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Selecting Interesting Articles Using Their Similarity Based Only on Positive Examples

机译:仅使用它们的相似性选择有趣的文章仅基于正示例

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The task of automated searching for interesting text documents frequently suffers from a very poor balance among documents representing both positive and negative examples or from one completely missing class. This paper suggests the ranking approach based on the k-NN algorithm adapted for determining the similarity degree of new documents just to the representative positive collection. Prom the viewpoint of the precision-recall relation, a user can decide in advance how many and how similar articles should be released through a filter.
机译:有趣的文本文件的自动搜索的任务经常遭受代表正面和消极示例的文件之间的非常差的平衡或从一个完全缺失的课程。本文提出了基于K-NN算法的排名方法,适用于确定新文件的相似度,即代表正收集。 PROM Precision-Recall关系的观点,用户可以提前通过滤波器释放多少和相似的文章。

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