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Recommendation of Multimedia Content in Digital Convergence Environments: TV and Web

机译:在数字融合环境中推荐多媒体内容:电视和网络

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摘要

he emerging scenario of interactive Digital TV (iDTV) is promoting the increase of interactivity in the communication process and also in audiovisual production, thus raising the number of channels and resources available to the user. This reality makes the task of finding the desired content becoming a costly and possibly ineffective action. The incorporation of recommender systems in the iDTV environment is emerging as a possible solution to this problem. This work aims to propose a hybrid approach to content recommendation in iDTV, based on data mining techniques, integrated to the Semantic web concepts, allowing structuring and standardization of data and consequently making possible sharing of information, providing semantics and automated reasoning. For the proposed service it is considered the Brazilian Digital TV System (SBTVD) and the middleware Ginga. A prototype has been developed and experiments carried out with NetFlix database. As results, it was obtained an average accuracy of 30% using only the data mining technique. On the other hand, the evaluation including semantic rules obtained an average accuracy of 35%.
机译:在交互式数字电视(iDTV)的新兴场景中,正在促进通信过程以及视听制作中交互性的增加,从而增加了用户可用的频道和资源的数量。这种现实使寻找所需内容的任务变得昂贵且可能无效。在iDTV环境中合并推荐系统正在成为解决此问题的一种可能方法。这项工作旨在提出一种基于iDTV的内容推荐的混合方法,该方法基于数​​据挖掘技术,并已集成到语义Web概念中,从而可以对数据进行结构化和标准化,从而可以实现信息共享,提供语义和自动推理。对于提议的服务,它被视为巴西数字电视系统(SBTVD)和中间件Ginga。已经开发了原型,并使用NetFlix数据库进行了实验。结果,仅使用数据挖掘技术就获得了30%的平均精度。另一方面,包括语义规则的评估的平均准确度为35%。

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