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MT2004 Olivier GIMENEZ Telephone: 01334 461827 E-mail: [email protected] Website: http://www.creem.st-and.ac.uk/olivier/OGimenez.html So far, data-driven statistical methods i.e. use data to answer questions in direct ways The rest of the module - from Section 7 - deals with CAPTURING PATTERNS IN THE DATA USING MODELS: Modelling Step ANALYSING THESE MODELS TO ANSWER QUESTIONS: Estimation and Inference Step 7. Basic Normal theory & the Central Limit Theorem 7.1 Basic properties of normal distributions See Section 2.2.2 0.8 f (y) µ=3 = 0,5 0.7 0.6 0.5 µ=0 = 1 0.4 0.3 µ=3 = 1 0.2 µ=1 = 2 0.1 x 0 -4 -3 -2 -1 0 1 2 3 4 5 6 7.1.1 Linear transformation of a normal r.v. Let X be a random variable with mean and variance 2 Let Y = a + b X, then E(Y) = ? V(Y) = ? 7.1.1 Linear transformation of a normal r.v. Let X be a random variable with mean and variance 2 Let Y = a + b X, then E(Y) = a + b E(X) = a + b V(Y) = b2 V(X) = b2 2 7.1.1 Linear transformation of a normal r.v. Now, if X is normally distributed with mean and variance 2, then Y = a + b X is normally distributed too. In other words, any linear combination of a normal distribution is a normal distribution. And more precisely, according to the previous slide, X N(,2) Y N (a + b , b2 2) Demonstration: homework 7.1.1 Linear transformation of a normal r.v. Now, suppose that X N(,2), and consider What is the distribution of Z ? 7.1.1 Linear transformation of a normal r.v. Write and remember that X N(,2) Y = a + b X N (a + b , b2 2) so by identification, we obtain Finally 7.1.1 Linear transformation of a normal r.v. Result: 7.1.1 Linear transformation of a normal r.v. Very useful result for working out probabilities associated with any normal distributions. Idea: transform to the standard normal distribution N(0,1) and use the published tables for probabilities associated with N(0,1). E.g.: z 0.0 0.5 1.0 2.0 2.5 3.0 Pr(Z>z) 0.5000 0.30854 0.15866 0.02275 0.00621 0.00135 (See Table 5 of the K & Y Tables) 7.1.1 Linear transformation of a normal r.v. Example: Calculate the probability that a random variable X N(3,4) takes a value between 4 and 5 7.1.1 Linear transformation of a normal r.v. Example: Calculate the probability that a random variable X N(3,4) takes a value between 4 and 5 We wish to compute Pr(4 X 5). Using the result above, we have that Z = (X-3)/2 N(0,1) So Pr(4 X 5) = Pr(4-3 X-3 5-3) = Pr(1/2 Z 1) Finally Pr(4 X 5) = Pr(Z 1) - Pr(Z 1/2) = (1-0.15866) - (1-0.30854) = 0.14988 7.1.2 Sums of independent normal random variables Sums of (normal) r.v's occur frequently in statistical theory (e.g. mean, variance...). Distribution? If X1, X2 independent with Xi N(i,i2) i=1,2, then Extension: X1,...,Xn independent r.v's with Xi N(i,i2) i=1,...,n and a1,...,an constants, then 7.1.2 Sums of independent normal random variables 7.1.2 Sums of independent normal random variables 7.1.2 Sums of independent normal random variables 7.2 The Central Limit Theorem We've just seen that the mean of n independent identically normally distributed r.v's is itself normally distributed. The Central Limit Theorem (CLT) states that the mean of n i.i.d. r.v's from any distribution is approximately normally distributed for large enough n. 7.2 The Central Limit Theorem The Central Limit Theorem (CLT) states that the mean of n i.i.d. r.v's from any distribution is approximately normally distributed for large enough n. 7.2 The Central Limit Theorem The Central Limit Theorem (CLT) states that the mean of n i.i.d. r.v's from any distribution is approximately normally distributed for large enough n. 7.2 The Central Limit Theorem Example: A bridge can hold at most 400 vehicles if they are bumperto-bumper and stationary. The mean weight of vehicles using the bridge is 2.5 tonnes with a standard deviation of 2.0 tonnes. What is the probability that the maximum design load of 1100 tonnes will be exceeded in a traffic jam? 7.2 The Central Limit Theorem Example: A bridge can hold at most 400 vehicles if they are bumper-to-bumper and stationary. The mean weight of vehicles using the bridge is 2.5 tonnes with a standard deviation of 2.0 tonnes. What is the probability that the maximum design load of 1100 tonnes will be exceeded in a traffic jam? Let Xi be the weight of a vehicle, i=1,...n. Here, we have that n = 400, = 2.5t and = 2.0t. The probability that the maximum design load of 1100 tonnes will be exceeded in a traffic jam is given by Pr(iXi > 1100). We'd like to use the CLT: X1,...,Xn i.i.d. r.v's with mean and variance 2: 7.2 The Central Limit Theorem Example: A bridge can hold at most 400 vehicles if they are bumper-to-bumper and stationary. The mean weight of vehicles using the bridge is 2.5 tonnes with a standard deviation of 2.0 tonnes. What is the probability that the maximum design load of 1100 tonnes will be exceeded in a traffic jam? How to use Tables? Table of the Standard Normal Distribution values inside the table = areas under Z N(0,1) between - and z i.e. (z) = P(Z