Benchmarking for Recommender System (MFRISE)

M. Mali, D. Mishra, M. Vijayalaxmi
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引用次数: 0

Abstract

The advent of the internet age offers overwhelming choices of movies and shows to viewers which create need of comprehensive Recommendation Systems (RS). Recommendation System will suggest best content to viewers based on their choice using the methods of Information Retrieval, Data Mining and Machine Learning algorithms. The novel Multifaceted Recommendation System Engine (MFRISE) algorithm proposed in this paper will help the users to get personalized movie recommendations based on multi-clustering approach using user cluster and Movie cluster along with their interaction effect. This will add value to our existing parameters like user ratings and reviews. In real-world scenarios, recommenders have many non-functional requirements of technical nature. Evaluation of Multifaceted Recommendation System Engine must take these issues into account in order to produce good recommendations. The paper will show various technical evaluation parameters like RMSE, MAE and timings, which can be used to measure accuracy and speed of Recommender system. The benchmarking results also helpful for new recommendation algorithms. The paper has used MovieLens dataset for purpose of experimentation. The studied evaluation methods consider both quantitative and qualitative aspects of algorithm with many evaluation parameters like mean squared error (MSE), root mean squared error (RMSE), Test Time and Fit Time are calculated for each popular recommender algorithm (NMF, SVD, SVD++, SlopeOne, Co- Clustering) implementation. The study identifies the gaps and challenges faced by each above recommender algorithm. This study will also help researchers to propose new recommendation algorithms by overcoming identified research gaps and challenges of existing algorithms.
推荐系统(MFRISE)的基准测试
互联网时代的到来为观众提供了大量的电影和节目选择,这就产生了对综合推荐系统(RS)的需求。推荐系统将使用信息检索、数据挖掘和机器学习算法,根据观众的选择向他们推荐最佳内容。本文提出的多层推荐系统引擎(MFRISE)算法将利用用户集群和电影集群及其交互效应,基于多聚类方法帮助用户获得个性化的电影推荐。这将为我们现有的参数(如用户评分和评论)增加价值。在实际场景中,推荐器有许多技术性的非功能需求。评价多面推荐系统引擎必须考虑到这些问题,才能产生好的推荐。本文将展示各种技术评价参数,如RMSE, MAE和timings,可以用来衡量推荐系统的准确性和速度。基准测试结果也有助于新的推荐算法。本文使用MovieLens数据集进行实验。所研究的评价方法考虑了算法的定量和定性两个方面,对每个流行的推荐算法(NMF、SVD、svd++、SlopeOne、Co- Clustering)实现计算了许多评价参数,如均方误差(MSE)、均方根误差(RMSE)、测试时间(Test Time)和拟合时间(Fit Time)。该研究确定了上述每种推荐算法面临的差距和挑战。本研究还将通过克服现有算法的研究空白和挑战,帮助研究人员提出新的推荐算法。
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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