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A novel approach on Particle Agent Swarm Optimization (PASO) in semantic mining for web page recommender system of multimedia data: a health care perspective

机译:用于多媒体数据的网页推荐系统的语义挖掘粒子群优化(PASO)的新方法:医疗透视

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Recent decades have seen huge amounts of information collected in clinical databases for mining patients' health states from multimedia data. Since on the web diverse type of web recommendation is made obtainable toward user every day with the purpose of consists of Image, Video, Audio, query suggestion and web page. Therefore, multimedia data accessible designed for patient-oriented decision making has improved significantly however is often scattered across various sites. In this perspective, Web page recommender systems with multimedia data might provide patients with further laymen-friendly information helping toward enhanced understand their health status as represented by their record. In this research work, Web Page health recommender systems are introduced via the use of certain agents in order to provide extremely appropriate web pages for patients. The main feature of Particle Agent Swarm Optimization (PASO) is that the creation of the algorithm is denoted by a set of Particle agents who cooperate in attaining the objective of the task under consideration. In the research method, two kinds of agents are presented: web user particle agent and semantic particle agent. PASO Based Web Page Recommendation (PASO-WPR) system is an intermediate program (or a particle agent) containing a user interface, which wisely produces a collection of info that suits an individual's requirements. PASO-WPR is carried out dependent upon incorporating semantic info with data mining techniques on the web usage data as well as clustering of pages dependent upon similarity in their semantics. As the Web pages with multimedia files are viewed as ontology individuals, the pattern of patients' navigation are like instances of ontology rather than the uniform resource locators, and with the help of semantic similarity, page clustering is carried out. For producing web page recommendations to users, the outcome is utilized. The recommender engine concentrates on the semantic info and as well exploits a particle agent to reform the outcomes of web pages recommendation. Consequently, the system response time is enhanced and as a result, creating the framework scalable. The outcomes recommend that the PASO-WPR system is improved in identifying the web page that a user is about to request while matched up other approaches. The outcome proves that the presented PASO-WPR system is carried out well in regard to the accuracy measures aspects such as accuracy, coverage and M-Metric are identified to contain greater values compared to the previous item based collaborative filtering recommendation systems.
机译:近几十年来,从多媒体数据中挖掘患者的临床数据库中收集了大量信息。由于对网络不同类型的Web推荐,因此每天都可以获得用户,目的是由图像,视频,音频,查询建议和网页组成的。因此,为患者导向的决策设计提供的多媒体数据显着提高,但通常散落在各种网站上。在此透视中,具有多媒体数据的网页推荐系统可以为患者提供有助于提高其纪录所代表的卫生友好信息的患者。在本研究工作中,通过使用某些代理来引入网页健康推荐系统,以便为患者提供极其合适的网页。粒子代理群优化(PASO)的主要特征是算法的创建由一组粒子代理商表示,他们合作获得所考虑的任务的目的。在研究方法中,提出了两种药剂:网上使用者颗粒剂和语义粒子剂。基于PASO的网页推荐(PASO-WPR)系统是包含用户界面的中间程序(或粒子代理),其明智地产生适合个人要求的信息。 Paso-WPR在通过Web使用数据上与数据挖掘技术合并了语义信息以及依赖于其语义中的相似性的群集。随着具有多媒体文件的网页被视为本体个人,患者导航模式就像本体的实例,而不是统一的资源定位器,并且在语义相似度的帮助下,执行页面群集。为了为用户生产网页建议,使用结果。推荐者的发动机专注于语义信息,并开发粒子代理以改革网页推荐的结果。因此,系统响应时间得到增强,因此创建框架可扩展。结果建议在识别用户即将请求的网页时提高了Paso-WPR系统,同时匹配其他方法。结果证明,与前一个基于物品的协作过滤推荐系统相比,呈现出呈现的PASO-WPR系统,鉴于准确度,覆盖范围,覆盖率和M度量的方面,识别出更大的值。

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