Friday, 5 February 2016

Important Statistics Formulas



Parameters

Statistics
Unless otherwise noted, these formulas assume simple random sampling.

Correlation

Simple Linear Regression

Counting

Probability

Random Variables
In the following formulas, X and Y are random variables, and a and b are constants.

Sampling Distributions

Standard Error

Discrete Probability Distributions

Linear Transformations
For the following formulas, assume that Y is a linear transformation of the random variable X, defined by the equation: Y = aX + b.

Estimation

Hypothesis Testing

Degrees of Freedom
The correct formula for degrees of freedom (DF) depends on the situation (the nature of the test statistic, the number of samples, underlying assumptions, etc.).

Sample Size
Below, the first two formulas find the smallest sample sizes required to achieve a fixed margin of error, using simple random sampling. The third formula assigns sample to strata, based on a proportionate design. The fourth formula, Neyman allocation, uses stratified sampling to minimize variance, given a fixed sample size. And the last formula, optimum allocation, uses stratified sampling to minimize variance, given a fixed budget.

1 comment:

  1. It's late finding this act. At least, it's a thing to be familiar with that such events exist. I agree with your Blog and I will be back to inspect it more in the future so please keep up your act.
    data analytics course in hyderabad

    ReplyDelete