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A Study on Multicriteria Recommender System using Implicit Feedback and Fuzzy Linguistic Approaches

机译:利用隐含反馈和模糊语言方法研究多轨推荐系统

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The present Recommender systems have intrusiveness problem in its operations, provide less accuracy in recommendations and operate on uncertain nature of data. In order to make Recommender systems to provide effortless assistance along with accuracy in recommendations, a combined framework is proposed which combines the implicit relevance feedback, multicriteria ratings and fuzzy linguistic approaches. A Music Recommender System is developed as prototype model to evaluate the performance of the proposed approaches under the user-based and item-based prediction algorithms against different parameters namely data sparsity levels, training/test data ratio and neighbourhood sizes. From the experimental evaluation, it was observed that the fuzzy-implicit-multicriteria ratings based recommendation approach provides more recommendation accuracy than traditional and other recommendation approaches considered.
机译:目前的推荐系统在其运营中具有侵入性问题,在建议方面提供了更低的准确性,并在数据的不确定性质上运行。为了使推荐系统在建议书中提供轻度辅助,提出了一个组合的框架,其结合了隐含的相关反馈,多标准评级和模糊语言方法。音乐推荐系统被开发为原型模型,以评估基于用户的基于用户的预测算法下提出的方法的性能,反对不同的参数,即数据稀疏水平,训练/测试数据比和邻域大小。从实验评估中,观察到基于模糊的隐式多标准评级的推荐方法提供比传统和其他推荐方法更多的建议准确性。

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