基于目标覆盖区域的模式分类系统

Izumi Suzuki
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引用次数: 1

摘要

针对“峰值现象”,提出了一种新的统计模式分类系统。在这种现象中,在固定的训练样本规模下,随着特征的增加,模式分类器的准确率达到峰值。系统不是估计类对象的分布,而是在特征空间上生成一个区域,在该区域中包含一定比例的类对象。如果对象只属于覆盖区域的一个类,则模式分类器识别该类,但是如果对象属于多个类的覆盖区域或不属于任何类,则回答“无法检测”。这里,覆盖区域简单地从每个特征的覆盖区域生成,然后在必要时进行扩展。与朴素贝叶斯分类器不同,不假设每个特征的独立性。在字符分类系统的测试中,除非添加了明显无用的特征,否则系统的性能不会随着特征的增加而显著下降。
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A Pattern Classifying System Based on the Coverage Regions of Objects
A new statistical pattern classifying system is proposed to solve the problem of the "peaking phenomenon". In this phenomenon, the accuracy of a pattern classifier peaks as the features increase under a fixed size of training samples. Instead of estimating the distribution of class objects, the system generates a region on the feature space, in which a certain rate of class objects is included. The pattern classifier identifies the class if the object belongs to only one class of the coverage region, but answers "unable to detect" if the object belongs to the coverage region of more than one class or belongs to none. Here, the coverage region is simply produced from the coverage regions of each feature and then extended if necessary. Unlike the Naive-Bayes classifier, the independence of each feature is not assumed. In tests of the system on the classification of characters, the performance does not significantly decrease as the features increase unless apparently useless features are added.
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