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首页> 外文期刊>International Journal of Industrial Engineering & Production Research >Use of Semantic Similarity and Web Usage Mining to Alleviate the Drawbacks of User-Based Collaborative Filtering Recommender Systems
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Use of Semantic Similarity and Web Usage Mining to Alleviate the Drawbacks of User-Based Collaborative Filtering Recommender Systems

机译:使用语义相似性和Web使用率挖掘来减轻基于用户的协作过滤推荐系统的弊端

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One of the most famous methods for recommendation is user-based Collaborative Filtering (CF). This system compares active user's items rating with historical rating records of other users to find similar users and recommending items which seems interesting to these similar users and have not been rated by the active user. As a way of computing recommendations, the ultimate goal of the user-based collaborative filtering is recommending items with the high accuracy and coverage degree. Nevertheless, some famous limitations are obstacles to meet them. They are Scalability, Sparseness and new item problems. Scalability problem can be handled with the use of Data Mining techniques like clustering. However, use of this technique often leads to the lower recommendation accuracy. Nevertheless, two other problems still remain. Involving Semantic knowledge can increase the performance of recommendation in sparseness and New-Item Problem conditions as well. This paper presents a new approach to deal with the drawbacks of userbased CF systems for web pages recommendation by Combination of Semantic Knowledge with Web Usage Mining (WUM). Semantic knowledge of web pages are extracted and subsequently incorporated into the navigation patterns of each cluster which obtained from clustering the access sessions to get the Semantic Patterns of each cluster. The cluster with the most relevant semantic pattern is chosen with the comparison of semantic representation of the active user session with the semantic patterns and the proper web pages are recommended based on a switching recommendation engine. This engine recommends a list of appropriate recommendations. Results of the implementation of this hybrid web recommender system indicates that this combined approach yields better results in both accuracy and coverage metrics and also has a considerable capability to handle collaborative filtering recommender system for its typical shortcomings.
机译:推荐的最著名方法之一是基于用户的协作过滤(CF)。该系统将活动用户的项目评分与其他用户的历史评分记录进行比较,以找到相似的用户,并推荐这些相似用户感兴趣但未被活动用户评分的项目。作为计算推荐的一种方式,基于用户的协作过滤的最终目标是推荐具有高精度和覆盖度的项目。然而,一些著名的限制是实现它们的障碍。它们是可伸缩性,稀疏性和新项目问题。可伸缩性问题可以通过使用数据挖掘技术(例如集群)来解决。但是,使用此技术通常会导致推荐准确性降低。但是,仍然存在另外两个问题。涉及语义知识也可以提高推荐在稀疏和新问题问题条件下的表现。本文提出了一种新方法,通过结合语义知识和Web用法挖掘(WUM)来解决基于用户的CF系统推荐网页的弊端。提取网页的语义知识,然后将其合并到每个集群的导航模式中,该导航模式是通过对访问会话进行聚类获得的,以获取每个集群的语义模式。通过将活动用户会话的语义表示与语义模式进行比较,选择具有最相关语义模式的集群,并基于切换推荐引擎来推荐适当的网页。该引擎建议适当建议的列表。此混合Web推荐器系统的实施结果表明,这种组合方法在准确性和覆盖率指标上均能产生更好的结果,并且还具有处理协作式筛选推荐器系统的典型缺陷的强大功能。

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