基于bci的单通道商用脑电设备消费者偏好预测

Farhan Ishtiaque, Fazla Rabbi Mashrur, Mohammad Touhidul Islam Miya, Khandoker Mahmudur Rahman, R. Vaidyanathan, S. Anwar, F. Sarker, K. Mamun
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引用次数: 0

摘要

脑机接口(BCI)技术在神经营销中被用来研究消费者对营销刺激的反应。这有助于评估市场刺激,这是传统上使用市场研究程序完成的。基于脑机接口的神经营销有望取代这些耗时且昂贵的传统营销研究程序。尽管基于脑机接口的神经营销有其困难,因为脑电图设备不方便用于消费级应用。本研究利用脑电图讯号预测消费者对某产品的情感态度(AA)及购买意向(PI)。采用单通道消费级脑电图仪采集4名健康受试者在3种不同类型的营销刺激下的脑电图信号;产品、促销和代言。对脑电信号进行预处理,提取多域特征。采用基于支持向量机的递归特征消去法,从中选出52个特征。使用SMOTE算法对数据集进行平衡。使用支持向量机(SVM)对积极、消极情感态度和购买意愿进行分类。该模型对情感态度和购买意愿的准确率分别达到了88.2%和80.4%,证明了消费级脑机接口设备在神经营销中的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BCI-based Consumers’ Preference Prediction using Single Channel Commercial EEG Device
Brain-Computer Interface (BCI) technology is used in neuromarketing to learn how consumers respond to marketing stimuli. This helps evaluate the marketing stimuli which is traditionally done using marketing research procedures. BCI-based neuromarketing promises to replace these traditional marketing research procedures which are time-consuming and costly. Although BCI-based neuromarketing has its difficulty as EEG devices are inconvenient for consumer-grade applications. This study is performed to predict consumers’ affective attitude (AA) and purchase intention (PI) toward a product using EEG signals. EEG signals are collected using a single channel consumer-grade EEG device from 4 healthy participants while they are subject to 3 different types of marketing stimuli; product, promotion, and endorsement. Multi-domain features are extracted from the EEG signals after pre-processing. 52 features are selected among those using SVM-based Recursive Feature Elimination. SMOTE algorithm is used to balance out the dataset. Support Vector Machine (SVM) is used to classify positive and negative affective attitude and purchase intention. The model manages to achieve an accuracy of 88.2% for affective attitude and 80.4% for purchase intention proving the viability of consumer-grade BCI devices in neuromarketing.
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