...
首页> 外文期刊>Journal of Theoretical and Applied Information Technology >ASSOCIATION RULES IMPLEMENTATION FOR AFFINITY ANALYSIS BETWEEN ELEMENTS COMPOSING MULTIMEDIA OBJECTS
【24h】

ASSOCIATION RULES IMPLEMENTATION FOR AFFINITY ANALYSIS BETWEEN ELEMENTS COMPOSING MULTIMEDIA OBJECTS

机译:组成多媒体对象的元素之间进行相似性分析的关联规则的实现

获取原文
           

摘要

The multimedia objects are a constantly growing resource in the world wide web, consequently it has generated as a necessity the design of methods and tools that allow to obtain new knowledge from the information analyzed. Association rules are a technique of Data Mining, whose purpose is to search for correlations between elements of a collection of data (data) as support for decision making from the identification and analysis of these correlations. Using algorithms such as: A priori, Frequent Parent Growth, QFP Algorithm, CBA, CMAR, CPAR, among others. On the other hand, multimedia applications today require the processing of unstructured data provided by multimedia objects, which are made up of text, images, audio and videos. For the storage, processing and management of multimedia objects, solutions have been generated that allow efficient search of data of interest to the end user, considering that the semantics of a multimedia object must be expressed by all the elements that composed of. In this article an analysis of the state of the art in relation to the implementation of the Association Rules in the processing of Multimedia objects is made, in addition the analysis of the consulted literature allows to generate questions about the possibility of generating a method of association rules for the analysis of these objects.
机译:多媒体对象是万维网上不断增长的资源,因此,它必然产生了允许从所分析的信息中获得新知识的方法和工具的设计。关联规则是数据挖掘的一种技术,其目的是在数据(数据)集合的元素之间搜索关联,以从这些关联的识别和分析中为决策制定提供支持。使用算法,例如:先验,父母频繁成长,QFP算法,CBA,CMAR,CPAR等。另一方面,当今的多媒体应用需要处理由多媒体对象提供的非结构化数据,该多媒体对象由文本,图像,音频和视频组成。对于多媒体对象的存储,处理和管理,已经考虑到多媒体对象的语义必须由组成的所有元素来表达,从而产生了允许有效搜索最终用户感兴趣的数据的解决方案。在本文中,对与多媒体对象处理中关联规则的实现有关的最新技术进行了分析,此外,对参考文献的分析还允许对生成关联方法的可能性产生疑问。分析这些对象的规则。

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