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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >ANALYSIS OF EVIDENCE THEORETIC DECISION RULES FOR PATTERN CLASSIFICATION
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ANALYSIS OF EVIDENCE THEORETIC DECISION RULES FOR PATTERN CLASSIFICATION

机译:模式分类的证据理论决策规则分析

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The Dempster-Shafer theory provides a convenient framework for decision making based on very limited or weak information. Such situations typically arise in pattern recognition problems when patterns have to be classified based on a small number of training vectors, or when the training set does not contain samples from all classes. This paper examines different strategies that can be applied in this context to reach a decision (e.g. assignment to a class or rejection), provided the possible consequences of each action can be quantified. The corresponding decision rules are analysed under different assumptions concerning the completeness of the training set. These approaches are then demonstrated using real data. (C) 1997 Pattern Recognition Society. [References: 15]
机译:Dempster-Shafer理论为基于非常有限或薄弱信息的决策提供了方便的框架。当必须基于少量的训练向量对模式进行分类时,或者当训练集不包含来自所有类别的样本时,这种情况通常会在模式识别问题中出现。本文研究了可以在此情况下应用的不同策略以做出决策(例如分配给班级或拒绝),前提是可以量化每个动作的可能后果。在有关训练集完整性的不同假设下分析了相应的决策规则。然后使用实际数据演示了这些方法。 (C)1997模式识别学会。 [参考:15]

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