优化术语向量,实现高效鲁棒滤波

David A. Evans, Jeffrey Bennett, David A. Hull
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引用次数: 0

摘要

我们描述了一种高效、稳健的方法来选择和优化分类或过滤任务的术语。基于几种备选术语选择算法从训练数据中的正例中提取术语,然后经过简单的术语得分归一化步骤进行加性组合,产生合并和排名的主术语向量。主向量的分数阈值是通过对所有可用训练数据的β - γ调节来设置的。这个过程避免了参数校准和长时间的训练。它还为测试(新)文档的运行时评估生成了紧凑的概要文件。在TREC-2002过滤任务数据集上的结果表明,与trec -中位数结果相比,有了很大的改进,并且在总体有效性上可以与理想化的基于ir的结果和优化的(昂贵的)基于svm的分类器相媲美。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing term vectors for efficient and robust filtering
We describe an efficient, robust method for selecting and optimizing terms for a classification or filtering task. Terms are extracted from positive examples in training data based on several alternative term-selection algorithms, then combined additively after a simple term-score normalization step to produce a merged and ranked master term vector. The score threshold for the master vector is set via beta-gamma regulation over all the available training data. The process avoids para-meter calibrations and protracted training. It also results in compact profiles for run-time evaluation of test (new) documents. Results on TREC-2002 filtering-task datasets demonstrate substantial improvements over TREC-median results and rival both idealized IR-based results and optimized (and expensive) SVM-based classifiers in general effectiveness.
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