z) Example 1: to determine (1.96)=P(Z1.96), i.e. the area under the curve between - and 1.96, look in the intersecting cell for the row labelled 1.90 and the column labelled 0.06. The area under the curve is 0.975. Example 2: Find z such as (z) = 0.95. P(Z1.64)=0.9495 and P(Z1.65)=0.9505 so that z = 1.645. Example 3: (-1.23) = 1-(1.23)=1-.8907=0.1093 7.3 Approximating other distributions by normal distributions The CLT also provides the justification for approximating several other distributions by a normal distribution. We consider two examples, the Binomial and the Poisson distributions. The Binomial probability distribution is: It becomes hard to evaluate it for large n as the factorials in the binomials coefficient 'explode'. However, the CLT can be used to overcome this problem 7.3 Approximating other distributions by normal distributions We first note that if X Bin(n,p), then X can be written as a sum of n independent binomials r.v's: X = X1 + ... + Xn, where Xi Bin(1,p). Each Xi has mean p and variance p(1-p). Thus the CLT implies that Alternatively: In real life, the approximation will be good enough when 7.3 Approximating other distributions by normal distributions X Bin(n,p); X = X1 + ... + Xn, where Xi Bin(1,p); each Xi has mean p and variance p(1-p). Alternatively: Example: The probability of annual survival of a bird species is 0.4. Suppose we are studying a population of n = 200 individuals. What is the probability that less than 50% of the population survives the current year. 7.3 Approximating other distributions by normal distributions Example: The probability of annual survival of a bird species is 0.4. Suppose we are studying a population of n = 200 individuals. What is the probability that less than 50% of the population survives the current year. Let Xi be the random variable 'individual i survives the year', we have that Bin(1,0.4); each Xi has mean 0.4 and variance 0.4(1-0.4). Then X = X1 + ... + Xn is the total of surviving individuals, X bin(200,0.4). As: Via the CLT: So that 7.3 Approximating other distributions by normal distributions Example: The probability of annual survival of a bird species is 0.4. Suppose we are studying a population of n = 200 individuals. What is the probability that less than 50% of the population survives the current year. So that with Z N(0,1). Using tables for the standard normal distribution, we have that P(Z<3)=0.9987. Without invoking the CLT, we would need to compute P(X<100) = P(X=0) + P(X=1) + ... + P(X=99) 7.3 Approximating other distributions by normal distributions The Poisson probability function is: It becomes hard to evaluate it for high values of as x gets huge. However, the CLT can be used to overcome this problem. We note first that if X1, X2 independent with Xi Pois(i) i = 1,2 then X1 + X2 Pois(1+2) (to be proved in Honours) 7.3 Approximating other distributions by normal distributions We note that if X Pois(), then X can be written as a sum of n independent Poisson r.v's: X = X1 + ... + Xn, where Xi Pois(/n). Each Xi has mean /n and variance /n (mean = variance: homework) Thus the CLT implies that So that 7.3 Approximating other distributions by normal distributions Example: Find the probability that a Poisson distributed r.v. with mean 25 takes a value in the range 26 to 30. 7.3 Approximating other distributions by normal distributions Example: Find the probability that a Poisson distributed r.v. with mean 25 takes a value in the range 26 to 30. If X Pois(25), we need to calculate P(26 X 30) The CLT tells us that Using tables for the standard normal distribution, we have that P(26 X 30) = P(0.2 Z 1) = P(Z 1) - P(Z 0.2) = 0.8413 – 0.5793 = 0.262 8. Practical Applications of Normal Distributions Why are normal distributions so important? 1 – The CLT shows that sums of i.i.d r.v’s tend towards normality, even if the r.v’s are non-normal 2 – Many data sets for which a normal distribution provides a good model (describe adequately the data): heights of people, IQ scores… 3 – Easy to work with mathematically (integrals, tables…) 4 – Statistical procedures based on normality assumption are often insensitive to small violations of the assumption (ANOVA e.g., see future section) 5 – Non-normal distributions can be transformed to approximate normality 8.1 Testing for normality Before using the normal distribution as a model of data to perform test about the mean of a population e.g., we need to decide whether or not the random sample under investigation could have been drawn from a normal distribution. There a analytical tests (Pearson, Kolmogorow…) but we will focus on a graphical method here. We won’t be able to prove normality, but only fail to reject the hypothesis that the data come from the normal distribution (hypothesis testing philosophy, finite random sample) 8.1 Testing for normality First idea: use a histogram, and compare with what we would expect for a normal distribution, i.e. bell-shaped, symmetric with a single peak (unimodal) … 8.1 Testing for normality Histograms