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首页> 外文期刊>International journal of intelligent information and database systems >A hybrid neuro-fuzzy system-based ranking function and its application to effective medical information retrieval
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A hybrid neuro-fuzzy system-based ranking function and its application to effective medical information retrieval

机译:基于混合神经模糊系统的排序功能及其在有效医学信息检索中的应用

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摘要

Retrieval of reliable relevant information is the major concern in medical information retrieval. Among all factors that affect the performance of retrieval system, ranking function is the most important factor. The retrieved documents from large document collection are arranged in the decreasing order of their relevance score by ranking function. A neuro-fuzzy system-based hybrid ranking function (HRF) is proposed in this paper. The proposed ranking function considers weight of document and query with respect to keyword as input features and gives relevance score between document and query as output. Experiments are performed on OHSUMED and PMC benchmark medical document corpus by using 15 experimental queries. The experimental results prove that the proposed HRF performs better when compared with fuzzy logic-based ranking function (FRF) and conventional statistical Euclidean distance-based ranking function (ERF) and cosine similarity-based ranking function (CRF) in terms of precision, recall and F-measure.
机译:可靠相关信息的检索是医学信息检索中的主要问题。在影响检索系统性能的所有因素中,排名功能是最重要的因素。通过排序功能,从大型文档集中检索的文档按其相关性得分的降序排列。本文提出了一种基于神经模糊系统的混合排序功能(HRF)。所提出的排序功能考虑文档和查询相对于关键字的权重作为输入特征,并给出文档和查询之间的相关度得分作为输出。通过使用15个实验查询,对OHSUMED和PMC基准医学文档语料库进行了实验。实验结果证明,与基于模糊逻辑的排序函数(FRF)和基于统计欧几里德距离的常规排序函数(ERF)和基于余弦相似度的排序函数(CRF)相比,所提出的HRF在精度,召回率方面均表现更好和F-measure。

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