另类驱动研究论文推荐系统框架

Maake Benard Magara, S. Ojo, T. Zuva
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引用次数: 4

摘要

文献,特别是以研究为导向的出版物的数量正以指数速度增长,需要更好的工具和方法来高效率和有效地检索所需的文件。学术搜索引擎、数字图书馆和档案的发展带来了更好的信息过滤机制,从而改善了搜索结果。然而,目前最先进的研究论文推荐系统仍然在检索研究论文时没有明确定义研究人员感兴趣的领域。此外,在搜索、查询、检索和推荐文章的过程中,也没有使用丰富的研究输出(研究对象)及其相关指标。因此,大量不相关和不相关的信息呈现给用户。然而,使用引用计数对研究论文进行排名和推荐给用户仍然存在争议。推荐指标,如引文计数、协同过滤中的评级和关键字分析,不能完全依赖于作为计算文档之间相似性的唯一技术,这是因为基于这些指标的推荐不准确,而且有很多偏差。因此,基于替代计量的技术和方法有望提供更好的研究论文的建议,因为研究论文周围的情况被考虑在内。为了提高科研论文推荐系统的性能,本文提出了一个利用论文本体和Altmetric的科研论文推荐系统框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward Altmetric-Driven Research-Paper Recommender System Framework
The volume of literature and more particularly research-oriented publications is growing at an exponential rate, and better tools and methodologies are required to efficiently and effectively retrieve desired documents. The development of academic search engines, digital libraries and archives has led to better information filtering mechanisms that has resulted to improved search results. However, the state-of-the art research-paper recommender systems are still retrieving research articles without explicitly defining the domain of interest of the researchers. Also, a rich set of research output (research objects) and their associated metrics are also not being utilized in the process of searching, querying, retrieving and recommending articles. Consequently, a lot of irrelevant and unrelated information is being presented to the user. Then again, the use of citation counts to rank and recommend research-paper to users is still disputed. Recommendation metrics like citation counts, ratings in collaborative filtering, and keyword analysis' cannot be fully relied on as the only techniques through which similarity between documents can be computed, and this is because recommendations based on such metrics are not accurate and have lots of biasness. Henceforth, altmetric-based techniques and methodologies are expected to give better recommendations of research papers since the circumstances surrounding a research papers are taken into consideration. This paper proposes a research paper recommender system framework that utilizes paper ontology and Altmetric from research papers, to enhance the performance of research paper recommender systems.
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