of random samples (n=30) from N(3,var=25) vs Density curve of N(xi/n,s2) Difficult to conclude for normality, because of variability 8.1 Testing for normality Second idea: Remember that any normal r.v. is a linear transformation of a standard normal r.v. So if y1,…,yn is a random sample from any normal r.v. (N(,2) say) and z1,…,zn a random sample from a N(0,1) Then plot the sorted y values against the sorted z values We would get something close to a straight line because Y=+Z 8.1 Testing for normality Plots of random samples (n=30) from N(3,var=25) against N(0,1) Difficult to conclude for normality, because of variability 8.1 Testing for normality Third idea: to overcome the problem of variability, use an ‘idealised’/theoretical average sample from N(0,1), the normal scores 8.1 Testing for normality If Z N(0,1), by definition of the cumulative distribution function/(lower) quantile, we have that: P(Z z10% quantile) = Φ(z10% quantile) = 0.10 P(Z z20% quantile) = Φ(z20% quantile) = 0.20 … P(Z z100% quantile) = Φ(z100% quantile) = 1.00 Meaning that, on average, we expect 10% of the data points to lie below the 10% quantile of the c.d.f., 20% below the 20% quantile, …, and 100% below the 100% quantile. 8.1 Testing for normality Consider a sample of 10 points e.g. from N(0,1) We’ve got 10 probability intervals corresponding to the quantiles: [0,0.1], [0.1,0.2], [0.2,0.3], [0.3,0.4], [0.4,0.5] [0.5,0.6], [0.6,0.7], [0.7,0.8], [0.8,0.9], [0.9,1.0] For convenience, consider the mid-point of each interval (i-0.5)/10, i=1,…,10 The normal scores are obtained by computing Φ-1((i0.5)/10), i=1,…,10, where is the c.d.f. of the N(0,1) 8.1 Testing for normality Consider a sample of 10 points e.g. from N(0,1) 0.05 Φ-1((1-0.5)/10) = Φ-1(0.05) = -1.645 8.1 Testing for normality Consider a sample of 10 points e.g. from N(0,1) 0.15 Φ-1((2-0.5)/10) = Φ-1(0.15) = -1.036 8.1 Testing for normality Consider a sample of 10 points e.g. from N(0,1) Finally… 8.1 Testing for normality Idea: Plot the observed y sorted values against the normal scores, then check visually for linearity Example: Early in the 20th century, a Colonel L.A. Waddell collected 32 skulls from Tibet. He collected 2 groups: 17 from graves on Sikkim and 15 from a battlefield near Lhasa. Here are maximum skull length measurements (in mm) for the Lhasa group: 182, 180, 191, 184, 181, 173, 189, 175, 196, 200, 185, 174, 195, 197, 182. Before doing anything with these data (e.g. testing for a difference in the mean skull length between the 2 groups), we need to check for normality first. Example Sample quantiles 182 180 191 184 181 173 189 175 196 200 185 174 195 197 182 Example Sample Sorted sample quantiles quantiles 182 173 180 174 191 175 184 180 181 181 173 182 189 182 175 184 196 185 200 189 185 191 174 195 195 196 197 197 182 200 Example Sample Sorted sample i = 1,…,15 (i-0.5)/15 quantiles quantiles 182 173 1 0.03 180 174 2 0.10 191 175 3 0.17 184 180 4 0.23 181 181 5 0.30 173 182 6 0.37 189 182 7 0.43 175 184 8 0.50 196 185 9 0.57 200 189 10 0.63 185 191 11 0.70 174 195 12 0.77 195 196 13 0.83 197 197 14 0.90 182 200 15 0.97 Example Sample Sorted sample i = 1,…,15 (i-0.5)/15 Φ-1((i-0.5)/15) quantiles quantiles 182 173 1 0.03 -1.83 180 174 2 0.10 -1.28 191 175 3 0.17 -0.97 184 180 4 0.23 -0.73 181 181 5 0.30 -0.52 173 182 6 0.37 -0.34 189 182 7 0.43 -0.17 175 184 8 0.50 0.00 196 185 9 0.57 0.17 200 189 10 0.63 0.34 185 191 11 0.70 0.52 174 195 12 0.77 0.73 195 196 13 0.83 0.97 197 197 14 0.90 1.28 182 200 15 0.97 1.83 x=seq(1,15) Example y=qnorm((x-0.5)/15)) # calculates Φ-1((i-0.5)/15), theoretical quantiles o=c(173,174,175,180,181,182,182,184,185,189,191,195,196,197,200) plot(y,o,xlab="Theoretical quantiles",ylab="Sample quantiles") Example Alternatively, use R command qqnorm skull.lhasa = c(182,180,191,184,181,173,189,175,196,200,185,174,195,197,182) qqnorm(skull.lhasa) Example To help check linearity of a normal scores plot, add a straight line. ‘qqline’ adds a line to a normal quantile-quantile plot which passes through the first and third quartiles. qqnorm(skull.lhasa) qqline(skull.lhasa) Further examples Sample from a distribution with more probability in the and centre of the distribution and less in the ‘shoulders’ than the normal distribution Further examples Sample from a positively skewed distribution Further examples Sample from a negatively skewed distribution Further examples Sample from a normal distribution 8.2 Using a normal distribution as a model when the variance 2 is known (z-test) We wish to learn something about a population on the basis of a random sample from that population Why? Because it is often impractical to work with the whole population, so we test hypotheses about the population on the basis of a sample drawn from it We assume here that the population may be modelled using a normal distribution with unknown mean but known variance 2 For example, suppose one wants to investigate IQ of students at StAndrews. As you cannot study the whole population, you need to