 5 0.615961 6 0.762183 7 0.866628 8 0.931906 9 0.968172 10 0.986305 11 0.994547 12 0.997981 13 0.999302 b) Generate Random Numbers (25) 0.188754 0.105325 0.555951 0.480493 0.131033 0.99461 0.608283 0.207534 0.129214 0.085797 0.280296 0.161509 0.404118 0.220414 0.821619 0.997045 0.394184 0.052352 0.892615 0.335211 0.562853 0.490515 0.363331 0.583843 0.316501 c) Use LOOKUP(x,ProbCOL,ResultCOL) after anchoring results 3 2 5 5 3 12 5 3 3 2 4 3 4 3 7 12 4 2 8 4 5 5 4 5 4 The Normal Distribution The normal distribution (the so called "curve") is perhaps the best known probability distribution since it arises so many situations. In business applications is commonly found to describe the distribution of the rate of return on investments. However much business data is right skewed. If x is a typical business statistics, for example the assets of banks or the gross sales of companies, one usually finds that many small firms have modest values with a few very large values. This gives rise to a right skewed distribution. However, if one looks at the log (assets of banks) or the log(gross sales), one finds that the logarithmic value is approximated closely by the normal distribution. Such variables are said to have the Log-Normal distribution. Unlike the Binomial and Poisson distributions, the normal distribution is defined, theoretically, for continuous variables, that is variables with no gaps between potential values. Of course, in the real world, one never measures things to very many decimal places so that we can think of the normal distribution applying to many everyday variables. For example, if a man says he is six feet tall, he probably does not mean that he is exactly six feet tall. What is usually meant is that to the nearest inch, the man is six feet tall. That is his actual height is probably between five foot eleven and one half inches, and six feet and one half inch. Formally this is called "discretizing" the normal distribution. Since the normal is a continuous curve, it does not have a probability distribution. Instead it has what is called a probability density function. A probability density function is a positive function f(x), which has the property that: b P(a x b) f ( x)dx a and f ( x)dx 1 The form of the function f(x) for a normal distribution is: f ( x) e x 2 2 The normal distribution depends on two parameters and . We have used these symbols before to describe the mean and standard deviation of a population. For the normal distribution: E (x) and, SD(x) Below is shown a picture of two normal distributions which have the same standard deviations but different means: 5.7 4.8 3.9 3 2.1 1.2 0.3 -0.6 -1.5 -2.4 -3.3 -4.2 -5.1 0.45 0.4 0.35 0.3 0.25 0.2 0.15 0.1 0.05 0 -6 f(x) Normal Distributions x Increasing the mean moves the normal curve to the right, while decreasing the mean moves the curve to the left. Below are shown normal distribution with the same mean but with different standard deviations: Normal Distributions 1 f(x) 0.8 0.6 0.4 0.2 5. 1 6. 2 4 -7 -5 .9 -4 .8 -3 .7 -2 .6 -1 .5 -0 .4 0. 7 1. 8 2. 9 0 x Increasing the standard deviation makes the curve more spread out and lower (this has to occur since the total area under the curve is always 1). Decreasing the standard deviation makes the curve less spread out and higher. It is very easy to work with the normal distribution using EXCEL. Like the case of the Binomial and Poisson distributions, EXCEL provides a function for computing values for any normal distribution. The form of the function is : =normdist(x, mean, sd, condition) As in the case of the Binomial and Poisson distributions, setting condition = "true" gives the probability of being less than or equal to a particular value. If the condition is set to "false" then one gets the value of f(x) which unlike the Binomial and Poisson distributions is not a probability. EXCEL also has the function: =normsdist(z) which gives the probability of being less than or equal to the value z