基因组学搜索结果多样化的关联-新颖性组合模型

Xiaoshi Yin, Zhoujun Li, Xiangji Huang, Xiaohua Hu
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引用次数: 2

摘要

传统的检索模型假设一个文档的相关性独立于其他文档的相关性。然而,这种假设可能导致排名列表中的高冗余和低多样性。为了提供全面多样的答案来满足生物学家的信息需求,我们提出了一种基于无向图形模型框架的相关性-新颖性组合模型,即RelNov模型。在TREC 2006和2007基因组学数据集上进行的实验表明,该方法在提高检索排序列表的多样性和相关性方面是有效的。
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A relevance-novelty combined model for genomics search result diversification
Traditional retrieval models assume that the relevance of a document is independent of the relevance of other documents. However, this assumption may result in high redundancy and low diversity in a ranked list. In order to provide comprehensive and diverse answers to fulfill biologists' information need, we propose a relevance-novelty combined model, named RelNov model, based on the framework of an undirected graphical model. Experiments conducted on the TREC 2006 and 2007 Genomics collections show that the proposed approach is effective in promoting both diversity and relevance of retrieval ranked lists.
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