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Automatic and personalized recommendation of TV program contents using sequential pattern mining for smart TV user interaction

机译:使用顺序模式挖掘进行智能电视用户交互的自动和个性化电视节目内容推荐

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摘要

Due to the excessive number of TV program contents available at user's side,efficient access to the preferred TV program content becomes a critical issue for smart TV user interaction.In this paper,we propose an automatic recommendation scheme of TV program contents in sequence using sequential pattern mining (SPM).Motivation of sequential TV program recommendation is based on TV viewer's behaviors for watching multiple TV program contents in a row.A sequence of TV program contents for recommendation to a target user is constructed based on the features such as an occurrence and net occurrence of frequently watched TV program contents from the similar user group to which the target user belongs.Three types of SPM methods are presented-offline,online and hybrid SPM.To extract sequential patterns of preferably watched TV program contents,we propose a preference weighted normalized modified retrieval rank (PW-NMRR) metric for similar user clustering.In the offline SPM method,we effectively construct the sequential patterns for recommendation using a projection method,which yields good performance for relatively longer sequential patterns.The online SPM method mines sequential patterns online by effectively reflecting the recent preference characteristics of users for TV program contents,which is effective for short-sequence recommendation.The hybrid SPM method combines the offline and online SPM methods.The maximum precisions of 0.877,0.793 and 0.619 for length-1,-2 and -3 sequence recommendations are obtained from the online,hybrid and offline SPM methods,respectively.
机译:由于用户端可用的电视节目内容过多,有效访问首选电视节目内容成为智能电视用户交互的关键问题。本文提出了一种基于顺序的电视节目内容自动推荐方案模式挖掘(SPM)。顺序电视节目推荐的动机基于电视观众连续观看多个电视节目内容的行为,并根据事件的特征构建了向目标用户推荐的电视节目内容序列提出了三种SPM方法:离线,在线和混合SPM。为了提取优先观看电视节目内容的顺序模式,我们提出了一种SPM方法。相似用户聚类的偏好加权归一化修正检索等级(PW-NMRR)度量。在离线SPM方法中,我们有效地y使用投影方法构造推荐的顺序模式,这对于较长的顺序模式具有良好的性能。在线SPM方法通过有效地反映用户对电视节目内容的近期喜好特征,在线挖掘顺序模式,这对于短时有效。混合SPM方法结合了离线和在线SPM方法。分别通过在线,混合和离线SPM方法获得长度1,2和-3序列推荐的最大精度为0.877、0.793和0.619。

著录项

  • 来源
    《Multimedia Systems》 |2013年第6期|527-542|共16页
  • 作者单位

    Department of Information and Communications Engineering,Korea Advanced Institute Science and Technology,Daejeon,Republic of Korea;

    Department of Electrical Engineering,Korea Advanced Institute Science and Technology,Daejeon,Republic of Korea;

    Department of Information and Communications Engineering,Korea Advanced Institute Science and Technology,Daejeon,Republic of Korea,Department of Electrical Engineering,Korea Advanced Institute Science and Technology,Daejeon,Republic of Korea;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Recommendation; TV Personalization; Sequential pattern mining; Data mining; Intelligent TV user interfaces;

    机译:建议;电视个性化;顺序模式挖掘;数据挖掘;智能电视用户界面;
  • 入库时间 2022-08-18 02:06:19

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