Steps in Hypothesis Testing
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Prerequisites Introduction to Hypothesis Testing, Statistical Significance, Type I and II Errors
Questions
- What is the difference between a significance level and a probability level?
- What are the four steps involved in significance testing?
Step 1: State the Null Hypothesis
For a two tailed test, the null hypothesis is typically that a parameter equals zero although there are exceptions
- A typical null hypothesis is μ1 - μ2 = 0 which is equivalent to μ1 = μ2
For a one-tailed test, the null hypothesis is either that a parameter is:
- greater than or equal to zero
- less than
- equal to zero
If the prediction is that μ1 > μ2, then the null hypothesis (the reverse of the prediction) is μ1 ≤ μ2
Step 2: Specify the α level (significance level)
- Typical values are 0.05 and 0.01
Step 3: Compute the P-value
- This is the probability of obtaining a sample statistic as different or more different from the parameter specified in the null hypothesis given that the null hypothesis is true
Step 4: Compare the probability value with the α level
- If the probability value is lower then you reject the null hypothesis
- Keep in mind that rejecting the null hypothesis is not an all-or-none decision
- The lower the probability value, the more confidence you can have that the null hypothesis is false
- However, if your probability value is higher than the conventional α level of 0.05, most scientists will consider your findings inconclusive
- Failure to reject the null hypothesis does not constitute support for the null hypothesis
- It just means you do not have sufficiently strong data to reject it
Questions