measure the IQ’s of a random sample of students. In this example, we could ask what the average IQ of StAndrews students is, or test the hypothesis that it is greater than some value 8.2.1 Hypothesis testing: parametric approach General approach for hypothesis testing: 1 – Define a null hypothesis H0 and an alternative hypothesis H1 2 – Choose a test statistic which will distinguish between H0 and H1 by taking ‘extreme’ values if H1 is true, and moderate values otherwise 3 – Find the distribution of the test statistic under H0 4 – Using this distribution, determine the probability of obtaining a test statistic at least as ‘extreme’ as the one observed under H0. This is the p-value of the data under the test 5 – Conclude: a very low p-value suggests that H0 is false, otherwise we cannot reject H0 8.2.1 Hypothesis testing: parametric approach And in the particular case of a normally distributed population with known variance? Define x1,…,xn a set of independent observations from a population which can be modelled by a normal distribution with unknown mean and known variance 2. Using these observations, we are able to test hypotheses about the mean of the whole population, e.g. 1 –H0: = 0 against H1: 0 2 – A ‘good’ test statistic is the mean of the observations xi/n which will tend to be close to 0 under H0 but further away under H1 8.2.1 Hypothesis testing: parametric approach 1 –H0: = 0 against H1: 0 - TWO-SIDED TEST 2 – A ‘good’ test statistic is the mean of the observations xi/n which will tend to be close to 0 under H0 but further away under H1 3 – Distribution of the test statistic under H0 ? 8.2.1 Hypothesis testing: parametric approach 1 –H0: = 0 against H1: 0 - TWO-SIDED TEST 2 – A ‘good’ test statistic is the mean of the observations xi/n which will tend to be close to 0 under H0 but further away under H1 3 – Distribution of the test statistic under H0 ? 8.2.1 Hypothesis testing: parametric approach 3 – Distribution of the test statistic under H0 ? 8.2.1 Hypothesis testing: parametric approach 3 – The distribution of the test statistic under H0 is 4 - We use a significance level of = 5%, and extreme values on either side of the mean are of interest since H1 does not distinguish between them Z -z/2 z/2 The appropriate range of values is P(-z/2 Z z/2) = 1-=0.95 i.e P(Z z/2) - P(Z - z/2) = 2P(Z z/2) - 1 = 0.95 P(Z z/2) = 0.975 so z/2 = 1.96 8.2.1 Hypothesis testing: parametric approach 4 - At the significance level = 5%, the region of acceptance of H0 is [-1.96,1.96] 5 - So if the observed value of the test statistic is outside this region, we reject H0, otherwise we cannot. ALTERNATIVELY, 4 - We can calculate what proportion of values are at least as improbable as the observed value under H0, i.e. the p-value. In other words, we want to compute the p-value P(Z -zobs or Z zobs) = 1-P(Z zobs)+1-P(Z zobs) = 2(1-(zobs)) 5 - Finally, if the p-value is < 0.05, we reject H0 (outsite the acceptance region), otherwise we cannot. 8.2.1 Hypothesis testing: parametric approach H0: = 0 against H1: > 0 - ONE-SIDED TEST z P(Z z) = 1- = 0.95 so z = 1.645 and accept H0 ALTERNATIVELY P(Z zobs) = 1-(zobs) and reject H0 if < 0.05 8.2.1 Hypothesis testing: parametric approach H0: = 0 against H1: < 0 - ONE-SIDED TEST -z P(Z z) = 1- = 0.95 so z = -1.645 and accept H0 ALTERNATIVELY P(Z zobs) = (zobs) and reject H0 if < 0.05 8.2.1 Hypothesis testing: parametric approach Example - Tutorial 4, Question 5a Test at the 5% level the hypothesis that the mean spinning timehas not been affected by lubrification, against the alternative that it has been increased. Report the p-value. Test H0:=150 against H1:>150. We have that n=5 and Xi/n=162. Hence: We thus reject H0 at the 5% significance level. The p-value is 1-(2.68) = 1- 0.9963 = 0.0037 << 0.05 so we reject H0 8.2.2 The power of a test There are two types of error that can be made when hypothesis testing: DECISION REALITY Accept H0 Reject H0 H0 true OK Type I error H0 false Type II error OK Type I error: Reject H0 when it is true; P(type I error) = Type II error: Accept H0 when it is false; P(type II error) = ? We'd like to minimize the two types of error, but the problem is that when decreases, P(type II error) increases and vice-versa. So set up to a fixed value, and try to minimize P(type II error) 8.2.2 The power of a test Definition: The power of a test is the probability of rejecting H0 when it is false. P(type II error) = P(Accept H0 | H0 false) so power = 1 - P(type II error). So once is fixed, we'll do our best to increase the power of the test. Example: Consider H0: = 0 vs H1: > 0 8.2.2 The power of a test 8.2.2 The power of a test Note: If n increases, (...) decreases and the power increases; in other words, for a given , the power increases as the sample size increases, so your ability to detect an alternative hypothesis 8.2.3 Confidence intervals You have already calculated confidence intervals by computerintensive methods. Here, we'll do it analytically. An x% confidence interval for a parameter ( here) is