for the special normal distribution with a mean of 0 and a standard deviation of 1 (called the Standard Normal Distribution). The Standard Normal Distribution, in the past, was quite important since it was used to compute probabilities for any normal distribution by just using a table of the Standard Normal Distribution and the transformations: z = (x - ) / , and the inverse relationship, x=+z With the advent of worksheet programs, one no longer needs these tables since the computer can generate the probabilities of interest directly. Let us consider an application of the normal distribution. The height of adult males in the United States is approximately normally distributed with an average height of 67 inches and a standard deviation of 2.1 inches. What is the probability that a randomly chosen adult male will be six feet tall or taller? Graphically, we are interested in finding the probability in the white area in the graph below: Height Distribution 0.15 0.1 Height 73.5 72.5 71.5 70.5 69.5 68.5 67.5 66.5 65.5 64.5 63.5 62.5 61.5 0.05 0 60.5 f(x) 0.2 EXCEL can be used to find the area of the shaded area in the above graph by using the command: P( x 72) normdist (72,67,2.1, true) .991366 The probability of being six feet tall or greater (the area of the white area) is then given by: P( x 72) 1 .991366 .008634 or slight less than 1% of the population. Now suppose we wished to find the proportion of adult U.S. males who were between 5 foot three (63 inches) and 5 foot ten (70 inches) tall. This is the shaded area in the graph below: Height 73.1 72.4 71.7 71 70.3 69.6 68.9 68.2 67.5 66.8 66.1 65.4 64.7 64 63.3 62.6 61.9 61.2 0.2 0.18 0.16 0.14 0.12 0.1 0.08 0.06 0.04 0.02 0 60.5 f(x) Normal Distribution To find this probability we need to realize that: P(63 x 70) P( x 70) P( x 63) or in EXCEL terminology: P(63 x 70) normdist (70,67,2.1, true) normdist (63,76,2.1, true) This gives the answer as: P(63 x 70) .923436 .028405 .895031 Approximately 89.5% of adult U. S. males are between 5 foot three and 5 foot 10 in height. Suppose I was interested in the inverse problem, that is what are the heights of 95% of adult U.S. males? Actually there are many ways to do this. I could for example find the minimum height that 95% of the population is greater than. Or I could include the lower 95 %. Or I could try to get the "middle" 95%. The middle 95 % would have 2.5% of the observations larger and 2.5% smaller. This is shown in the picture below: 0.2 0.18 0.16 0.14 0.12 0.1 0.08 0.06 0.04 0.02 0 95 % 73.1 71.7 71 70.3 69.6 68.9 68.2 67.5 66.1 65.4 64.7 64 63.3 62.6 61.9 61.2 66.8 Height 72.4 2.5% 2.5% 60.5 f(x) Normal Distribution EXCEL has a function which solves the following equation for x0 given any value of p for the normal distribution: P( x x0 ) p The function is: NORMINV ( p, , ) Therefore in our case, we find that: 62.884 = norminv(.025, 67, 2.1) and, 71.116 = norminv(.975, 67, 2.1). Therefore 95% of the heights fall between the values of 62.884 inches and 71.116 inches. Recall that the mound rule indicated that approximately 95% of the values fell within the interval +/- two standard deviations. The values 62.884 and 71.116 correspond to +/- 1.96 standard deviations which is the more precise figure. EXCEL also has the function: =normsinv(p) which is the inverse function for the the standard normal distribution (mean of zero and standard deviation of 1). Directly we could have obtained: -1.96 = normsinv(.025) and 1.96 = normsinv(.975). In a non-computerized statistics course, the above values would have been obtained from a table in the back of the book and then transformed to get: 67 – 1.96 * 2.1 = 62.884 and 67 + 1.96 * 2.1 = 71.116 In EXCEL we can do this directly using the norminv function. For large values of n, we can use the normal distribution to approximate the binomial distribution by taking: np np(1 p) This approximation will be valid if np > 5 and n(1 – p) > 5. For example in the case discussed