[PDF][PDF] Neuromarketing solutions based on EEG signal analysis using machine learning
International Journal of Advanced Computer Science and Applications, 2022•academia.edu
Marketing campaigns that promote and market various consumer products are a well-known
strategy for increasing sales and market awareness. This simply means the profit of a
manufacturing unit would increase." Neuromarketing" refers to the use of unconscious
mechanisms to determine customer preferences for decision-making and behavior
prediction. In this work, a predictive modeling method is proposed for recognizing product
consumer preferences to online (E-commerce) products as “Likes” and “Dislikes” …
strategy for increasing sales and market awareness. This simply means the profit of a
manufacturing unit would increase." Neuromarketing" refers to the use of unconscious
mechanisms to determine customer preferences for decision-making and behavior
prediction. In this work, a predictive modeling method is proposed for recognizing product
consumer preferences to online (E-commerce) products as “Likes” and “Dislikes” …
Abstract
Marketing campaigns that promote and market various consumer products are a well-known strategy for increasing sales and market awareness. This simply means the profit of a manufacturing unit would increase." Neuromarketing" refers to the use of unconscious mechanisms to determine customer preferences for decision-making and behavior prediction. In this work, a predictive modeling method is proposed for recognizing product consumer preferences to online (E-commerce) products as “Likes” and “Dislikes”. Volunteers of various ages were exposed to a variety of consumer products, and their EEG signals and product preferences were recorded. Artificial Neural Networks and other classifiers such as Logistic Regression, Decision Tree Classifier, K-Nearest Neighbors, and Support Vector Machine were used to perform product-wise and subject-wise classification using a user-independent testing method. Though, the subject-wise classification results were relatively low with artificial neural networks (ANN) achieving 50.40 percent and k-Nearest Neighbors achieving 60.89 percent. Furthermore, the results of product-wise classification were relatively higher with 81.23 percent using Artificial Neural Networks and 80.38 percent using Support Vector Machine.
academia.edu
以上显示的是最相近的搜索结果。 查看全部搜索结果