Simple Interactive Statistical Analysis
One Mean
Input.
Explanation.
The program constructs confidence intervals around a mean, be it a proportion, a count or an average.
The Poisson analysis is for use with a counted variable, for example, the number of accidents on a busy junction. For the confidence intervals for a Poisson type variable the exact estimate would probably be the first choice. However, over a count of 500 there might be computing problems and the Pearson or normal approximation method is then recommended.
The six confidence intervals for a proportion are all discussed in an article by Newcombe (1998). The simple normal approximation method is taught in many introductory statistics courses. Newcombe urges strongly against its use in practical research. The exact Binomial estimate would probably be the first choice. However, over a number of cases of 400 there might be computing problems and the Wilson method is then recommended. Note that the continuity corrected Wilson confidence interval according to Newcombe is the same as the quadratic confidence interval according to Fleiss (1982). This last method has the disadvantage that if a proportion equals one both values of the confidence interval are smaller than one.
A discussion of how to construct a confidence interval for the normal mean can be found in any introductory statistics book, such as Blalock or Swinscow and Campbell.
Exact p-values tend to be more conservative than most approximate estimates. To make the exact p-value more like the approximate result the mid-p value is sometimes used. The mid-p is somewhere in the middle between p-values including the point probability values and p-values not including the point probability values. To determine the mid-p value SISA takes the average of these two values. SISA does not recommend the use of mid-p values.
Further Reading.
Blalock HM. Social Statistics. New York: McGraw-Hill,1960.
Newcombe RG. Two sided confidence intervals for the single proportion: Comparison of seven methods. Statistics in Medicine 1998;17:857-872.->Medline
Swinscow TDV, Campbell MJ. Statistics at square one (10th ed). London: BMJ Books, 2002.->9th ed.
Fleiss JL. Statistical methods for rates and proportions, 2nd edition. New York [etc.]: John Wiley 1982.