an interval having probability x% of including the true value of this parameter. The parameter being estimated is a fixed quantity, but the interval is random. In other words, it means that x% of intervals calculated in the same way for similar samples will include the true value. Regarding the example of n observations from a normal population with known variance 2 8.2.3 Confidence intervals Example of n observations from a normal population with known variance 2 8.2.3 Confidence intervals Example: The wavelengths of light pulses from a semiconductor laser are approximately normally distributed, with variance calculated by theory to be 100nm2. The mean wavelength for individual lasers varies. Measurements of 100 pulses from a laser give an average wavelength of 598nm. Find a 95% confidence interval for the mean wavelength of the laser. 8.2.3 Confidence intervals Example: The wavelengths of light pulses from a semiconductor laser are approximately normally distributed, with variance calculated by theory to be 100nm2. The mean wavelength for individual lasers varies. Measurements of 100 pulses from a laser give an average wavelength of 598nm. Find a 95% confidence interval for the mean wavelength of the laser. 9. Distributions derived from normal distributions In the previous section, we assume that the variance of the whole population was known Unlikely to be the case… So we need methods to deal with both mean and variance of the whole population are unknown To develop the theory underlying such methods, we need to introduce first some other distributions but related to the normal distribution Namely, the 2, t and F distributions 9.1 2 distributions 9.1 2 distributions 9.1 2 distributions Upper quantile = value above which some specified proportion of the area of a p.d.f. lies 9.1 2 distributions The 5% upper quantile of a 25 is x such Pr(25 x) = 0.05 9.1 2 distributions The 5% upper quantile of a 25 is x such Pr(25 x) = 0.05 or alternatively Pr(25 x) = 0.95 i.e. the lower 95% quantile 9.1 2 distributions Pr(25 x) = 0.95 (the lower 95% quantile) is obtained using the R command: > qchisq(0.95,5) # cumulative d. f. [1] 11.07050 9.1 2 distributions Example: Suppose that X, Y, and Z are coordinates in 3dimensional space which are independently distributed as N(0,1), with all measurements in cm. What is the probability that the point (X,Y,Z) lies more than 3 cm from the origin? 9.1 2 distributions Example: Suppose that X, Y, and Z are coordinates in 3-dimensional space which are independently distributed as N(0,1), with all measurements in cm. What is the probability that the point (X,Y,Z) lies more than 3 cm from the origin? 9.1 2 distributions Example: Suppose that X, Y, and Z are coordinates in 3-dimensional space which are independently distributed as N(0,1), with all measurements in cm. What is the probability that the point (X,Y,Z) lies more than 3 cm from the origin? 9.1 2 distributions 9.1 2 distributions 9.1 2 distributions 9.2 The F distributions 9.2 The F distributions The 5% upper quantile of a Fdf1,df2 is x such Pr(Fdf1,df2 x) = 0.05 Use Tables or R command qf(0.95,df1,df2) (lower 95% quantile) 9.2 The F distributions So if we have a table with the upper quantiles, we can also get the lower quantiles as follows. Remember that: Upper quantile = value above which some specified proportion of the area of a p.d.f. lies Lower quantile = value below which some specified proportion of the area of a p.d.f. lies 9.2 The F distributions So if we have a table with the upper quantiles, we can also get the lower quantiles as follows. 9.2 The F distributions So if we have a table with the upper quantiles, we can also get the lower quantiles as follows. i.e. upper (1-) quantile of Fn,k or lower quantile of Fn,k is the inverse of the upper quantile of the Fk,n 9.2 The F distributions Example: Given that F3,2;0.025 = 39.17, find F2,3;0.975 (i.e. lower 0.025 = 1-0.975 quantile of the F2,3 distribution) F2,3;0.975 = 1/ F3,2;0.025 = 1/39.17 = 0.0255 9.2 The F distributions Example: Given that F3,2;0.025 = 39.17, find F2,3;0.975 (i.e. lower 0.025 = 1-0.975 quantile of the F2,3 distribution) F2,3;0.975 = 1/ F3,2;0.025 = 1/39.17 = 0.0255 R commands > par(mfrow=c(2,1)) > plot(x,df(x,2,3),xlab="",ylab="",type='l') > title("pdf F(2,3)") > plot(x,df(x,3,2),xlab="",ylab="",type='l') > title("pdf F(3,2)") 9.3 The t distributions 9.3 The t distributions The shape of the p.d.f. of tn depends on n 9.3 The t distributions Looks like a normal distribution, but more of the probability is in the centre and the tails, see the graph for t1 e.g. (top left) 9.3 The t distributions 9.3 The t distributions tn; is the upper quantile of the t distribution with n degrees of freedom 9.3 The t distributions Use tables or R, e.g. qt(0.95,30) (=1.859548) gives the lower 95% quantile of the t distribution with 8 degrees of freedom (upper 5% quantile) (qt(0.95,5000) = 1.645158…) 10 Using t distributions To derive the distribution of the statistic testing hypotheses about the mean