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A Study on Indexing Efficiency and Retrieval Accuracy for Author Name Search of Academic Papers

A Study on Indexing Efficiency and Retrieval Accuracy for Author Name Search of Academic Papers
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摘要 Most academic information has its creator, that is, a subject who has created the information. The subject can be an individual, a group, or an institution, and can be a nation depending on the nature of the relevant information. Most web data are composed of a title, an author, and contents. A paper which is under the academic information category has metadata including a title, an author, keyword, abstract, data about publication, place of publication, ISSN, and the like. A patent has metadata including the title, an applicant, an inventor, an attorney, IPC, number of application, and claims of the invention. Most web-based academic information services enable users to search the information by processing the meta-information. An important element is to search information by using the author field which corresponds to a personal name. This study suggests a method of efficient indexing and using the adjacent operation result ranking algorithm to which phrase search-based boosting elements are applied, and thus improving the accuracy of the search results of author name. This method can be effectively applied to providing accurate search results in the academic information services.
出处 《Computer Technology and Application》 2015年第2期57-63,共7页 计算机技术与应用(英文版)
关键词 Author name search information retrieval INDEXING search algorithm boosting. 学术论文 检索效率 学术信息 搜索结果 精度 名称 网络数据 信息服务
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参考文献8

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