TDM加权对文本数据上LSA性能的影响

S. Sudarsun, G. Venkatesh Prabhu, V. Sathish Kumar
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引用次数: 3

摘要

在本文中,我们证明了LSA的效率很大程度上取决于所采用的加权算法的选择。这些加权算法根据文档属性(如关键字)在语料库中的出现情况为其分配相对重要性。不同权重算法的影响是本文研究的重点。我们尝试了各种加权算法来评估和研究它们的影响,以精度和召回值为衡量标准。我们的实验包括在TDM(预加权)上应用加权函数,以便根据单词的出现情况增加或减少单词的相对重要性。我们还评估了加权函数在预测查询上的应用(后加权)。将后加权关键字查询投影到基于预加权TDM的LSA模型上,得到密切相关的关键字或文档(关键字集合)。我们开发了一个原型IR查询投影工具,该工具将关键字查询投影到LSA模型上,以浮点分数检索相关关键字
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Role of Weighting on TDM in Improvising Performance of LSA on Text Data
In this paper, we show that the efficiency of LSA is significantly controlled by the choice of weighting algorithm applied. These weighting algorithms allocate relative importance to the document attributes (e.g. keywords) based on their occurrences in the corpus. Effects of different weighting algorithms are the central point of this paper. We experimented with various weighting algorithms to evaluate and study their effects as measured by precision and recall values. Our experiments include weighting function application on TDM (pre-weighting) in order to increase or decrease the relative importance of words based on their occurrence. We also evaluated the application of weighting functions on the projected query (post-weighting). Post-weighted keyword queries were projected on an LSA model built on pre-weighted TDM to obtain closely correlated keywords or a document (keyword collection). We have developed a prototype IR query projection tool which projects keyword queries on the LSA model to retrieve relevant keywords with a floating-point score
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