previously with n = 50 and p = .3, we would have = 50 * .3 = 15 50(.3)(.7) 3.24037 and in this case np = 50(.3) = 15 and n(1-p) = 50 (.7) = 35 so that the approximation should be good. The two curves are plotted below: Normal Approximation to Binomial 0.14 0.12 Prob 0.1 0.08 binomial normal 0.06 0.04 0.02 48 45 42 39 36 33 30 27 24 21 18 15 9 12 6 3 0 0 x Notice however that the normal curve is continuous while the binomial distribution is discrete with nothing between the values of say 17 and 18. This distinction between discrete and continuous is important. For the binomial distribution Pbin ( x 10) Pbin ( x 10) Pbin ( x 10) so that a distinction must be made between "less than or equal" and "less than". For the normal distribution however, Pnor ( x 10) Pnor ( x 10) since there is no probability that x will exactly equal 10 (by exactly we mean to an infinite number of decimal places). We can get around this problem of continuous versus discrete by the use of what is called the "continuity correction". Simply it says that when using the normal distribution to approximate a discrete distribution (such as the binomial or poisson), assume that any discrete value, say 10, actually goes half way between the previous discrete value and the subsequent discrete value. In other words when using the normal distribution we assume that 10 actually goes from 9.5 to 10.5; 29 would go from 28.5 to 29.5, etc. If we let k be one of the discrete values, then the following five relationships illustrate the use of the continuity correction in all possible cases: Pbin ( x k ) Pnor (k .5 x k .5) Pbin ( x k ) Pnor ( x k .5) Pbin ( x k ) Pnor ( x k .5) Pbin ( x k ) Pnor ( x k .5) 1 Pnor ( x k .5) Pbin ( x k ) Pnor ( x k .5) 1 Pnor ( x k .5) Fortunately, in EXCEL we can use the binomdist function for most cases and need to use the normal approximation to the binomial only infrequently. The poisson distribution can also be approximated by the normal distribution if the poisson parameter > 5. By taking as given and taking the standard deviation as the square root of , we can approximate the poisson distribution with the normal distribution. The following graph shows the Poisson distribution with mean of 5 and the normal distribution with a mean of 5 and standard deviation equal to 2.2361 (the square root of 5): 0.2 0.18 0.16 0.14 0.12 0.1 0.08 0.06 0.04 0.02 0 24 22 20 18 16 14 12 10 8 6 4 2 Poisson Normal 0 Prob Normal Approximation to Poisson x Again if using the normal distribution to compute probabilities for the Poisson distribution one must correct for continuity in the same way as was done for the binomial distribution. It is very easy to simulate data which follows the normal distribution using the norminv function in EXCEL. The first step is to generate a set of random numbers using the rand() function as we have done before. Some sample data is shown below: a) Use RAND() to simulate 50 random numbers 0.407998 0.678836 0.1953 0.013617 0.927638 0.327113 0.785353 0.167275 0.016527 0.524512 0.445768 0.059317 0.764079 0.228678 0.055253 0.850148 0.517072 0.250051 0.962008 0.09676 0.495551 0.021171 0.132306 0.945737 0.29648 0.938787 0.034023 0.353435 0.298913 0.541888 0.09178 0.58483 0.825083 0.348549 0.309452 0.098211 0.37086 0.589669 0.840628 0.341382 0.739599 0.422763 0.349044 0.014406 0.926097 0.815619 0.165053 0.176948 0.689208 0.406182 Now suppose we were looking at an investment with a mean return of 8% with a risk (sd) of 2%. Then we could generate 50 normally distributed return by applying the function =norminv(random number, .08, .02) to the 50 random numbers previously generated to get: b) Use NORMINV(x,.08,.02) to generate the normal random variables 0.075346 0.089289 0.062829 0.035837 0.109168 0.071042 0.095808 0.0607 0.037372 0.08123 0.077273 0.048789 0.09439 0.065136 0.048082 0.100741 0.080856 0.066513 0.11549 0.053995 0.079777 0.039397 0.057689 0.112097 0.069309 0.110893 0.043506 0.072479 0.069449 0.082104 0.053403 0.084285 0.098698 0.072215 0.070052 0.054164 0.073408 0.084534 0.099941 0.071826 0.092842 0.076103 0.072242 0.036279 0.108946 0.097976 0.060522 0.061459 0.089872 0.075252 Finally, one should check that the simulation is approximately on target. For this data, the sample mean of the simulated values is .0748 compared to the theoretical value of .08. The standard deviation of the simulated values if .0210 compared to the theoretical value of .02. Finally, I have done a histogram of the simulated values which is shown below: Frequency Distribution 14 12 8 6 4 2 0 0. 