A nullhypothesis claims that there is noeffect in the population while an alternativehypothesis claims that there is an effect.
The problem with descriptive statistics is that they may be too simplistic. so we use inferential
eg. difference in memory between 16 year olds and 25 year olds. You make the following hypotheses:
Null Hypothesis: There will be nosignificantdifferencebetween the number of words correctly recalled on a memory test between 16 year olds and 25 year olds.
Alternate hypothesis: There will be a significantdifference between the number of words correctly recalled on a memory test between 16 year olds and 25 year olds.
An inferential statistics test helps us decide whether the result was due to chance or whether we should accept null or alternate
E.g. 0.00 = 0% chance, 1.00 = 100% chance it is due to chance
In general, psychologists use the 0.05 level of significance; meaning that there is a 5% chance that the results would have occurred this way even if there was no real difference between the groups. This probability of 5% is recorded as p=0.05
Type 1 error
False positive
Accept alternate hypothesis although really the null hypothesis was true. (Reject null hypothesis when actually it was true).
Type 2 error
False negative
Accept null hypothesis although really the alternate hypothesis was true. (Acceptnullhypothesis was actually it was false).