of a normal population with unknown variance, we need a key result on the joint distribution of the sample mean and the sample variance Remember that: 10 Using t distributions To derive the distribution of the statistic testing hypotheses about the mean of a normal population with unknown variance, we need a key result on the joint distribution of the sample mean and the sample variance 10 Using t distributions The quantity T depends on the population mean but not on the unknown variance 2. So this statistic will be useful to test hypotheses about the mean population of normal populations with unknown variance 10.2 One-sample t-tests and confidence intervals One sample t-tests: 39 observations on pulse rates (heart beats/minute) of Indigenous Peruvians had sample mean 70.31 and sample variance 90.219. We assume normality. Question: at the 1% significance level, could this data set be considered as a random sample from a population with mean 75. In other words (Step 1 of hypothesis testing strategy): H0: = 75 against H1 75 Your turn. Perform step 2 (find a ‘good test statistic’) and step 3 (derive its distribution) 10.2 One-sample t-tests and confidence intervals One sample t-tests: 39 observations on pulse rates (heart beats/minute) of Indigenous Peruvians had sample mean 70.31 and sample variance 90.219. Step 1: H0: = 75 against H1 75 Step 2: Xi/n - 0 is a good candidate since it takes ‘extreme’ values if H1 is true, and moderate values if H0 is true. Step 4: it’s a 2-sided test, so we will reject H0 if tobs –tn-1;/2 or tobs tn-1;/2 (graphical representation) 10.2 One-sample t-tests and confidence intervals One sample t-tests: 39 observations on pulse rates (heart beats/minute) of Indigenous Peruvians had sample mean 70.31 and sample variance 90.219. Step 1: H0: = 75 against H1 75 Step 2: Xi/n - 0 is a good candidate since it takes ‘extreme’ values if H1 is true, and moderate values if H0 is true. If one-sided test, H1: <0, we reject if tobs –tn-1; If one-sided test, H1: >0, we reject if tobs tn-1; 10.2 One-sample t-tests and confidence intervals One sample t-tests: 39 observations on pulse rates (heart beats/minute) of Indigenous Peruvians had sample mean 70.31 and sample variance 90.219. So we will reject if tobs 2.7045 or if tobs -2.7045 P-value using R: > 2*pt(tobs,38) # (tobs<0 so need to double the c.d.f. of tobs – 2-sided test) > 0.003799049 10.2 One-sample t-tests and confidence intervals Confidence interval: 39 observations on pulse rates (heart beats/minute) of Indigenous Peruvians had sample mean 70.31 and sample variance 90.219. We’d like to build up a 99% confidence interval for , we’re looking for values of for which we would accept H0 We know that: 10.2 One-sample t-tests and confidence intervals Confidence interval: 39 observations on pulse rates (heart beats/minute) of Indigenous Peruvians had sample mean 70.31 and sample variance 90.219. So we would accept any value of such that 75 is outside the confidence interval, so we would reject H0 at the 1% significance level 10.2 One-sample t-tests and confidence intervals Confidence interval: With R, a 95% confidence interval is obtained as follows: > cil = 70.31 + qt(0.975,38)*90.219/sqrt{39} > cil = 70.31 - qt(0.975,38)*90.219/sqrt{39} > c(cil,ciu) > [1] 67.23099 73.38901 And the 99% confidence interval is obtained as > c(70.31 + qt(0.995,38)*90.219/sqrt{39}, 70.31 + qt(0.995,38)*90.219/sqrt{39} 10.3 Paired t-tests Consider two samples of observations (Xi,Yi) Consider the case: the two measurements (Xi,Yi) are made on the same unit i We wish to test if the two population means are equal Example: measurement of left and right wing length of birds Should not be treated as independent!!!!! Obviously, length of left wing and length of right wing both tend to be large for large birds: dependent measurements Idea: work with the differences between the two measurement on each unit, i.e. Xi-Yi, in order to go back to a one-sample t-test e.g. 10.3 Paired t-tests Example: corneal thickness in microns for both eyes of patients who have glaucoma in one eye Glaucoma 488 478 480 426 440 410 458 460 Healthy 484 478 492 444 436 398 464 476 Obviously, the corneal thickness is likely to be similar in the two eyes of any patient – dependent observations Consider di = glaucomai – healthyi. We will assume that this new random sample is drawn from a normal distribution N(d,2), and we wish to test: H0: d=0 vs H1: d0 di = -32 ; di2 = 936 and 10.3 Paired t-tests Example: corneal thickness in microns for both eyes of patients who have glaucoma in one eye H0: d=0 vs H1: d0 di = -32 ; di2 = 936, s2 = 115.43 and t7;0.025 = 2.3646 (see Tables) tobs > - t7;0.025 and tobs < t7;0.025 meaning that tobs is in the region of acceptance of H0 t -t/2 t/2 10.3 Paired t-tests Example: corneal thickness in microns for both eyes of patients who have glaucoma in one eye H0: d=0 vs H1: d0 di = -32 ; di2 = 936, s2 = 115.43 and t7;0.025 = 2.3646 (see Tables) tobs > - t7;0.025 and tobs < t7;0.025 meaning that tobs is in the