使用CLSM进行基于上下文的新闻文章检索

Komala Anamalamudi, Y. Padmanabha Reddy
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引用次数: 0

摘要

随着电子数据的不断增长和万维网的不断扩展,用户为了一个单一的搜索查询而被大量的信息所淹没。最常见的情况是,到达搜索查询的结果会忽略上下文。上下文有几个维度,如用户上下文、查询/文档上下文、空间/时间上下文。虽然上下文在构建智能系统中并不是一个新概念,但上下文信息检索是智能系统中最大的挑战。本文提出了一种基于卷积潜在语义模型的新闻文章检索方法。CLSM提取查询中出现的上下文特征,找到相关文档,并根据它们与给定查询的相关性对它们进行排序。CLSM在商业搜索引擎的点击数据中进行了实验,并证明了其上下文敏感的结果和效率。在本文中,我们讨论了使用CLSM从静态新闻文章存储库中提取基于查询中的上下文的新闻文章的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Context-based News Articles Retrieval using CLSM
With the continuous growth of the electronic data and the expansion of World Wide Web, users are flooded with information for a single search query. Most commonly, the results that arrive for the search query ignore the context. Context has several dimensions such as users context, query/document context, spatial/temporal context. Though context is not a new idea in building intelligent systems, Contextual Information Retrieval is a biggest challenge in IR domain.This paper proposes news article retrieval using Convolutional Latent Semantic Model (CLSM). CLSM extracts the contextual features present in the query and finds the relevant documents and ranks them based on their relevance with the given query. CLSM was experimented with the clickthrough data of a commercial search engine and has been proven for its context-sensitive results and efficiency. In this paper, we discuss the feasibility of using CLSM for extracting news articles based on the context present in the query from a static news article repository.
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