基于语义web挖掘的web个性化模式评估协同方法

Ritu Bhargava, Abhishek Kumar, Sweta Gupta
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引用次数: 2

摘要

语义web挖掘的过程非常适用于社交媒体和网络站点,这往往会导致内容过载。个性化系统是处理大型信息系统进行信息过滤的基本要求。通过互联网和网络媒体的用户被视为内容,因此互联网和社交网络媒体是表达大量内容的最佳方式。协同过滤技术计算评级和推荐,这纯粹是基于类似用户项目及其内容的信息。本文提出的工作是一种综合技术,其结果是混合方法,其中从开放链接数据集中提取内容的特征,从而提高预测和分析的准确性。提出了一个混合原型,并将在Weka中实现,作为工作的扩展。本文讨论了社交媒体在web挖掘中的作用,以及语义web挖掘方法中内容特征检索的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative methodologies for pattern evaluation for web personalization using Semantic Web Mining
The process of semantic web mining is very much applicable in social media and networking sites which will mostly result in overloading of the content. The personalized system is required basically to deal with large information system in order to perform information filteration. The user through internet and web media are considered as content therefore internet and social networking media are the optimal way to express bulk of contents. The collaborative filtering techniques compute the ratings and recommendations which is purely based on information about similar user items and their content. The proposed work is a combined technique which results into hybrid approach, where the feature of the content extracted from open linked dataset, and result in better accuracy in the prediction and analysis. A hybrid prototype is proposed and will be implemented in Weka as extension of the work. The work discusses the role and social media in web mining and advantages of content feature retrieval for semantic web mining methodology.
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