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CHAPTER 13 STUDENT’S t TEST FOR SINGLE SAMPLES CHAPTER OUTLINE I. Introduction A. Use of the t test. Use the t test when 1. the mean of the Null Hypothesis Population can be specified 2. the standard deviation is unknown (which also means the z test cannot be used) B. Applications covered in this chapter. 1. Analysis of data in experiments with a single sample 2. Determining the significance of Pearson r. II. Comparison of z and t Tests A. Formula. zobt tobt X obt μ sX X obt μ σ ; where σ X σX N where s X = estimated standard error of the mean = s N B. z and t equation differences. Difference between equations is that in the t equation, s and s X are used instead of and σ X respectively. 267 268 Part Two: Chapter 13 III. Sampling Distribution of t A. Definition. the sampling distribution of t is a probability distribution of the t values which would occur if all possible different samples of a fixed size N were drawn from the Null Hypothesis Population. It gives (1) all the possible t values for samples of size N and (2) the probability of getting each value if sampling is random from the Null Hypothesis Population. B. Characteristics. 1. Family of curves; many curves with a different curve for each sample size N. 2. Shape. Shaped similarly to z distribution if a. sample size 30 or b. H0 population is normally distributed. C. Degrees of freedom (df). The number of scores that are free to vary. df = N 1 D. Comparison of z and t distributions. 1. 2. 3. 4. t and z are both symmetrical about 0 As df increases t becomes more similar to z As df approaches , t becomes identical to z At any value of df < , the t distribution has more extreme values than z (i.e., tails of the t distribution are more elevated than in the z distribution) 5. For a given alpha level, tcrit > zcrit IV. Calculations and Use of t A. Calculation of t from raw scores. t obt X obt μ SS N (N 1) B. Requirements. Appropriate use of t requires that sampling distribution of X is normal. This can result if N 30 or population of raw scores is normal. Part Two: Chapter 13 269 V. Size of Effect Using Cohen’s d A. Rationale. The statistic we are using to measure size of effect is symbolized by “d.” It is a standardized statistic that relies on the relationship between the size of effect and X obt μ . As the size of effect gets greater, so does X obt μ , regardless of the direction of the effect. The statistic d uses the absolute value of X obt μ since we are interested in the size of real effect, and are not concerned about direction. This allows d to have a positive value that increases with the size of the difference between X obt and μ regardless of the direction of the real effect. X obt μ is divided by σ to create a standardized value, much as was done with z scores. B. Formula for Cohen’s d. d X obt μ σ Conceptual equation for size of effect, single sample t test Since σ is unknown, we estimate it using s, the sample standard deviation. Substituting s for σ, we arrive at the computational equation for size of effect. Since s is an estimate, d̂ is used instead of d. X obt μ dˆ s Computational equation for size of effect, single sample t test C. Interpreting the Value of d̂ . To interpret the value of d̂ , we are using the criteria that Cohen has provided. These criteria are given in the following table. Value of d̂ 0.00 – 0.20 0.21 – 0.79 ≥0.80 Interpretation of d̂ Small effect Medium effect Large effect VI. Confidence Intervals for the Population Mean A. Definition. A confidence interval is a range of values which probably contains the population mean. Confidence limits are the values that bound the confidence interval. Example: The 95% confidence interval is an interval such that the probability is 0.95 that the interval contains the population value. 270 Part Two: Chapter 13 B. Formula for confidence interval. μlower X obt sX tcrit μupper X obt sX tcrit VII. Testing Significance of Pearson r. A. Rho (). this is the Greek letter to symbolize the population correlation coefficient. B. Nondirectional H0. Asserts 0. C. Directional H0 Asserts that is positive or negative depending on the predicted direction of the relationship. D. Sampling distribution of r. Generated by taking all samples of size N from a population in which = 0 and calculating r for each sample. By systematically varying the population scores and N, the sampling distribution of r is generated. E. Using t test to evaluate significance of r: tobt robt ρ 1 robt 2 ; where sr sr N 2 with df = N 2 and N equals the number of pairs of X, Y scores. F. Using rcrit to evaluate the significance of r: if | robt | | rcrit |, reject H0 The values of rcrit can be calculated directly. Values of rcrit are shown in Table E.