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Classification rules in the unknown mixture parameter case: relative value of labeled and unlabeled samples

机译:未知混合参数情况下的分类规则:标记和未标记样品的相对值

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We investigate the relative value of labeled and unlabeled samples in constructing classification rules. We observe a training set Q composed of l labeled and u unlabeled samples coming from two classes. Let sample from class 1 be distributed according to f/sub 1/(/spl middot/), samples from class 2 according to f/sub 2/(/spl middot/), and let /spl eta/ be the probability that a sample is in class 1. Assume that f/sub 1/(/spl middot/) and f/sub 2/(/spl middot/) are known and that /spl eta/ is unknown. We want to classify a new sample X/sub 0/. The relative value of labeled and unlabeled observations in reducing the probability of error is equal to I/sub t/(/spl eta/)/I/sub u/(/spl eta/), the ratio of the Fisher information of the labeled and unlabeled samples. Moreover labeled samples are not necessary in order to construct a decision rule. However, if f/sub 1/(/spl middot/) and f/sub 2/(/spl middot/) are given, but it is not known whether observations from class 1 are distributed according to f/sub 1/(/spl middot/) or according to f/sub 2/(/spl middot/), then the labeled samples are necessary and exponentially more valuable than unlabeled samples.
机译:我们调查标记和未标记样本在构建分类规则中的相对价值。我们观察到训练集Q,该训练集Q由来自两个类别的l个标记的和u个未标记的样本组成。假设根据f / sub 1 /(/// spl middot /)分配类别1的样本,根据f / sub 2 /(/// spl middot /)分配类别2的样本,并且/ spl eta /为a的概率样本位于类1中。假定已知f / sub 1 /(/// spl middot /)和f / sub 2 /(/ spl middot /),并且/ spl eta /不知道。我们要对新样本X / sub 0 /进行分类。标记和未标记的观察值在减少错误概率中的相对值等于I / sub t /(// spl eta /)/ I / sub u /(/ spl eta /),即标记的Fisher信息的比率和未标记的样品。此外,标记的样本对于构建决策规则不是必需的。但是,如果给出了f / sub 1 /(/// spl middot /)和f / sub 2 /(/ spl middot /),但尚不清楚是否根据f / sub 1 /(/ spl middot /)或根据f / sub 2 /(// spl middot /),则标记的样本是必需的,并且比未标记的样本成倍增加价值。

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