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GrowingKnowing.com © GrowingKnowing.com © 2011

Normal distributions Wake-up! Normal distribution calculations are used constantly in the rest of the course, you must conquer this topic Normal distributions are common There are methods to use normal distributions even if you data does not follow a normal distribution GrowingKnowing.com © 20112

Is my data normal? Most data follows a normal distribution The bulk of the data is in the middle, with a few extremes Intelligence, height, speed,… all follow a normal distribution. Few very tall or short people, but most people are of average height. To tell if data is normal, do a histogram and look at it. Normal distributions are bell-shaped, symmetrical about the mean, with long tails and most data in the middle. Calculate if the data is skewed (review an earlier topic) GrowingKnowing.com © 20113

Normal distributions Normal distributions are continuous where any variable can have an infinite number of values i.e. in binomials our variable had limited possible values but normal distributions allow unlimited decimal points or fractions. 0.1, 0.001, , … If you have unlimited values, the probability of a distribution taking an exact number is zero. 1/infinity = 0 For this reason, problems in normal distributions ask for a probability between a range of values (between, more-than, or less-than questions) GrowingKnowing.com © 20114

How to calculate We do not use a formula to calculate normal distribution probabilities, instead we use a table 1.html 1.html Every normal distribution may be different, but we can use one table for all these distributions by standardizing them. We standardize by creating a z score that measures the number of standard deviations above or below the mean for a value X. GrowingKnowing.com © μ is the mean. σ is standard deviation. x is the value from which you determine probability.

z scores to the right or above the mean are positive z scores to the left or below the mean are negative All probabilities are positive between 0.0 to 1.0 Probabilities above the mean total.5 and below the mean total.5 GrowingKnowing.com © z -z.5

The distribution is symmetrical about the mean 1 standard deviation above the mean is a probability of 34% 1 standard deviation below the mean is also 34% Knowing that the same distance above or below the mean has the same probability allows us to use half the table to measure any probability. If you want –z or +z, we look up only +z because the same distance gives the same probability for +z or -z GrowingKnowing.com © 20117

Half the probabilities are below the mean Knowing each half of the distribution is.5 probability is useful. The table only gives us a probability between the mean and a +z score, but for any other type of problem we add or subtract.5 to obtain the probability we need as the following examples will demonstrate. GrowingKnowing.com © 20118

Normal distribution problems Between Mean and positive z Mean = 10, S.D. (standard deviation) = 2 What is the probability data would fall between 10 and 12? Use =normdist(x,mean, S.D.,1) =normdist(12,10,2,1)-normdist(10,10,2,1) = =.3413 = 34% GrowingKnowing.com © 20119

Between Mean and negative z Mean = 10, S.D. (standard deviation) = 2 What is the probability data would fall between 10 and 8? =normdist(10,10,2,1)-normdist(8,10,2,1) = =.3413 Answer 34% GrowingKnowing.com ©

Between 2 values of X Mean = 9, Standard deviation or S.D. = 3 What is the probability data would fall between 12 and 15? =normdist(15,9,3,1)-normdist(12,9,3,1) = GrowingKnowing.com ©

Between 2 values of X What is probability data would fall between 5 and 11, if the mean = 9 and standard deviation = 2.5? =normdist(11,9,2.5,1)-normdist(5,9,2.5,1) = = GrowingKnowing.com ©

Less-than pattern What is the probability of less than 100 if the mean = 91 and standard deviation = 12.5? =normdist(100,91,12.5,1) = GrowingKnowing.com ©

Less-than pattern What is the probability of less than 79 if the mean = 91 and standard deviation = 12.5? =normdist(79,91,12.5,1) = GrowingKnowing.com ©

More-than pattern What is the probability of more than 63 if mean = 67 and standard deviation = 7.5? =1-normdist(63,67,7.5,1) = = = 70% GrowingKnowing.com ©

More-than pattern What is the probability of more than 99 if mean = 75 and standard deviation = 17.5 =1-normdist(99,75,17.5,1) = = GrowingKnowing.com ©

Summary so far Less than: plug values into function More than: = 1 – function Between: =function – function Use =normdist(x,mean,std deviation, 1) for the function if it is a normal distribution problem. GrowingKnowing.com ©

Go to website and do normal distribution problems GrowingKnowing.com ©

Z to probability Sometimes the question gives you the z value, and asks for the probability. For Excel users, this means you use =normSdist(z) instead of =normdist for the function. The only difference is the S in the middle of normSdist You will know if you are using the wrong function, because =normSdist only asks for the z value =normdist asks for x, mean, std deviation, and cumulative Pay attention to the use of negative signs Subtracting using the negative sign =normsdist - normsdist Negative z value. =normSdist(-z) GrowingKnowing.com ©

What is the probability for the area between z= and z= -0.19? -normSdist(z) =normSdist(-.19) – normSdist(-2.8) =.422 Don’t forget the negative sign for z if z is negative Notice negative z sign in the brackets versus negative sign for subtraction between the functions Notice the larger negative value has a smaller absolute number GrowingKnowing.com ©

What is the probability for area less than z= -0.94? =normsdist(-0.94) =.174 What is probability for area more than z = -.98 ? =1-normsdist(-.98) =.8365 GrowingKnowing.com ©

Go to website and do z to probability problems GrowingKnowing.com ©

Probability to Z We learned to calculate 1.Data (mean, S.D., X)  =normdist  probability 2.Z  =normSdist  probability We can also go backwards probability  =normsinv  Z Probability  =norminv  X This is a crucial item as probability to z is used in many other formulas such as confidence testing, hypothesis testing, and sample size. GrowingKnowing.com ©

Formula If z = (x – mean) / standard deviation, we can use algebra to show x = z(standard deviation) + mean GrowingKnowing.com ©

What is a z score for a probability of less than 81%, mean = 71, standard deviation = 26.98? =normsinv(probability) =normsinv(.81) = We will do many more of this type of question in later chapters of the course. GrowingKnowing.com ©

What is X if the probability is less than 81%, mean = 71, standard deviation = 26.98? =norminv(probability, mean, std deviation) =norminv(.81,71,26.98) = = 95 Use NORMSINV for probability to Z value Use NORMINV for probability to X value GrowingKnowing.com ©

You get a job offer if you can score in the top 20% of our statistics class. What grade would you need if mean = 53, standard deviation is 14? =norminv(.8,53,14) = Answer: You need 65 or higher to be in the top 20% of the class. Notice the value of X dividing the top 20% of the class from the bottom 80% is exactly the same whether you count from 0% up to 80%, or count down from 100% to 80%. Excel is better counting from 0 up, so we use 80%. Whether the question asks for more than 80% or less than 80%, the value of X at that dividing point is the same so X, unlike probability, does not require the =1 – function method. GrowingKnowing.com ©

Go to website, do probability to z questions GrowingKnowing.com ©