03 0. 04 0. 05 0. 06 0. 07 0. 08 0. 09 0. 1 0. 11 0. 12 M or e Frequency 10 Simulated Returns As can be seen it is approximately normally distributed. What if we wanted to simulate correlated investments as we studied earlier in this module? Specifically suppose we wanted to simulate 25 years of returns on two investments. The first having a mean return of .08 and a standard deviation of .02 and the second having a mean return of .12 with a standard deviation of .05. And suppose that the investments are correlated with a correlation coefficient of -.4. The difficult part is generating the values so they are correlated. Fortunately there is a theoretical result that says if z1 and z2 are two independent random variables each with mean 0 and standard deviation 1, and we define two new variables x1 and x2 with the equations: x1 1 r 1 r z1 z2 2 2 x2 1 r 1 r z1 z2 2 2 then x1 and x2 will both still have mean 0 and standard deviation 1, but now the x's will be correlated with correlation coefficient r. Let us illustrate this procedure in steps. First generate two columns of 25 random numbers using the =rand() EXCEL function. The data would look like: a) Start with random numbers in two sets of 25 0.758384 0.301347 0.741409 0.591236 0.742038 0.764761 0.928779 0.754592 0.05917 0.324527 0.389161 0.159801 0.621819 0.091531 0.140335 0.444617 0.799008 0.266267 0.215947 0.031036 0.014389 0.526516 0.129849 0.459673 0.667225 0.311735 0.87599 0.306248 0.70228 0.518124 0.70556 0.086294 0.914354 0.699389 0.91737 0.781662 0.369674 0.359246 0.78965 0.801505 0.556215 0.512305 0.686824 0.298083 0.07719 0.337121 0.597915 0.06653 0.644828 0.024672 Nest use the EXCEL function =normsinv(random number) to generate two columns of uncorrelated normal random variables with mean zero and standard deviation 1. The data would look something like this: b) Generate two independent set of Normal with Mean of 0 and sd of 1 by using Normsinv (x) 0.701114 -0.49094 -0.52053 1.155174 Check correlation using CORREL 0.647697 -0.50651 0.230726 0.53097 -0.02995 0.649641 0.045444 0.721701 0.54046 1.46676 -1.36394 0.68901 1.368066 -1.56178 0.522646 -0.45508 1.387593 -0.28151 0.77782 -0.99527 -0.33272 0.31026 -0.36047 -1.33138 0.805205 -1.07882 0.847008 -0.13927 0.141381 0.838081 0.030848 -0.62414 0.486868 -0.78595 -0.52992 -1.86578 -1.42423 -2.18652 -0.42033 0.066516 0.247956 -1.1271 -1.50215 -0.10126 0.371394 0.432262 -1.96561 z1 z2 Using the =correl(z1, z2) we get a correlation of -.02995 compared to the theoretical value of 0. Next we implement the formula given above to induce the appropriate correlation, in this case r = -.4. The formula would look like: c) Generate two columns x1 and x2 by using the formula x1=sqrt((1+R)/2)*z1 + SQRT((1-R)/2)*z2 x2=sqrt((1+R)/2)*z1 - SQRT((1-R)/2)*z2 The actual formula contained in the cell for x1 in shown on the following screen shot: The actual formula for the cell for x2 is shown in the screen shot below: After transforming all the pairs, one would get the following result: d) Example make R = -.4 -0.02673 0.681382 -0.06902 0.570615 0.393844 0.847474 -0.33777 1.521993 -0.41814 0.911688 0.496584 -0.8235 -0.13166 -0.05555 0.117766 0.042005 0.484845 0.065486 -0.87385 -2.21353 -1.54928 0.243887 -1.87413 0.255269 -1.40779 0.794764 -1.25159 0.778538 -0.31787 0.317802 -0.05689 1.944528 -0.76722 -1.2927 -1.4102 -0.80496 -0.26676 0.471531 -1.40291 -1.29955 -0.19457 0.433227 -0.7492 0.01288 0.169663 -0.84593 -0.17102 0.639447 -0.36619 1.881306 Check -0.36222 Finally we need to adjust the generated values to have the appropriate means and standard deviations. The first investment is supposed to have a mean of .08 and a standard deviation of .02, therefore we create the new variable .08 + .02 * x1 The second investment is supposed to have a mean of .12 and a standard deviation of .05, so we create the new variable .12 + .05 * x2 The final results are shown below: e) Now multiply x1 by .02 and add .08 and multiply x2 by .05 and add .12 0.079465 0.093628 0.07862 0.091412 0.087877 0.096949 0.073245 0.11044 0.071637 0.098234 0.089932 0.06353 0.077367 0.078889 0.082355 0.08084 0.089697 0.08131 0.062523 0.035729 0.049014 0.084878 0.042517 0.085105 0.051844 0.159738 0.05742 0.158927 0.104107 0.13589 0.117156 0.217226 0.081639 0.055365 0.04949 0.079752 0.106662 0.143577 0.049854 0.055023 0.110271 0.141661 0.08254 0.120644 0.128483 0.077704 0.111449 0.151972 0.10169 0.214065 0.077 0.018 0.112 0.046 Check results Average Sd corr= -0.362 As can be seen the simulation results agree reasonably with the theoretical values. I could now simulate what would happen for a 25 year period into the future if I invested $10,000 in each investment. I just need to add one to the simulated returns and cumulate the investment history as shown below: Investment 1 Investment 2 Initial Investment $10,000 $10,000 25 Year Growth $10,795 $11,805 $12,733 $13,897 $15,119 $16,584 $17,799 $19,765 $21,181 $23,262 $25,353 $26,964 $29,050 $31,342 $33,923 $36,666 $39,954 $43,203 $45,904 $47,544 $49,875 $54,108 $56,409 $61,209 $64,383 1.079465 $11,597 1.159738 1.093628 $12,263 1.05742 1.07862 $14,212 1.158927 1.091412 $15,692 1.104107 1.087877 $17,824 1.13589 1.096949 $19,912 1.117156 1.073245 $24,238 1.217226 1.11044 $26,217 1.081639 1.071637 $27,668 1.055365 1.098234 $29,038 1.04949 1.089932 $31,353 1.079752 1.06353 $34,698 1.106662 1.077367 $39,679 1.143577 1.078889 $41,657 1.049854 1.082355 $43,950 1.055023 1.08084 $48,796 1.110271 1.089697 $55,708 1.141661 1.08131 $60,307 1.08254 1.062523 $67,582 1.120644 1.035729 $76,265 1.128483 1.049014 $82,191 1.077704 1.084878 $91,352 1.111449 1.042517 $105,235 1.151972 1.085105 $115,936 1.10169 1.051844 $140,754 1.214065 By simply pressing the F9 key, I would recompute all of the values in the above simulation to get results such as: e) Now multiply x1 by .02 and add .08 and multiply x2 by .05 and add .12 0.090549 0.101857 0.07085 0.060797 0.039147 0.093078 0.067094 0.101997 0.071355 0.097502 0.06629 0.099349 0.084416 0.094967 0.049 0.059694 0.108832 0.109332 0.108323 0.066578 0.075929 0.056609 0.091946 0.056871 0.055641 0.102065 0.088143 0.098587 0.125362 0.1414 0.122713 0.107743 0.073149 0.166681 0.138635 0.166275 0.070526 0.159715 0.110902 0.237066 0.190704 0.09977 0.119577 0.110818 0.131873 0.117236 0.041032 0.121354 0.169959 0.237808 0.079 0.021 0.130 0.047 Check results Average Sd corr= -0.513 And another realization of a 25 year investment as: Investment 1 Investment 2 Initial Investment $10,000 $10,000 25 Year Growth $10,905 $12,016 $12,868 $13,650 $14,184 $15,505 $16,545 $18,232 $19,533 $21,438 $22,859 $25,130 $27,251 $29,839 $31,301 $33,170 $36,780 $40,801 $45,221 $48,231 $51,894 $54,831 $59,873 $63,278 $66,799 1.090549 1.101857 1.07085 1.060797 1.039147 1.093078 1.067094 1.101997 1.071355 1.097502 1.06629 1.099349 1.084416 1.094967 1.049 1.059694 1.108832 1.109332 1.108323 1.066578 1.075929 1.056609 1.091946 1.056871 1.055641 $11,021 $11,992 $13,174 $14,826 $16,922 $18,999 $21,046 $22,585 $26,350 $30,003 $34,992 $37,459 $43,442 $48,260 $59,701 $71,086 $78,178 $87,527 $97,226 $110,048 $122,949 $127,994 $143,527 $167,920 $207,853 1.102065 1.088143 1.098587 1.125362 1.1414 1.122713 1.107743 1.073149 1.166681 1.138635 1.166275 1.070526 1.159715 1.110902 1.237066 1.190704 1.09977 1.119577 1.110818 1.131873 1.117236 1.041032 1.121354 1.169959 1.237808