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Learning by Negation of the Negative Examples - Single Model versus Double Model

机译:否定性例子的否定学习-单模与双模

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The paper presents two different approaches to learning by negation of the negative examples. The first approach is building a single model to represent the positive examples, as the examples not covered by the model are assumed negative. The second approach is building a double model to represent separately positive examples and negative examples. These two approaches are analysed and compared by their pros and cons.
机译:本文通过否定否定例子,提出了两种不同的学习方法。第一种方法是建立一个代表正样本的模型,因为模型未涵盖的样本被假定为负样本。第二种方法是建立一个双重模型,分别代表积极的例子和消极的例子。对这两种方法的优缺点进行了分析和比较。

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