region of acceptance of H0 At the 5% significance level, we fail to reject H0, so there is apparently no difference between the good eye and the diseased eye 10.4 Two-sample t-tests Now, we want to deal with two sets of data and compare, e.g., their means We consider that the two random samples are drawn from normal distributions with unknown but same variances. More formally 10.4 Two-sample t-tests We consider that the two random samples are drawn from normal distributions with unknown but same variances. We know that the distributions of the sample means of the two samples are: so that (using results on sums of normal r.v’s) As usual, we’d like to relate this distribution to a standard normal random variable… 10.4 Two-sample t-tests We consider that the two random samples are drawn from normal distributions with unknown but same variances. We have that: Obviously, if we assume that is known, we can test hypotheses about the difference in means between the two groups (see the onesample case – z-test). But we assume that is unknown. So we need to do again what we’ve done for the t-test (one-sample test about the mean with unknown variance). 10.4 Two-sample t-tests More precisely, first find the distribution of: We note that: where 10.4 Two-sample t-tests Similarly, we have that: where 10.4 Two-sample t-tests Putting the two latter results together, we have that, using the additivity of 2 r.v’s: Note that the above quantity can be written as where: is called the pooled sample variance. 10.4 Two-sample t-tests Remember that we have: 10.4 Two-sample t-tests So let the test statistic T be which is actually the ratio of following distributions: i.e. a t distribution with n+m-2 degrees of freedom! 10.4 Two-sample t-tests Now we can see that T can be re-written as follows: or: The quantity T depends on the population means X and Y but not on the unknown variance 2. This statistic is thus useful to test hypotheses about the difference in means between the 2 populations. 10.4 Two-sample t-tests Example: Consider two random samples from 2 normal distributions: x = 11 10 14 12 13 and y = 8 3 4 9 Test the hypothesis that the two population means are equal against the alternative hypothesis that they are not. 10.4 Two-sample t-tests Example: Consider two random samples from 2 normal distributions: x = 11 10 14 12 13 and y = 8 3 4 9 Test the hypothesis that the two population means are equal against the alternative hypothesis that they are not. We wish to test H0: X = Y against H1: X Y s2 = (10 + 26) / 7 = 36 / 7, and xi/n = 12, yj/m = 6 There is evidence to reject H0 at the 5% significance level. In other words, the two population means are different 10.4 Two-sample t-tests Using R: > x=c(11,10,14,12,13) > y=c(8,3,4,9) > # pooled standard deviation: > pooledsd=sqrt(((5-1)*var(x)+(4-1)*var(y))/(5+4-2)) > # observed value of the test statistic: > tobs=(mean(x)-mean(y))/(pooledsd*sqrt(1/5+1/4)) > tobs [1] 3.944053 > # p-value of the 2-sided test > 2*(1-pt(tobs,5+4-2)) [1] 0.005574311 10.5 Testing equality of variances Motivation: to apply the two-sample t-test of Section 10.4, we need to check that the two samples come from normal distributions with same variance Consider X1,…,Xn and Y1,…,Ym two random samples drawn from normal distributions. We also assume independence. Let 2X and 2Y be the population variances of the two random samples. Remember the strategy of hypothesis testing: Step 1: We wish to test H0: 2X = 2Y vs H1: 2X 2Y Step 2: We need to find a ‘good’ test statistic, i.e. a function of the data that takes ‘extreme’ values if H1 is true, and moderate values if H0 is true. 10.5 Testing equality of variances We’ve seen that: So what about the ratio: ????? 10.5 Testing equality of variances If you work it out a little bit, you get under H0: 2X = 2Y = 2, the following test statistic: Under the null hypothesis the terms involving 2 cancel. If the alternative hypothesis is true, i.e. if 2X 2Y, then the value of the test statistic above will be small or large depending on whether 2X < 2Y or 2X > 2Y. 10.5 Testing equality of variances Step 3: Now we need the distribution of this test statistic under H0. By definition of an F distribution, we have that: that is: or using the main property of F distributions. 10.5 Testing equality of variances Step 4: We will reject the null hypothesis if the observed value of this test statistic is greater than the upper quantile of the appropriate F distribution (using the Tables or program R). Note that it is enough to compare the larger of the two test statistics describes on the previous slide with the upper quantile of the appropriate distribution. Example: consider two examples, one of size 11 and the other of size 16 from two normal distributions. The sample variance of the first is 20 and the sample variance of the second is 30. At the 5% level, is there evidence to reject the hypothesis that the two populations have the same variance? Note that F15,10;0.025=3.522 10.5 Testing equality of variances Example: consider two examples, one of size 11 and the other of size 16 from two normal distributions. The sample variance of the first is 20 and the sample variance of the second is 30. At the 5% level, is there evidence to reject the hypothesis that the two populations have the same variance? Note that F15,10;0.025=3.522 1) We wish to test 2X = 2Y vs H1: 2X 2Y , where X has sample size and Y has sample size 16, with respectively s2X=20 and s2Y=30. This is a test of equality of variances. 