Qing Kunqiang, Huang Ruisen, Hong Keum-Shik
School of Mechanical Engineering, Pusan National University, Busan, South Korea.
Department of Cogno-Mechatronics Engineering, Pusan National University, Busan, South Korea.
Front Hum Neurosci. 2021 Jan 6;14:597864. doi: 10.3389/fnhum.2020.597864. eCollection 2020.
This study decodes consumers' preference levels using a convolutional neural network (CNN) in neuromarketing. The classification accuracy in neuromarketing is a critical factor in evaluating the intentions of the consumers. Functional near-infrared spectroscopy (fNIRS) is utilized as a neuroimaging modality to measure the cerebral hemodynamic responses. In this study, a specific decoding structure, called CNN-based fNIRS-data analysis, was designed to achieve a high classification accuracy. Compared to other methods, the automated characteristics, constant training of the dataset, and learning efficiency of the proposed method are the main advantages. The experimental procedure required eight healthy participants (four female and four male) to view commercial advertisement videos of different durations (15, 30, and 60 s). The cerebral hemodynamic responses of the participants were measured. To compare the preference classification performances, CNN was utilized to extract the most common features, including the mean, peak, variance, kurtosis, and skewness. Considering three video durations, the average classification accuracies of 15, 30, and 60 s videos were 84.3, 87.9, and 86.4%, respectively. Among them, the classification accuracy of 87.9% for 30 s videos was the highest. The average classification accuracies of three preferences in females and males were 86.2 and 86.3%, respectively, showing no difference in each group. By comparing the classification performances in three different combinations (like vs. so-so, like vs. dislike, and so-so vs. dislike) between two groups, male participants were observed to have targeted preferences for commercial advertising, and the classification performance 88.4% between "like" vs. "dislike" out of three categories was the highest. Finally, pairwise classification performance are shown as follows: For female, 86.1% (like vs. so-so), 87.4% (like vs. dislike), 85.2% (so-so vs. dislike), and for male 85.7, 88.4, 85.1%, respectively.
本研究在神经营销中使用卷积神经网络(CNN)对消费者的偏好水平进行解码。神经营销中的分类准确率是评估消费者意图的关键因素。功能近红外光谱(fNIRS)被用作一种神经成像方式来测量脑血流动力学反应。在本研究中,设计了一种名为基于CNN的fNIRS数据分析的特定解码结构,以实现较高的分类准确率。与其他方法相比,该方法的自动特性、数据集的持续训练以及学习效率是其主要优势。实验过程要求八名健康参与者(四名女性和四名男性)观看不同时长(15秒、30秒和60秒)的商业广告视频。测量了参与者的脑血流动力学反应。为了比较偏好分类性能,利用CNN提取最常见的特征,包括均值、峰值、方差、峰度和偏度。考虑三种视频时长,15秒、30秒和60秒视频的平均分类准确率分别为84.3%、87.9%和86.4%。其中,30秒视频的分类准确率87.9%最高。女性和男性三种偏好的平均分类准确率分别为86.2%和86.3%,每组之间没有差异。通过比较两组之间三种不同组合(喜欢与一般、喜欢与不喜欢、一般与不喜欢)的分类性能,观察到男性参与者对商业广告有针对性的偏好,在三个类别中“喜欢”与“不喜欢”之间的分类性能88.4%最高。最后,成对分类性能如下所示:女性为86.1%(喜欢与一般)、87.4%(喜欢与不喜欢)、85.2%(一般与不喜欢),男性分别为85.7%、88.4%、85.1%。