This paper is a step-by-step tutorial for fitting a mixture distribution to data. It merely assumes the reader has the background of calculus and linear algebra. Other required background is briefly reviewed before explaining the main algorithm. In explaining the main algorithm, first, fitting a mixture of two distributions is detailed and examples of fitting two Gaussians and Poissons, respectively for continuous and discrete cases, are introduced. Thereafter, fitting several distributions in general case is explained and examples of several Gaussians (Gaussian Mixture Model) and Poissons are again provided. Model-based clustering, as one of the applications of mixture distributions, is also introduced. Numerical simulations are also provided for both Gaussian and Poisson examples for the sake of better clarification.
翻译:本文是设计混合物数据分布的一步步教学,仅假定读者有计算学和线性代数的背景,在解释主要算法之前简要审查其他所需的背景,在解释主要算法时,首先,详细说明两种分布法的混合,并举例说明分别适合连续和离散情况的两个高斯人和波森人,然后解释一般情况下的若干分布法,并再次提供若干高森人(高森人混合代数模型)和普瓦森人的例子,还采用模型集,作为混合分布法的应用之一,并为高斯人和普瓦森人的例子进行数值模拟,以作更好的澄清。