基于集体智能的推荐系统通用框架

Alkesh Patel, A. Balakrishnan
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引用次数: 10

摘要

互联网用户需要一种工具来帮助他们在网上探索越来越多的内容。网络用户正在经历一场变革,他们现在表达自己的方式是通过评分、评论或评论来分享他们对某件事的看法;通过分享和标记内容;或者提供新的内容。在这种不断变化的情况下,推荐系统不仅应该呈现与上下文相关的项目或个性化的项目,还应该显示网络上其他用户的热门项目。在本文中,我们提出了一种方法,通过用户与内容、贡献和导航模式的交互,利用用户的集体智慧,最终提出最佳推荐。该算法独立于项目类型,可以应用于视频,音乐,照片,新闻,书籍,电子购物产品或任何其他类型的项目。所提出的推荐系统通过用户贡献标签、整体社区意见和用户行为中最常见的共现模式来利用集体智慧。通过用户点击推荐商品的倾向和用户消费商品的多样性来评价推荐系统的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generic framework for recommendation system using collective intelligence
Internet users are in need of a tool that helps them to explore more and more contents on the web. Web users are undergoing a transformation and they are now expressing themselves in the form of sharing their opinions on an item through ratings and reviews or comments; through sharing and tagging content; or by contributing new content. In this changing scenario, recommendation system should not only present contextually relevant items or personalized items but also show items which are hot among other users over the Web. In this paper, we propose an approach that takes users' collective intelligence through their interactions with the contents, their contribution and navigation patterns, and finally suggests best recommendations. The algorithm is independent of the type of item and can be applied to videos, music, photos, news, books, e-shopping products or any other type of items. Proposed recommendation system exploits collective intelligence through user contributed tags, overall community opinion and most common co-occurrence patterns found in users' actions. The performance of the recommendation system has been evaluated through users' tendency of clicking to the recommended items and diversity of the items being consumed by users.
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