...
首页> 外文期刊>ScientificWorldJournal >Effective Filtering of Query Results on Updated User Behavioral Profiles in Web Mining
【24h】

Effective Filtering of Query Results on Updated User Behavioral Profiles in Web Mining

机译:在Web采矿中更新用户行为配置文件的查询结果有效过滤

获取原文
           

摘要

Web with tremendous volume of information retrieves result for user related queries. With the rapid growth of web page recommendation, results retrieved based on data mining techniques did not offer higher performance filtering rate because relationships between user profile and queries were not analyzed in an extensive manner. At the same time, existing user profile based prediction in web data mining is not exhaustive in producing personalized result rate. To improve the query result rate on dynamics of user behavior over time, Hamilton Filtered Regime Switching User Query Probability (HFRS-UQP) framework is proposed. HFRS-UQP framework is split into two processes, where filtering and switching are carried out. The data mining based filtering in our research work uses the Hamilton Filtering framework to filter user result based on personalized information on automatic updated profiles through search engine. Maximized result is fetched, that is, filtered out with respect to user behavior profiles. The switching performs accurate filtering updated profiles using regime switching. The updating in profile change (i.e., switches) regime in HFRS-UQP framework identifies the second- and higher-order association of query result on the updated profiles. Experiment is conducted on factors such as personalized information search retrieval rate, filtering efficiency, and precision ratio.
机译:具有巨大信息量的网络检索用户相关查询的结果。随着网页推荐的快速增长,基于数据挖掘技术检索的结果没有提供更高的性能过滤速率,因为用户简档和查询之间的关系未以广泛的方式分析。同时,在Web数据挖掘中的现有用户个人资料的预测在产生个性化结果速率方面并不穷。为了提高用户行为动态的查询结果率随着时间的推移,汉密尔顿过滤了政权切换用户查询概率(HFRS-UQP)框架。 HFRS-UQP框架分为两个进程,其中执行过滤和切换。我们的研究工作中基于数据的挖掘使用Hamilton过滤框架根据搜索引擎的自动更新配置文件的个性化信息来过滤用户结果。获取最大化结果,即,在用户行为配置文件中过滤滤除。交换机使用制度切换执行准确过滤更新的配置文件。 HFRS-UQP框架中的配置文件更改(即,交换机)制度更新标识更新配置文件上的第二顺序和高阶和高阶的查询关联。实验是对个性化信息搜索检索率,过滤效率和精密比等因素进行的。

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