Polynomials are common algebraic structures, which are often used to approximate functions including probability distributions. This paper proposes to directly define polynomial distributions in order to describe stochastic properties of systems rather than to assume polynomials for only approximating known or empirically estimated distributions. Polynomial distributions offer a great modeling flexibility, and often, also mathematical tractability. However, unlike canonical distributions, polynomial functions may have non-negative values in the interval of support for some parameter values, the number of their parameters is usually much larger than for canonical distributions, and the interval of support must be finite. In particular, polynomial distributions are defined here assuming three forms of polynomial function. The transformation of polynomial distributions and fitting a histogram to a polynomial distribution are considered. The key properties of polynomial distributions are derived in closed-form. A piecewise polynomial distribution construction is devised to ensure that it is non-negative over the support interval. Finally, the problems of estimating parameters of polynomial distributions and generating polynomially distributed samples are also studied.
翻译:多元分布是常见的代数结构, 通常用于近似函数, 包括概率分布 。 本文建议直接定义多元分布, 以描述系统的随机特性, 而不是假定仅仅相似的已知或经经验估计分布的多元分布。 多元分布提供了巨大的模型灵活性, 并且往往也是数学可移动性 。 但是, 与典型分布不同, 多元分布功能在支持某些参数值的间隔中可能有非负值, 其参数数目通常比罐状分布大得多, 支持间隔必须有限 。 特别是, 这里定义的多元分布, 假设多元分布函数有三种形式。 考虑多元分布的转换和将直方图与多元分布相匹配。 多元分布的关键特性在封闭式中产生 。 一个小微的多数值分布构造, 以确保它不会在支持间隔中出现负值, 并且支持间隔必须是有限的 。 最后, 多边分布分布的参数也存在问题 。