Prior distribution
نویسندگان
چکیده
منابع مشابه
Estimation of parameter of proportion in Binomial Distribution Using Adjusted Prior Distribution
Historically, various methods were suggested for the estimation of Bernoulli and Binomial distributions parameter. One of the suggested methods is the Bayesian method, which is based on employing prior distribution. Their sound selection on parameter space play a crucial role in reducing posterior Bayesian estimator error. At times, large scale of the parametric changes on parameter space bring...
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