A Predicting Model of TV Audience Rating Based on the Facebook

Yu-Hsuan Cheng, C. Wu, Tsun Ku, Gwo-Dong Chen
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引用次数: 13

Abstract

TV audience rating is an important indicator regarding the popularity of programs and it is also a factor to influence the revenue of broadcast stations via advertisements. Presently, the only way for assessing audience rating is the Nielsen TV rating, which depends on a small number of randomly selected representative groups, because of practical considerations such as cost and survey time. The way to obtain audience rating is using 'People-meter' which is a device installed in user's house and regularly records the rating surveys. However, we are not able to know the audience rating immediately since sometimes we have to make a marketing decision and lack of indicator. Currently, the present media environments are drastically changing our media consumption patterns. We can watch TV programs on Youtube regardless location and timing. And Nielsen TV audience rating does not take the social networking site into account. In this paper, we develop a model for predicting TV audience rating. We accumulate the broadcasted TV programs' word-of-mouse on Facebook and apply the Back-propagation Network to predict the latest program audience rating. We also present the audience rating trend analysis on demo system which is used to describe the relation between predictive audience rating and Nielsen TV rating.
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基于Facebook的电视收视率预测模型
电视收视率是衡量节目受欢迎程度的一个重要指标,也是影响广播电台广告收入的一个因素。目前,收视率评估的唯一方法是尼尔森电视收视率,由于成本和调查时间等实际考虑,它依赖于随机选择的少数代表性群体。获得收视率的方法是使用“People-meter”,这是一个安装在用户家中的设备,并定期记录收视率调查。然而,我们不能立即知道收视率,因为有时我们必须做出营销决策,缺乏指标。当前的媒体环境正在极大地改变着我们的媒体消费模式。我们可以在Youtube上观看电视节目,无论地点和时间。尼尔森电视收视率并没有把社交网站考虑在内。在本文中,我们开发了一个预测电视收视率的模型。我们在Facebook上积累播出的电视节目的口碑,并运用反向传播网络预测最新的节目收视率。我们还对演示系统的收视率趋势进行了分析,用来描述预测收视率与尼尔森电视收视率之间的关系。
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