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Normal and Poisson Distributions

Normal and Poisson Distributions. GTECH 201 Lecture 14. Sampling. Population The entire group of objects about which information is sought Unit Any individual member of the population Sample A part or a subset of the population used to gain information about the whole Sampling Frame

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Normal and Poisson Distributions

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  1. Normal and Poisson Distributions GTECH 201 Lecture 14

  2. Sampling • Population • The entire group of objects about which information is sought • Unit • Any individual member of the population • Sample • A part or a subset of the population used to gain information about the whole • Sampling Frame • The list of units from which the sample is chosen

  3. Simple Random Sampling • A simple random sample of size n is a sample of n units chosen in such a way that every collection of n units from a sampling frame has the same chance of being chosen

  4. Random Sampling in R • In R you can simulate random draws • For example, to pick five numbers at random from the set 1:40, you can> sample(1:40,5)[1] 4 30 28 40 13

  5. Sampling with Replacement • Default in R is ‘without replacement’sample(c("H", "T"), 10, replace=T)[1] "T" "T" "T" "T" "T" "H" "H" "T" "H" "T“prob=c(.9,.1) sample(c("S", "F"), 10, replace=T, prob)

  6. Random Number Tables • A table of random digits is: • A list of 10 digits 0 through 9 having the following properties • The digit in any position in the list has the same chance of being any of of 0 through 9; • The digits in different positions are independent, in that the value of one has no influence on the value of any other • Any pair of digits has the same chance of being any of the 100 possible pairs, i.e., 00,01,02, ..98, 99 • Any triple of digits has the same chance of being any of the 1000 possible triples, i.e., 000, 001, 002, …998, 999

  7. Using Random Number Tables • A health inspector must select a SRS of size 5 from 100 containers of ice cream to check for E. coli contamination • The task is to draw a set of units from the sampling frame • Assign a number to each individual • Label the containers 00, 01,02,…99 • Enter table and read across any line 81486 69487 60513 09297 • 81, 48, 66, 94, 87, 60, 51, 30, 92, 97

  8. Random Number Generation in R • > rnorm(10) • > rnorm(10, mean=7, sd=5) • > rbinom(10, size=20, prob=.5) • We will revisit the meaning of the parameters at the end of today’s session

  9. Combinatorics 1 • Back to draw five out of 40sample(1:40,5) • The probability for any given number is 1/40 in the first sample,, 1/39 in the second, and so on •  P(x ) = 1/(40*39*38*37*36*35) • > 1/prod(40:36)[1] 1.266449e-08 But…

  10. Combinatorics 2 • We don’t care about the order of the five numbers out of 40 • There are 5*4*3*2*1 combinations for the five drawn numbers •  > prod(1:5) / prod(40:36)[1] 1.519738e-06 • Shorthand for the above in > 1/choose(40,5)

  11. Binomial Distribution • Discrete probability distribution • Events have only 2 possible outcomes • binary, yes-no, presence-absence • Computing probability of multiple events or trials • Examples • Probability that x number of people are alive at the age of 65 • Probability of a river reaching flood stage for three consecutive years

  12. When to Apply Binomial • If sample is less than 10% of a large population in which a proportion p have acharacteristic of interest, then the distribution X, the number in the sample with that characteristic, is approximately binomial (n, p), where n is the sample size

  13. Geometric Distribution • Tossing a biased coin until the first head appears pr(H) = p • pr(X = x) = pr(TT…TH) = pr(T1∩ T2 ∩ ..∩ Hx) = (1 – p)x-1p The geometric distribution is the distributionof the number of tosses of a biased coin up toand including the first head

  14. Poisson Distribution • Discrete probability distribution • Named in honor of Simeon Poisson (1781-1840) • What is it used for? • To model the frequency with which a specified event occurs over a period of time • The specified event occurs randomly • Independent of past or future occurrences • Geographers also use this distribution to model how frequently an event occurs across a particular area • We can also examine a data set (of frequency counts in order to determine whether a random distribution exists

  15. Poisson Distribution is used… • To analyze the number of patients arriving at a hospital emergency room between 6 AM and 7 AM on a particular day • Obvious implications for resource allocation • To analyze the number of phone calls per day arriving at a telephone switchboard • To analyze the number of cars using the drive through window at a fast-food restaurant • To analyze hailstorm occurrence in one Canadian province

  16. The Poisson Probability Formula Lambda () is a positive real number (mean frequency) e = 2.718 (mathematical constant) X = 0, 1, 2, 3, ….(frequency of an occurrence) X!= X factorial

  17. Example - 1 • General Hospital, located in Phoenix, keeps records of emergency room traffic. From these records, we find that the number of patients arriving between 10 AM and 12 Noon has a Poisson distribution of with parameter  =6.9 Determine the probability that, on any given day, the number of patients arriving at that emergency room between 10 AM and 12 Noon will be: • Exactly four • At the most two

  18. Exactly four arrivals, x=4

  19. At the most, two arrivals…

  20. Revisiting Mean and Standard Deviation Mean Standard Dev.

  21. What if… We wanted to obtain a table of probabilities for the random variable X, the number of patients arriving between 10AM and 12 Noon?

