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首页> 外文期刊>Turkish Journal of Electrical Engineering and Computer Sciences >Prediction of preference and effect of music on preference: a preliminary study on electroencephalography from young women
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Prediction of preference and effect of music on preference: a preliminary study on electroencephalography from young women

机译:偏好的预测和音乐对偏好的影响:年轻女性脑电图的初步研究

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Neuromarketing is the application of the neuroscientific approaches to analyze and understand economically relevant behavior. In this study, the effect of loud and rhythmic music in a sample neuromarketing setup is investigated. The second aim was to develop an approach in the prediction of preference using only brain signals. In this work, 19-channel EEG signals were recorded and two experimental paradigms were implemented: no music/silence and rhythmic, loud music using a headphone, while viewing women shoes. For each 10-sec epoch, normalized power spectral density (PSD) of EEG data for six frequency bands was estimated using the Burg method. The effect of music was investigated by comparing the mean differences between music and no music groups using independent two-sample t-test. In the preference prediction part sequential forward selection, k-nearest neighbors (k-NN) and the support vector machines (SVM), and 5-fold cross-validation approaches were used. It is found that music did not affect like decision in any of the power bands, on the contrary, music affected dislike decisions for all bands with no exceptions. Furthermore, the accuracies obtained in preference prediction study were between 77.5 and 82.5 % for k-NN and SVM techniques. The results of the study showed the feasibility of using EEG signals in the investigation of the music effect on purchasing behavior and the prediction of preference of an individual.
机译:神经营销是神经科学方法用于分析和理解与经济相关的行为的应用。在这项研究中,研究了示例性神经营销设置中响亮有节奏的音乐的影响。第二个目标是开发一种仅使用脑信号预测偏好的方法。在这项工作中,记录了19个通道的EEG信号,并实施了两个实验范例:在观看女鞋的同时,没有音乐/沉默和有节奏的大声音乐,使用耳机。对于每个10秒时间段,使用Burg方法估算六个频段的EEG数据的归一化功率谱密度(PSD)。通过使用独立的两次样本t检验比较音乐和无音乐组之间的平均差异,研究了音乐的效果。在偏好预测部分的顺序正向选择中,使用了k最近邻(k-NN)和支持向量机(SVM),以及5倍交叉验证方法。发现音乐在任何强力乐队中都不会影响喜欢的决定,相反,音乐会影响所有乐队的不喜欢决定,没有例外。此外,对于k-NN和SVM技术,在偏好预测研究中获得的准确性在77.5%至82.5%之间。研究结果表明,使用EEG信号调查音乐对购买行为的影响以及预测个人喜好的可行性。

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