Re-ranking for personalization using concept hierarchy in DL environment

M. Potey, S. Pawar, P. K. Sinha
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引用次数: 3

Abstract

In Digital Library (DL) system, users interact with the system to search for books or research papers. Users can search through metadata or search for information in the pages by querying using keywords. In both cases, a huge amount of results are returned; however, the relevant ones to the user are not often amongst the top few. Re-ranking of the search results based on the user's interest has received wide attention in information retrieval. This work presents extending conventional search engine to searching digital library data of user's interests. The proposed system improve information access by building knowledge about a user, acquired using the user's interaction with the system, in order to customize information access. User profiling is done using a hybrid approach by taking into consideration login details and click-through data. This system mapping framework automatically maps Dmoz Open Directory Project (ODP) topics to users' interests and takes advantage of manually edited data available in ODP, to categorize and personalize search results, according to user interests. Reranking of the results is done based on user interests. This makes it easy to find relevant DL pages faster than normal search engines. Performance has been evaluated for online DL systems. System's performance improves by 16.55% if the average per query is calculated and approximately 10% if per user average is calculated over baseline (Google CSE) after re-ranking.
在深度学习环境中使用概念层次结构进行个性化重新排序
在数字图书馆(DL)系统中,用户通过与系统交互来搜索图书或研究论文。用户可以通过元数据进行搜索,也可以通过关键字查询页面中的信息。在这两种情况下,都会返回大量的结果;然而,与用户相关的内容往往不在前几名之列。在信息检索领域,基于用户兴趣对搜索结果进行重新排序已受到广泛关注。将传统的搜索引擎扩展到用户感兴趣的数字图书馆数据的搜索。该系统通过用户与系统的交互来获取用户的相关知识,从而改进信息访问,实现信息访问的定制化。通过考虑登录细节和点击数据,使用混合方法完成用户分析。该系统映射框架自动将Dmoz开放目录项目(ODP)主题映射到用户的兴趣,并利用ODP中可用的手动编辑数据,根据用户兴趣对搜索结果进行分类和个性化。结果的重新排序是基于用户的兴趣。这使得它比普通搜索引擎更容易找到相关的DL页面。对在线DL系统的性能进行了评估。如果计算每个查询的平均值,系统性能将提高16.55%,如果在重新排名后计算每个用户的平均值(Google CSE),系统性能将提高约10%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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