Collaborative filtering recommender system base on the interaction multi-criteria decision with ordered weighted averaging operator

T. Huynh, H. Huynh, Vu The Tran, H. Huynh
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引用次数: 4

Abstract

In the recommender system, the most important is the decision-making solutionto consulte for user. Depending on the type and size of data stored, decision-making will always be improved to produce the best possible result.. The main task in implementing the model is to use methods to find the most valuable product or service for the user. In this paper, we propose a new approach to building a multi-user based collaborative filtering model using the interaction multi-criteria decision with ordered weighted averaging operator. This model demonstrates the synergy and interplay between user criteria for decision making. The model was evaluated through experimentation with the multirecsys tool on three datasets: MovieLense 100K, MSWeb and Jester5k. The experiment illustrated the model comparison with some other interactive multi-criteria counseling methods that have been researchedon both sparse datasets and thick datasets. In addition, the model is compared and evaluated with item-base collaborative filtering model using the interaction multi-criteria decision with ordered weighted averaging operator on two types of datasets. Consultancy results of the proposed model are quite effective compared to some traditional consulting models and some models with other operator. This counseling model can be applied well in a variety of contexts, especially in the case of sparse data, this model will give result in improved counseling. In addition, with the above method, the user-base model is always more efficient than item-base on all datasets.
基于有序加权平均算子的交互多准则决策协同过滤推荐系统
在推荐系统中,最重要的是为用户提供咨询的决策方案。根据存储数据的类型和大小,决策总是会得到改进,以产生最好的结果。实现该模型的主要任务是使用方法找到对用户最有价值的产品或服务。本文提出了一种基于有序加权平均算子的交互多准则决策构建多用户协同过滤模型的新方法。该模型展示了用户决策标准之间的协同作用和相互作用。该模型通过multirecsys工具在三个数据集(MovieLense 100K、MSWeb和Jester5k)上进行实验来评估。实验说明了该模型与其他一些已经在稀疏数据集和厚数据集上研究的交互式多准则咨询方法的比较。此外,在两类数据集上,采用带有序加权平均算子的交互多准则决策,对该模型与基于项目的协同过滤模型进行了比较和评价。该模型的咨询效果与传统的咨询模型和其他运营商的咨询模型相比,具有较好的效果。该咨询模型可以很好地应用于各种情况下,特别是在数据稀疏的情况下,该模型将给出改进的咨询结果。此外,使用上述方法,在所有数据集上,基于用户的模型总是比基于项目的模型更有效。
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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