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Integrating Background Knowledge into Nearest-Neighbor Text Classification

机译:将背景知识整合到最近邻文本分类中

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This paper describes two different approaches for incorporating background knowledge into nearest-neighbor text classification. Our first approach uses background text to assess the similarity between training and test documents rather than assessing their similarity directly. The second method redescribes examples using Latent Semantic Indexing on the background knowledge, assessing document similarities in this redescribed space. Our experimental results show that both approaches can improve the performance of nearest-neighbor text classification. These methods are especially useful when labeling text is a labor-intensive job and when there is a large amount of information available about a specific problem on the World Wide Web.
机译:本文介绍了将背景知识纳入最近邻文本分类的两种不同方法。我们的第一种方法是使用背景文本来评估培训和测试文档之间的相似性,而不是直接评估它们之间的相似性。第二种方法在背景知识上使用潜在语义索引重新描述了示例,在此重新描述的空间中评估了文档的相似性。我们的实验结果表明,两种方法都可以提高最近邻文本分类的性能。当给文本加标签是一项劳动密集型工作,并且在万维网上有大量有关特定问题的可用信息时,这些方法特别有用。

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