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Prediction of Standing Ovation of TED Technology Talks

机译:TED技术会谈的常态预测

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摘要

This research aims at the prediction of whether speeches of TED talk can cause audience standing ovation after the end of the talk. The phenomenon of audience standing ovation that we can see in TED talk is one of the objective evidence of the effect that speeches give to audience. We gathered TED talk data that we used as data to experiment the prediction. The methods of this present research consist of quantitative analysis according to speech content and machine learning technique by convolutional neural network. As a result, we achieved 77.11% accuracy and 0.63 F-measure from the prediction using TED talks of Technology topic. Our method used in this study is useful to predict occurrences of standing ovations, although improvement is necessary. Compared to other studies, our contribution, on the one hand, is that we focused on speech content as the effect of standing ovation. On the other hand, we incorporated quantitative analysis especially in terms of what features are effective to standing ovation and eventually apply those features to machine learning technique.
机译:这项研究旨在预测TED演讲的讲话是否会在演讲结束后引起听众鼓掌。我们在TED演讲中可以看到观众站立鼓掌的现象,这是演讲对观众产生影响的客观证据之一。我们收集了TED演讲数据,并将其用作数据来对预测进行实验。本研究的方法包括根据语音内容的定量分析和通过卷积神经网络的机器学习技术。结果,通过使用TED的技术话题的预测,我们达到了77.11%的准确度和0.63 F测度。尽管有必要进行改进,但我们在本研究中使用的方法可用于预测站立排卵的发生。与其他研究相比,我们的贡献是,一方面,我们专注于语音内容作为站立鼓掌的作用。另一方面,我们结合了定量分析,尤其是在哪些功能对立式起搏有效的方面进行了定量分析,并最终将这些功能应用于机器学习技术。

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