Unbiased Estimators for the Parameters of the Binomial and Multinomial Distributions

2013 
The exact expression is derived for the expected value, $ $, for the parameter for any bin $i$ of a histogram following a multinomial distribution derived by sorting $N$ observations into bins of $B$ classes, if $n_i$ of the observations are found to be sorted into bin $i$. This expected value is found to be $ = \frac {n_i + 1} {N + B}$. The expected value for the variance is found to be $\frac{ (1- )}{N+B+1}$. A general expression is derived to determine $ $ for arbitrary values of $B$ and $z$. These expressions hold provided there is no \emph{a priori} reason for $p_i$ associated with any bin to have a value that is exactly equal to 0. For the particular case of the binomial distribution (B=2), these estimators are tested by examining how often the value of $p_{true}$, the value which is used to generate sets of pseudo-random binomial variates, falls within 1.96 estimated standard deviations of the estimated value $ $. When compared with the results of identical, earlier reported tests for small sample sizes, the unbiased estimators derived here predictably outperform \emph{asymptotically} unbiased estimators
    • Correction
    • Source
    • Cite
    • Save
    • Machine Reading By IdeaReader
    0
    References
    2
    Citations
    NaN
    KQI
    []