A Hybrid Recommendation Technique for Big Data Systems

Chitra Nundlall, Gopal Sohun, S. Nagowah
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引用次数: 5

Abstract

Recommender systems are engines that recommend new items to users by analyzing their preferences. The web contains a large amount of information in the form of ratings, reviews, feedback on items and other unstructured data. These details are extracted to get meaningful information of users. Collaborative filtering and content-based filtering are two common approaches being used to make recommendations. The paper aims to introduce a hybrid recommendation technique for Big Data Systems. The approach combines collaborative and content-based filtering techniques to recommend items that a user would most likely prefer. It additionally uses items ranking and classification technique for recommending the items. Moreover, social media opinion mining is added as a top-up to derive user sentiments from user’s posts and become knowledgeable about users’ tastes hidden within social media. A prototype has been implemented and evaluated based on the recommendation techniques.
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面向大数据系统的混合推荐技术
推荐系统是通过分析用户的偏好向用户推荐新产品的引擎。网络包含了大量的信息,包括评分、评论、对物品的反馈和其他非结构化数据。对这些细节进行提取,得到有意义的用户信息。协作过滤和基于内容的过滤是两种常用的推荐方法。本文旨在介绍一种用于大数据系统的混合推荐技术。该方法结合了协作和基于内容的过滤技术来推荐用户最有可能喜欢的项目。它还使用项目排名和分类技术来推荐项目。此外,增加了社交媒体意见挖掘作为补充,从用户的帖子中获取用户情绪,了解隐藏在社交媒体中的用户品味。基于推荐技术实现了一个原型并对其进行了评估。
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