2) To perform it, we calculate the observed value of the test statistic (the largest one): fobs = s2Y/s2X = 30/20 = 1.5 3) We need to compare this observed value to the 2.5% upper quantile of an F distribution with 15 and 10 degrees of freedom, i.e. F15,10;0.025 which is equal to 3.522 10.5 Testing equality of variances Example: consider two examples, one of size 11 and the other of size 16 from two normal distributions. The sample variance of the first is 20 and the sample variance of the second is 30. At the 5% level, is there evidence to reject the hypothesis that the two populations have the same variance? Note that F15,10;0.025 = 3.522 4) fobs = 1.5 < F15,10;0.025 = 3.522 5) So there is no evidence to reject the null hypothesis. We fail to reject the equality of variances. Note: We might now consider testing whether the two population means are different. Sections 10.4 and 10.5 might be useful for Prac3 (two random samples from the same normal distribution?) Examples Example 1: The data are the number of moths caught during the night by 11 traps of one style and 8 traps of a second style. Trap type 1: 41 34 33 36 40 25 31 37 34 30 38 Trap type 2: 52 57 62 55 64 57 56 55 We assume that the two samples of measurements are taken at random from a normal population, and we ask if the variances of the two populations are equal (5% significance level). Examples Solution - Example 1: We wish to test H0 12 = 22 vs H1: 12 22 (test of equality of variances) We have that n1 = 11, n2 = 8, so 1=10 and 2=7 s12=21.87 and s22=15.36 So Fobs = s12/s22 = 21.87/15.36=1.42 F10,7;0.025=4.76 Fobs<F10,7;0.025, therefore we cannot reject H0 at the 5% level. Examples Example 2: The data are human blood-clotting times (in minutes) of individuals given one of two different drugs. Given drug B: 8.8 8.4 7.9 8.7 9.1 9.6 Given drug G: 9.9 9.0 11.1 9.6 8.7 10.4 9.5 We assume that the two samples of measurements are taken at random from a normal population, and we ask if blood of persons treated with drug B has the same mean clotting time as does blood from persons treated with drug G (5% significance level). Examples Solution - Example 2: We wish to test H0 1 = 2 vs H1: 1 2 (test of equality of means) We have that n1 = 6, n2 = 7, (n1-1)s12=1.6950, (n2-1)s22=4.0171. So s2 = (1.6950+4.0171)/(6+7-2)=0.5193 We get tobs = (8.75-9.74)/(0.40)=-2.475 t11;0.025=2.201 tobs<-t11;0.025, therefore reject H0 at the 5% level. The p-value of this test is P(T<-2.475)=1-F(2.475) where F cdf of the t-distribution, and 1-F(2.475) = P(T>2.475) which lies between 0.025 and 0.01. We double those values (2-sided test), and we find that the p-value is between 0.05 and 0.02, so we reject H0 at the 5% significance level. Examples Example 3: The data are weight changes of humans, tabulated after administration of a drug proposed to result in weight loss. Each weight change (in kg) is the weight after minus the weight before drug administration. Data: 0.2 -0.5 -1.3 -1.6 -0.7 0.4 -0.1 0.0 -0.6 -1.1 -1.2 -0.8 We assume that the sample of measurements is taken at random from a normal population, and we ask whether a weight loss occurs after the drug is taken (5% significance level). Examples Solution - Example 3: We wish to test H0 1 = 0 vs H1: 1 < 0 (test of equality of means) We have that n = 12, s2=0.4008, Xi/n=-0.61. We get tobs = (-0.61-0)/(0.4008/12)=-0.61/0.18=-3.389 t11;0. 05=1.7959 tobs<-t11;0.05, therefore reject H0 at the 5% level. The p-value of this test is P(T<-3.389)=1-F(3.389) where F cdf of the t-distribution, and 1-F(3.389) = P(T>3.389) which lies between 0.005 and 0.001, so we reject H0 at the 5% significance level. Examples Example 4: We consider an experiment designed to test whether a new fertilizer results in an increase of more than 250kg/ha in crop yield over the old fertilizer. 9 pairs of test plots were set up with same environmental conditions (paired samples…). New fertilizer: 2250 2410 2260 2200 2360 2320 2240 2300 2090 Old fertilizer: 1920 2020 2060 1960 1960 2140 1980 1940 1790 Test the hypothesis at the 5% significance level. Examples Solution - Example 4: We first consider the differences di=newi-oldi dj: 330 390 200 240 400 180 260 360 300 We wish to test H0 d = 0 vs H1: d > 0 (test of equality of means for paired samples) We have that n = 9, s=80.6, di/n=295.6. We get tobs = (295.6-250)/(80.6/(12))=1.695 t8;0. 05=1.8595 tobs<t8;0.05, therefore do not reject H0 at the 5% level. The p-value of this test is P(T>1.695) which lies between 0.1 and 0.05, so we cannot reject H0 at the 5% significance level.