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Personalized Recommendation Approach for Academic Literature Using High-Utility Itemset Mining Technique

机译:使用高效项目集专业技术的学术文献的个性化推荐方法

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As the size of digital academic library is increasing enormously, it has become arduous for the researchers to identify the papers of their interest from this repository. This has escalated researcher's attention toward the implementation of Recommender Systems (RS) in academic literature domain. The content-based and collaborative filtering-based techniques when applied in the academic literature domain, fail in reflecting the researcher's personalized preferences in terms of recentness, popularity, etc. This article presents a Personalized Recommendation Approach for Academic Literature which is based on High-Utility Itemset Mining (HUIM) Technique. This approach uses the content of the paper along with user's personalized preference, for making recommendations. Here, we have utilized a highly efficient HUIM algorithm, EFIM, which has been recently introduced in the literature, to mine the papers having higher utility to the user. Experimental evaluation proves that our work satisfies the researcher's personalized requirements and also outperforms the existing personalized research paper recommender systems in terms of its time and space complexities.
机译:随着数字学术图书馆的规模很大,研究人员对他们的兴趣的文件造成了艰巨。这促使研究员注意在学术文献领域的推荐系统(RS)的实施。基于内容和基于协作的过滤的技术在学术文学领域应用,反映了研究人员在近期,人气等方面的个性化偏好。本文提出了基于高级学术文学的个性化推荐方法,这是基于高的 - 公用事业项目集矿业(HUIM)技术。此方法使用纸张的内容以及用户的个性化偏好,以提出建议。在这里,我们利用了高效的Huim算法,EFIM,其最近在文献中引入,以挖掘对用户具有更高效用的论文。实验评估证明,我们的工作满足了研究人员的个性化需求,并在其时间和空间复杂性方面优于现有的个性化研究纸张推荐系统。

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