基于接近度的意见检索

Shima Gerani, Mark James Carman, F. Crestani
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引用次数: 73

摘要

博客文章观点检索的目的是寻找与用户查询相关且有主见的博客文章。在本文中,我们提出了一个简单的概率模型来分配相关的意见分数给文件。关键问题是如何捕获文档中与查询主题相关的意见表达。当前的解决方案通过使用外部语料库或集合本身的伪相关反馈来查找特定于查询的意见词典,从而丰富了一般意见词典。在本文中,我们使用一个通用的意见词典,并建议使用接近信息来捕获意见术语与查询的相关性。我们提出了一种基于接近度的意见传播方法来计算文档中每个点的意见密度。然后,可以将文档中查询词所在位置的意见密度视为对该查询词在该位置的意见的概率。本文还讨论了不同核函数对捕获接近度的影响。在BLOG06数据集上的实验结果表明,该方法比标准TREC基线有了显著的改进,MAP比TREC 2008博客赛道上的最佳表现提高了2.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Proximity-based opinion retrieval
Blog post opinion retrieval aims at finding blog posts that are relevant and opinionated about a user's query. In this paper we propose a simple probabilistic model for assigning relevant opinion scores to documents. The key problem is how to capture opinion expressions in the document, that are related to the query topic. Current solutions enrich general opinion lexicons by finding query-specific opinion lexicons using pseudo-relevance feedback on external corpora or the collection itself. In this paper we use a general opinion lexicon and propose using proximity information in order to capture opinion term relatedness to the query. We propose a proximity-based opinion propagation method to calculate the opinion density at each point in a document. The opinion density at the position of a query term in the document can then be considered as the probability of opinion about the query term at that position. The effect of different kernels for capturing the proximity is also discussed. Experimental results on the BLOG06 dataset show that the proposed method provides significant improvement over standard TREC baselines and achieves a 2.5% increase in MAP over the best performing run in the TREC 2008 blog track.
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