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Predicting musically induced emotions from physiological inputs: linear and neural network models

机译:从生理输入预测音乐诱发的情感:线性和神经网络模型

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摘要

Listening to music often leads to physiological responses. Do these physiological responses contain sufficient information to infer emotion induced in the listener? The current study explores this question by attempting to predict judgments of “felt” emotion from physiological responses alone using linear and neural network models. We measured five channels of peripheral physiology from 20 participants—heart rate (HR), respiration, galvanic skin response, and activity in corrugator supercilii and zygomaticus major facial muscles. Using valence and arousal (VA) dimensions, participants rated their felt emotion after listening to each of 12 classical music excerpts. After extracting features from the five channels, we examined their correlation with VA ratings, and then performed multiple linear regression to see if a linear relationship between the physiological responses could account for the ratings. Although linear models predicted a significant amount of variance in arousal ratings, they were unable to do so with valence ratings. We then used a neural network to provide a non-linear account of the ratings. The network was trained on the mean ratings of eight of the 12 excerpts and tested on the remainder. Performance of the neural network confirms that physiological responses alone can be used to predict musically induced emotion. The non-linear model derived from the neural network was more accurate than linear models derived from multiple linear regression, particularly along the valence dimension. A secondary analysis allowed us to quantify the relative contributions of inputs to the non-linear model. The study represents a novel approach to understanding the complex relationship between physiological responses and musically induced emotion.
机译:听音乐通常会导致生理反应。这些生理反应是否包含足够的信息以推断听众的情绪?当前的研究通过尝试仅使用线性和神经网络模型从生理反应中预测“感觉”情绪的判断来探索这个问题。我们测量了来自20位参与者的五个周边生理通道-心率(HR),呼吸作用,皮肤电反应以及瓦楞纸超人和肌主要面部肌肉的活动。使用价和唤醒(VA)维度,参与者在听完12首古典音乐摘录中的每一个之后,对他们的感觉情感进行了评分。从五个渠道中提取特征后,我们检查了它们与VA评分的相关性,然后进行了多元线性回归,以查看生理反应之间的线性关系是否可以解释评分。尽管线性模型预测了唤醒评级的显着差异,但线性价模型却无法做到。然后,我们使用神经网络来提供评分的非线性说明。该网络接受了12个摘录中的8个摘录的平均评分训练,其余部分进行了测试。神经网络的性能证实,单独的生理反应可以用来预测音乐诱发的情绪。从神经网络得出的非线性模型比从多重线性回归得出的线性模型更准确,尤其是沿价数维。二次分析使我们能够量化输入对非线性模型的相对贡献。这项研究代表了一种理解生理反应和音乐诱发的情感之间复杂关系的新颖方法。

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