A Collaborative Filtering based Recommender System for Suggesting New Trends in Any Domain of Research

M. V. Murali, T. Vishnu, Nancy Victor
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引用次数: 20

Abstract

Recommender system, an information filtering technology used in many items is presented in web sites as per the interest of users, and is implemented in applications like movies, music, venue, books, research articles, tourism and social media in general. In today’s world, time has more value and the researchers have no much time to spend on searching for the right articles according to their research domain. More than 250 research paper recommender systems were published and the quantity of research papers published every day is increasing rapidly. Thus it needs an efficient searching and filtering mechanism to choose the quality research papers, so that the effort and time of researchers can be saved. The recommender system proposed here uses three major factors used for building this system which includes datasets, prediction rating based on users and cosine similarity. The ratings are made by user which will be determined by the number of accurate ratings they provide. The results are then sorted by using cosine similarity. We propose a research-paper recommender system using collaborative filtering approach to recommend a user with best research papers in their domain according to their queries and based on the similarities found from other users on the basis of their queries, which will help in avoiding time consuming searches for the user.
一种基于协同过滤的推荐系统,可在任何研究领域提出新趋势
推荐系统是一种应用于许多项目的信息过滤技术,它根据用户的兴趣在网站上呈现,在电影、音乐、场地、书籍、研究文章、旅游和一般的社交媒体等应用中都有实现。在当今世界,时间更有价值,研究人员没有太多的时间花在根据自己的研究领域搜索合适的文章上。科研论文推荐系统已发布250多个,每天发表的科研论文数量在快速增长。因此,需要一种高效的搜索和过滤机制来选择优质的研究论文,从而节省研究人员的精力和时间。本文提出的推荐系统使用了用于构建该系统的三个主要因素,包括数据集、基于用户的预测评级和余弦相似度。评级是由用户做出的,这将取决于他们提供的准确评级的数量。然后使用余弦相似度对结果进行排序。我们提出了一种采用协同过滤方法的研究论文推荐系统,根据用户的查询和其他用户在查询基础上发现的相似度,为用户推荐在其领域内最好的研究论文,这将有助于避免用户耗时的搜索。
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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