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Prediction of advertisement preference by fusing EEG response and sentiment analysis

机译:通过融合EEG响应和情感分析预测广告偏好

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This paper presents a novel approach to predict rating of video-advertisements based on a multimodal framework combining physiological analysis of the user and global sentiment-rating available on the internet. We have fused Electroencephalogram (EEG) waves of user and corresponding global textual comments of the video to understand the user's preference more precisely. In our framework, the users were asked to watch the video-advertisement and simultaneously EEG signals were recorded. Valence scores were obtained using self-report for each video. A higher valence corresponds to intrinsic attractiveness of the user. Furthermore, the multimedia data that comprised of the comments posted by global viewers, were retrieved and processed using Natural Language Processing (NLP) technique for sentiment analysis. Textual contents from review comments were analyzed to obtain a score to understand sentiment nature of the video. A regression technique based on Random forest was used to predict the rating of an advertisement using EEG data. Finally, EEG based rating is combined with NLP-based sentiment score to improve the overall prediction. The study was carried out using 15 video clips of advertisements available online. Twenty five participants were involved in our study to analyze our proposed system. The results are encouraging and these suggest that the proposed multimodal approach can achieve lower RMSE in rating prediction as compared to the prediction using only EEG data. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文提出了一种新的方法,可以基于与互联网上可用的用户和全球情绪评级的生理框架相结合的多模式框架来预测视频广告额定值。我们有融合的脑电图(EEG)用户的波浪和视频的相应全球文本评论,以更精确地了解用户的偏好。在我们的框架中,要求用户观看视频广告,并同时记录EEG信号。使用每个视频的自我报告获得价评分。更高的价值对应于用户的内在吸引力。此外,包括由全球观众发布的评论的多媒体数据,并使用自然语言处理(NLP)技术进行情感分析。评论评论中的文本内容被分析以获得评分,以了解视频的情感性质。使用基于随机森林的回归技术来预测使用EEG数据的广告评级。最后,基于EEG的评级与基于NLP的情绪分数相结合以改善整体预测。该研究使用在线可用的15个广告视频剪辑进行。我们的研究参与了二十五位参与者,以分析我们所提出的系统。结果是令人鼓舞的,这些表明,与仅使用EEG数据的预测相比,所提出的多模方法可以实现额定值预测的较低的RMSE。 (c)2017 Elsevier Ltd.保留所有权利。

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