  22. Discrete versus Continuous Distributions • Moving from individual probabilities to total number of successes or failures • Probability distribution f (x ) = P (X=x) for discrete events: • Probability distribution for continuous events:

  23. Expected Values • Population standard deviationsquare root of the average squared distance of X from the mean m

  24. Expected Values • Mean and Poisson distribution • It can be shown that this adds to l. Thus, for Poisson-distributed populations E(X) = l • The standard deviation sd(X) for Poisson(l) is √l

  25. Probability Density Functions • Moving from the discrete to the continuous • Increasing the frequency of observations results in an ever finer histogram • Total area under the curve = 1

  26. Probability Density Functions • Population means and standard dev’s • mx balances the distribution • The standard deviation is calculated as for discrete density functions

  27. The Normal Distribution

  28. Properties of a Normal Distribution • Continuous Probability Distribution • Symmetrical about a central point • No skewness • Central point in this dataset corresponds to all three measures of central tendency • Also called a Bell Curve • If we accept or assume that our data is normally distributed, then, • We can compute the probability of different outcomes

  29. Properties of a Normal Distribution • Using the symmetrical property of the distribution, we can conclude: • 50 % of values must lie to the right, i.e. they are greater than the mean • 50% of values must lie to the left, i.e. • If the data is normally distributed, the probability values are also normally distributed • The total area under the normal curve represents all (100%) of probable outcomes • What can you say about data values in a normally distributed data set?

  30. Normal Distribution and Standard Deviations

  31. Approximating a Normal Distribution • In reality, • If a variable’s distribution is shaped roughly like a normal curve, • Then the variable approximates a normal distribution • Normal Distribution is determined by • Mean • Standard Deviation • These measures are considered parameters of a Normal Distribution / Normal Curve

  32. Mean = ; Standard Deviation = e = 2.718 ; = 3.142 Equation of a Normal Curve

  33. Areas Within the Normal Curve • For a normally distributed variable, • the percentage of all possible observations that lie within any specified range equals the corresponding area under its associated normal curve expressed as a percentage • A college has an enrollment of 3264 female students. Mean height is 64.4 inches, standard deviation is 2.4 inches • Frequency and relative frequency are presented

  34. Frequency and Relative Frequency Table 0.0735, i.e. 7.35 % of the students are between 67 and 68 inches tall

  35. Relative Frequency Histogram with Normal Curve 0.0735 = the area that has been cross-hatched Shaded area under the normal curve approximates the percentage of students who are between 67-68 inches tall

  36. Standardizing a Normal Variable • Once we have mean and standard deviationof a curve, we know its distribution and the associated normal curve • Percentages for a normally distributed variable are equal to the areas under the associated normal curve • There could be hundreds of different normal curves (one for each choice of mean or std. dev. value • How can we find the areas under a standard normal curve? • A normally distributed variable with a mean of 0 and a standard deviation of 1 is said to have a standard normal distribution

  37. Z Score The variable z is called the standardized version of x, or the standardized variable corresponding to x, with the mean = 0 and standard deviation = 1 Almost all observations in a dataset will lie within three standard deviations to either side of the mean, i.e., almost all possible observations will have z scores between – 3 and + 3

  38. Normal Curve Properties • The total area under the standard normal curve is equal to 1 • The standard normal curve extends infinitely in both directions, approaching but never touching the horizontal axis • Standard normal curve is symmetric about 0 • Most of the area under a standard normal curve lies between –3 and + 3

  39. Using the Standard Normal Table The times taken for runners to complete a local 10 km race is normally distributed with a mean of 61 minutes and a standard deviation of 9 minutes. Let x be the finish time of a randomly selected runner. Find the probability that x > 75 minutes Step 1 Calculate the standard score z = 75-61/9; z = 1.56 Step 2 Determine the probability from the normal table For z of 1.56, p = 0.4406 Step 3 Interpret the result p (x>75) = 0.5 – 0.446 = 0.054 or 5.4% chance

  40. Using the Standard Normal Table • In the previous example, what is the probability that someone finishes in less than 45 minutes? Step 1 Calculate the standard score z = 45-61/9; z = -1.78 Step 2 Determine the probability from the normal table For z of -1.78, area= 0.4625 Step 3 Interpret the result p (x<45) = 1- (0.5+0.4625) = 0.038 or 3.8 % of the runners finish in less than 45 minutes

  41. Three Distributions

  42. Normal Approximations for Discrete Distributions • Approximation of the Binomial • Binomial is used for large n and small p • If p is moderate (not close to 0 or 1), then the Binomial can be approximated by the normal • Rule of thumb: np (1-p) ≥ 10 • Other normal approximations • If X ~ Poisson(l), normal works well for l ≥ 10

  43. Built-in Distributions in • Four fundamental items can be calculated for a statistical distribution: • Density or point probability • Cumulated probability, distribution function • Quantiles • Pseudo-random numbers • In there are functions for each of these

  44. Density of a Normal Distribution • > x = seq(-4, 4, 0.1) • > plot (x, dnorm(x), type="l")

  45. For Discrete Distributions.. • > x = 0:50 • > plot (x, dbinom(x, size=50, prob=.33, type="h")

  46. Cumulative Distribution Functions • Could be graphed but is not very informative • Example • Blood sugar concentration in the US population has a mean of 132 and a standard deviation of 13.How special is a patient with a value 160? • 1 – pnorm(160, mean=132, sd=13)[1] 0.01562612 or 1.5%

  47. Random Number Generation in R • > rnorm(10) • > rnorm(10, mean=7, sd=5) • > rbinom(10, size=20, prob=.5) • Now you understand the parameters…

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