...
首页> 外文期刊>Computational Intelligence >The long road from performing word sense disambiguation to successfully using it in information retrieval: An overview of the unsupervised approach
【24h】

The long road from performing word sense disambiguation to successfully using it in information retrieval: An overview of the unsupervised approach

机译:漫长的道路从表演词感歧义,以在信息检索中成功使用它:概述了无监督的方法

获取原文
获取原文并翻译 | 示例
           

摘要

The issue of whether or not word sense disambiguation (WSD) can improve information retrieval (IR) results has been intensely debated over the years, with many inconclusive or contradictory results and a majority of skeptical opinions. All three classes of WSD methods (supervised, unsupervised, and knowledge-based) have been considered by the literature with respect to IR. We hereby survey the unsupervised approach which, although relatively rarely used, has provided positive results at a large scale. Unsupervised WSD has already made proof of its utility in IR and it is our belief that it still holds a promise for this field. The two main existing types of unsupervised methods for IR, which are of completely different natures, are presented, within the scientific context in which they were born, and are compared. Regardless of the gap in time between these central approaches, we are of the opinion that the unsupervised solution to the discussed problem remains the most significant for IR applications. By surveying what we consider the most promising existing approach to usage of WSD in IR, and by discussing its possible extensions, we hope to stimulate continuation of this line of research, possibly at an even more successful level.
机译:无论是单词感觉歧义(WSD)是否可以改善信息检索(IR)结果多年来一直争论的问题,许多不确定或矛盾的结果以及大多数持怀疑态度。关于IR的文献,文献已经考虑了所有三类WSD方法(监督,无监督和知识)。我们在此,调查了无监督的方法,尽管相对很少使用,但大规模提供了积极的结果。无人监督的WSD已经在IR中证明了其效用,我们认为它仍然对此领域仍然存在承诺。在他们诞生的科学环境中,提出了两种完全不同的自然的IR的两种主要现有类型的IR,这是完全不同的自然的。无论这些中央方法之间的时间差距如何,我们都认为未经监督的问题对讨论的问题仍然是IR应用中最重要的。通过测量我们认为,在IR中的WSD使用中最有前途的现有方法,以及通过讨论其可能的扩展,我们希望刺激这一研究行的延续,可能是更成功的水平。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号