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The influence of prior knowledge on the expected performance of a classifier

机译:先验知识对分类器预期性能的影响

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摘要

In this paper, we study the probabilistic properties of pattern classifiers in discrete feature space. The principle of Bayesian averaging of recognition performance is used for this analysis. We consider two cases: (a) prior probabilities of classes are unknown, and (b) prior probabilities of classes are known. The misclassification probability is represented as a random value, for which the characteristic function (expressed via Kummer hypergeometric function) and absolute moments are analytically derived. For the case of unknown priors, an approximate formula for calculation of sufficient learning sample size is obtained. The comparison between the performances for two considered cases is made. As an example, we consider the problem of mutational hotspots classification in genetic sequences.
机译:在本文中,我们研究了离散特征空间中模式分类器的概率性质。贝叶斯平均识别性能的原理用于此分析。我们考虑两种情况:(a)类的先验概率未知,(b)类的先验概率已知。错误分类概率表示为一个随机值,针对该随机值可以解析得出特征函数(通过Kummer超几何函数表示)和绝对矩。对于先验未知的情况,可以获得用于计算足够的学习样本量的近似公式。比较了两种考虑情况下的性能。例如,我们考虑了遗传序列中突变热点分类的问题。

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