发明名称 DOCUMENT RELEVANCY ANALYSIS WITHIN MACHINE LEARNING SYSTEMS
摘要 Systems and methods that quantify document relevance for a document relative to a training corpus and select a best match or best matches are provided herein. Methods may include generating an example-based explanation for relevancy of a document to a training corpus by executing a support vector machine classifier, the support vector machine classifier performing a centroid classification of a relevant document in a term frequency-inverse document frequency features space relative to training examples in a training corpus, and generating an example-based explanation by selecting a best match for the relevant document from the training examples based upon the centroid classification. Determining the training example having the closest cosine distance to the relevant document includes ranking the training examples by stretching the internal best match scores for the training examples linearly to cover a complete unit interval.
申请公布号 EP2904508(A4) 申请公布日期 2016.06.01
申请号 EP20130843848 申请日期 2013.07.26
申请人 RECOMMIND, INC. 发明人 FEUERSÄNGER, CHRISTIAN;WETTSCHERECK, DIETRICH;PUZICHA, JAN
分类号 G06F17/30;G06N99/00 主分类号 G06F17/30
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