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首页> 外文期刊>International journal of healthcare information systems and informatics : >Identification and Classification of Health Queries:Co-Occurrences vs. Domain-Specific Terminologies
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Identification and Classification of Health Queries:Co-Occurrences vs. Domain-Specific Terminologies

机译:健康查询的识别和分类:同现vs.特定领域术语

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摘要

Identifying the user s intent behind a query is a key challenge in Information Retrieval. This information may be used to contextual ize the search and provide better search results to the user. The automatic identification of queries targeting a search for health information allows the implementation of retrieval strategies specifically focused on the health domain. In this paper, two kinds of automatic methods to identify and classify health queries based on domain-specific terminology are proposed. Besides evaluating these methods, we compare them with a method that is based on co-occurrence statistics of query terms with the word "health ". Although the best overall result was achieved with a variant of the co-occurrence method, the method based on domain-specific frequencies that generates a continuous output outperformed most of the other methods. Moreover, this method also allows the association of queries to the semantic tree of the Unified Medical Language System and thereafter their classification into appropriate subcategories.
机译:识别查询背后的用户意图是信息检索中的关键挑战。该信息可以用于使搜索语境化并向用户提供更好的搜索结果。以健康信息搜索为目标的查询的自动识别允许实施专门针对健康领域的检索策略。本文提出了两种基于领域专有术语的健康查询自动识别和分类方法。除了评估这些方法外,我们还将它们与基于带有“健康”一词的查询词的共现统计的方法进行比较。尽管使用共现方法的一种变体可以实现最佳的总体结果,但是基于域特定频率的,能够产生连续输出的方法要优于其他大多数方法。此外,此方法还允许将查询与统一医学语言系统的语义树关联,然后将其分类为适当的子类别。

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