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Promoting the performance of vertical recommendation systems by applying new classification techniques

机译:通过应用新的分类技术来提升垂直推荐系统的性能

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摘要

Recommender systems (RSs) have proven to be valuable means for online users to cope with the information overload and have become one of the most powerful and popular tools in electronic commerce. RSs are software tools providing suggestions for items of interest to users; hence, they typically apply techniques and methodologies from Data Mining. The most frequently used technique is the classification as it matches the aims of RSs that basically classify items based on user's preferences. The main contribution of this paper is in the area of applying classification techniques to enhance the performance of RSs. In this paper, an Intelligent Adaptive Vertical Recommendation (IAVR) system will be introduced. IAVR recommends text documents related to a specific domain. Basically, the paper concentrates on the first phase of IAVR, which contains two modules; the first is a distiller, while the second is a multi-class classifier. The proposed distiller is employed as a binary classifier that elects documents related to the domain of interest. It is built upon a novel neuro-fuzzy system as well as a modified K Nearest Neighbors (KNN) classifier. On the other hand, the proposed multi-class classifier merges a new instance of Naieve Bayes (NB) classifier, that depends on a proposed learning technique called "accumulative learning", with association rules. Experimental results have proven the effectiveness of the proposed classifiers, which accordingly promote the overall system's recommendation accuracy.
机译:事实证明,推荐系统(RSs)是在线用户应对信息过载的宝贵手段,并且已成为电子商务中功能最强大和最受欢迎的工具之一。 RS是提供用户感兴趣项目建议的软件工具;因此,他们通常采用数据挖掘的技术和方法。最常用的技术是分类,因为它与RS的目的相匹配,RS的目的是基本上根据用户的偏好对项目进行分类。本文的主要贡献在于应用分类技术来增强RS的性能。在本文中,将介绍智能自适应垂直推荐(IAVR)系统。 IAVR建议与特定域相关的文本文档。基本上,本文着重于IAVR的第一阶段,该阶段包含两个模块。第一个是蒸馏器,第二个是多分类器。拟议的蒸馏器被用作二进制分类器,该分类器选择与感兴趣领域相关的文档。它建立在新颖的神经模糊系统以及改进的K最近邻居(KNN)分类器的基础上。另一方面,拟议的多类别分类器将Naieve Bayes(NB)分类器的新实例与关联规则合并,该实例依赖于拟议的称为“累积学习”的学习技术。实验结果证明了所提出分类器的有效性,从而提高了整个系统的推荐精度。

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