基于非线性方法的高等院校合作伙伴推荐系统研究

M. Ma'ady, Purnama Anaking, Muhammad Dzulfikar Fauzi
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引用次数: 1

摘要

学术合作可以由不同的教员分组。它包括寻找相关的研究课题,收集和分析信息,建立新的研究伙伴合作。高等教育学术界的研究伙伴推荐系统可以帮助减少建立新合作所需的时间和精力。朴素贝叶斯分类以动态文本搜索作为输入值进行推荐,不仅可以提取与研究主题相关的信息,还可以提取考虑对象位置和案例研究的信息。然而,作为产出表征的分类方法在学术界并不令人满意。因此,本文提出了一种非线性的方法来提供分数值而不是类,以获得更合适的相关推荐,可以利用强大的Sigmoid激活函数。我们使用来自印度尼西亚一所私立大学信息技术与商业学院教员的实际数据来演示我们的方法。提出的基于web的系统有助于提高新用户推荐的准确性。
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Research Partner Recommender System for Academia in Higher Education using Non-Linear Approach
Academic collaboration can be grouped by different faculty members. It involves searching for relevant research topics to collect and analyze information and establishing a new research partner collaboration. A research partner recommender system for academia in higher education can help reduce the time and effort required to establish a new collaboration. Naive Bayes classification makes recommendations with dynamic text search as input values that may extract not only relevant to research topics but also object locations and case studies into consideration. However, classification as output representation is not satisfactory for academia. Therefore, this paper proposes a non-linear approach to provide a score value instead of classes for more suitable relevant recommendations that can leverage a powerful Sigmoid activation function. We demonstrate our approach using actual data from faculty members at the Faculty of Information Technology and Business in a private university in Indonesia. The proposed web-based system helps increase recommendation accuracy for new users.
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