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AP Statistics If our data comes from a simple random sample (SRS) and the sample size is sufficiently large, then we know that the sampling distribution of the sample means is approximately normal with mean μ and standard deviation . n The spread of the sampling distribution depends on n and σ. σ is generally unknown and must be estimated. NOW…THEORY ASIDE AND ONTO PRACTICE ! AP Statistics, Section 11.1 2 SRS – size n Normal distribution of a population μ and σ are unknown To estimate σ – use “S” in its place Then the standard error of the sample mean is s n AP Statistics, Section 11.1 3 z x n The z statistic has N (0,1) When s is substituted the distribution is no longer normal AP Statistics, Section 11.1 4 The t statistic is used when we don’t know the standard deviation of the population, and instead we use the standard deviation of the sample distribution as an estimation. The t statistic has n-1 degrees of freedom (df). x t s/ n AP Statistics, Section 11.1 5 Interpret the t statistic in the same way as the z statistic There is a different distribution for every sample size. The t statistic has n-1 degrees of freedom. Write t (k) to represent the t distribution with k degrees of freedom. Density curves for the t distribution are similar to the normal curve (symmetrical and bell shaped) The spread is greater and there is more probability in the tails and less in the center. Using s introduces more variability than sigma. As d.f. increase, t(k) gets more normal AP Statistics, Section 11.1 6 In statistical tests of significance, we still have H0 and Ha. We need to provide the mu in the calculation of the t statistic. Looking at the t table is fundamentally different than the z table. x t s/ n AP Statistics, Section 11.1 7 Assume SRS size n with population mean μ Confidence interval will be correct for normal populations and approx. correct for large n. estimate t * (SE estimate) (1 C) t* for t(n-1) 2 CI x t * ( s n ) AP Statistics, Section 11.1 8 Let’s suppose that Mr. Young has been told that he should mop the floor by 1:25 p.m. each day. We collect 12 sample times with an average of 27.58 minutes after 1 p.m. and with a standard deviation of 3.848 minutes. Find a 95% confidence interval for Mr. Young’s mopping times. AP Statistics, Section 11.1 9 x 27.58 min s 3.848 n 12 df 11 CL : 95% From table C: t* = 2.201 3.848 CI 27.58 2.201 12 CI : (25.135, 30.025) AP Statistics, Section 11.1 10 Step 1: Population of interest: ◦ Mr. Young’s mopping time Parameter of interest: Hypotheses ◦ average time of arrival to mop ◦ H0: µ=25 min past 1:00 ◦ Ha: µ>25 min past 1:00 x t s/ n AP Statistics, Section 11.1 11 We are using 1 sample t-test? Bias? ◦ SRS not stated. Proceed with caution. Independence? ◦ Population size is at least 10 times the sample size? ◦ We assume that Mr. Young has mopped on a lot of days Normality? ◦ Big sample size (> 30). No ◦ Sample is somewhat normal because the sample distribution is single peaked, no obvious outliers. AP Statistics, Section 11.1 x t s/ n 12 Calculate the test statistic, and calculate the p-value from Table C 27.58 25 t 3.848 / 12 2.322 P(t 2.322) is between .025 and .02 AP Statistics, Section 11.1 13 Is the t-value of 2.322 statistically significant at the 5% level? At the 1% level? Does this test provide strong evidence that Mr. Young arrives on time to complete his mopping? Try this exercise on your calculator using: STAT TESTS Tinterval STAT TESTS T-Test AP Statistics, Section 11.1 14 Wednesday: Thursday: Friday: 11.6 – 11.11 11.13 – 11.20 T-Test Worksheet AP Statistics, Section 11.1 15