首页> 外文期刊>International Journal of Computer Trends and Technology >Semantic Search Log for Social Personalized Search
【24h】

Semantic Search Log for Social Personalized Search

机译:社交个性化搜索的语义搜索日志

获取原文

摘要

Personalization of webbased information systems based on specialized user models has become more important in order to preserve the effectiveness of their use as the amount of available content increases. In this system, we are proposing a novel technique called as Semantic Search log for Social Personalized Search. This novel technique is used to provide results for search query that relates to a particular user’s background, his area of interests, his likes and dislikes, the data he/she might have found to be useful for him while searching. In our system, supervised learning method is used for learning purpose. It is learn about the user based upon his interactions inside the system. User can give their basic information in their profile and get benefits from their each and every search. Inorder to obtain the semantics of videos; video extraction based on the fuzzyontology and rule based model is used in this project. When the user searches a keyword using the search engine inside the social network, according to the ontological profile of the user and displays the personalized search results. Our system can able to intelligently identify whether a search result has been useful to him or not and save it for his future reference when he searches for the same or similar keyword next time. From the experimental result, we obtain our system has high efficiency compared to other personalized search engine.
机译:随着可用内容数量的增加,基于专业用户模型的基于Web的信息系统的个性化变得越来越重要,以保持其使用的有效性。在此系统中,我们提出了一种称为“社交社会个性化搜索的语义搜索日志”的新技术。这项新颖的技术可用于为搜索查询提供与特定用户的背景,他的兴趣范围,他的喜好以及他/她在搜索时可能发现对他有用的数据有关的结果。在我们的系统中,监督学习方法用于学习目的。它基于用户在系统内部的交互来了解用户。用户可以在个人资料中提供其基本信息,并从每次搜索中受益。为了获得视频的语义;该项目使用基于模糊本体和基于规则的模型的视频提取。当用户使用社交网络内部的搜索引擎搜索关键字时,根据用户的本体轮廓,显示个性化搜索结果。我们的系统能够智能地识别搜索结果是否对他有用,并在他下次搜索相同或相似的关键字时将其保存以供将来参考。从实验结果来看,与其他个性化搜索引擎相比,我们的系统效率更高。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号