Learning and modelling user interests using user feedback : A novel approach

Tarek Alloui, I. Boussebough, A. Chaoui
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Abstract

User profiles and interests have become essential for personalizing information search and retrieval. Indeed, traditional Information Retrieval Systems (IRS) don't integrate the user in the search process. Also, users do not always find what they need after a single query. Instead, they often issue multiple queries, incorporating what they learned from the previous results to iterate and refine how they express their information needs. So we rely on this process to learn the user information needs without asking him explicitly. This is achieved by capturing his judgments on the retrieved results. We consider also, in the construction of the user interests, what he is looking for and what the user doesn't want to find in the future results to build interests that best match his information needs.
使用用户反馈学习和建模用户兴趣:一种新颖的方法
用户档案和兴趣已成为个性化信息搜索和检索的必要条件。事实上,传统的信息检索系统(IRS)并没有将用户整合到搜索过程中。此外,用户并不总是在一次查询后找到他们需要的东西。相反,他们经常发出多个查询,结合他们从以前的结果中学到的东西来迭代和改进他们如何表达他们的信息需求。所以我们依靠这个过程来了解用户的信息需求,而不需要明确地问他。这是通过捕获他对检索结果的判断来实现的。在构建用户兴趣时,我们还会考虑用户在未来的结果中寻找什么和不希望找到什么,以构建最符合其信息需求的兴趣。
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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