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Sufficiency, classification, and the class-specific feature theorem

机译:充分性,分类和特定于类的特征定理

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摘要

A new proof of the class-specific feature theorem is given. The proof makes use of the observed data as opposed to the set of sufficient statistics as in the original formulation. We prove the theorem for the classical case, in which the parameter vector is deterministic and known, as well as for the Bayesian case, in which the parameter vector is modeled as a random vector with known prior probability density function. The essence of the theorem is that with a suitable normalization the probability density function of the sufficient statistic for each probability density function family can be used for optimal classification. One need not have knowledge of the probability density functions of the data under each hypothesis.
机译:给出了类特定特征定理的新证明。证明使用的是观察到的数据,而不是原始公式中的一组足够的统计数据。我们证明了经典情况下的定理,在经典情况下参数向量是确定性已知的,在贝叶斯情况下,参数参数被建模为具有已知先验概率密度函数的随机向量。该定理的实质是,通过适当的归一化,可以将每个概率密度函数族的足够统计量的概率密度函数用于最优分类。无需了解每种假设下数据的概率密度函数。

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