A Fuzzy-Based Approach for Modelling Preferences of Users in Multi-Criteria Recommender Systems

Mohamed Hamada, N. Odu, Mohammed Hassan
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引用次数: 9

Abstract

Recommender systems (RSs) are web-based tools that use various machine learning and filtering methods to propose useful items for users. Several techniques have been used to develop such a system for generating a list of useful recommendations. Traditionally, RSs use a single rating to represent preferences of a user on an item. A multi-criteria recommendation is a new technique that recommends items to users based on multiple attributes of the items. This technique has been used to solve many recommendation problems. Its predictive performance has been tested and proved to be more efficient than the traditional approach. However, this paper presents a model that is based on the architecture and main features of fuzzy sets and systems. Fuzzy logic (FL) is widely known for its application in different fields of study with its main advantage being that it does not need a lot of training data and its ability to combine human heuristics into the computer-assisted decision making process. FL is highly applicable in the domain of RS. The proposed study is to test and provide the predictive performance of the fuzzy-based multi-criteria technique and compare it with a single rating RS. Experimental results on real-world datasets from Yahoo! Movies proved that the proposed technique has remarkably improved the accuracy of the system
基于模糊的多准则推荐系统用户偏好建模方法
推荐系统(RSs)是基于web的工具,它使用各种机器学习和过滤方法为用户推荐有用的项目。已经使用了几种技术来开发这样一个生成有用推荐列表的系统。传统上,RSs使用单个评级来表示用户对某项的偏好。多标准推荐是一种基于物品的多个属性向用户推荐物品的新技术。该技术已被用于解决许多推荐问题。该方法的预测性能已经过测试,证明比传统方法更有效。然而,本文提出了一个基于模糊集和系统的结构和主要特征的模型。模糊逻辑(FL)因其在不同研究领域的应用而广为人知,其主要优点是不需要大量的训练数据,并且能够将人类的启发式方法结合到计算机辅助决策过程中。FL在RS领域非常适用。本文提出的研究是测试和提供基于模糊的多标准技术的预测性能,并将其与单一评级RS进行比较。实验证明,该方法显著提高了系统的精度
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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