Central Limit Theorem and Inference

The Central Limit Theorem Central Limit Theorem. Given a population described by any probability distribution having mean µ and finite variance σ2, the sampling distribution of the sample mean X‾\bar{X} computed from random samples of size n from this population will be approximately normal with mean µ (the population mean) and variance σ2/n (the population variance divided by n) when the…

Tests of Return and Risk in Finance

The sampling distribution of the mean, when the population standard deviation is unknown, is t-distributed, and when the population standard deviation is known, it is normally distributed, or z-distributed. Since the population standard deviation is unknown in almost all cases, we will focus on the use of a t-distributed test statistic. Test Concerning Differences between Means with Dependent…

Tests Concerning Correlation

Hypotheses concerning the population correlation coefficient may be two- or one-sided, as we have seen in other tests. Let ρ represent the population correlation coefficient. The possible hypotheses are as follows: Two sided: H0: ρ = 0 versus Ha : ρ ≠ 0 One sided (right side): H0: ρ ≤ 0 versus Ha : ρ > 0 One sided (left side): H0: ρ ≥ 0 versus Ha : ρ < 0 Parametric Test of a Correlation…