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A Hybrid Approach for Recommender Systems in a Proximity Based Social Network

机译:基于邻近社交网络中推荐系统的混合方法

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Being one of the latest trends in technology, big data is proving to be fundamental in various fields and domains. Analyzing the large volume of data leads to fruitful information and depicts new methods of achieving growth and innovation in this competitive world. Similarly, analyzing large data sets from social media can enhance recommendations provided by recommender systems in a proximity based social network. This research work presents a hybrid approach for performing recommendations in a proximity based social network by using three recommendation techniques namely Content-based filtering, Collaborative filtering and Link Analysis. Additionally, big data from social media is analyzed to enhance the recommendations. The Hadoop ecosystem is used to help for processing large datasets. A prototype has been implemented and evaluated.
机译:作为技术的最新趋势之一,大数据已被证明是各个领域和领域的基础。分析大量数据可带来丰富的信息,并描述了在这个竞争激烈的世界中实现增长和创新的新方法。类似地,分析来自社交媒体的大数据集可以增强由基于邻近的社交网络中的推荐器系统提供的推荐。这项研究工作提出了一种混合方法,可通过使用三种推荐技术在基于邻近性的社交网络中执行推荐,即基于内容的过滤,协作过滤和链接分析。此外,还将分析来自社交媒体的大数据以增强建议。 Hadoop生态系统用于帮助处理大型数据集。原型已经实现并评估。

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