The influence of neuromarketing: machine learning based empirical analysis
Abstract
This study attempts to investigate the topic of neuromarketing and how it has be come an emerging topic that might be used as a tool for market research. Both
academic writing and real-world marketing are embracing neuromarketing. Addi tionally, it applies brain science to a management setting. It looks after the theoret ical contribution of neuromarketing which comprehends modern consumer response
to marketing stimuli. Again, the research in the field of neuromarketing looks at
how people’s brains respond to marketing strategies. Researchers use methods like
FMRI, EEG and eye tracking to study why consumers may claim to desire one
thing but ultimately make choices depending on their feelings. In order to under stand how customers’ bodies, thoughts, emotions and inner selves are engaged in
decision making, the research will use neuromarketing strategies. Additionally, it
covers the expanding use of neuromarketing across sectors and lists the top neu romarketing firms in each. Also, it analyzes the expanding use of neuromarketing
across a range of sectors and lists the top neuromarketing firms currently operating.
The study examines the equipment and methods used in neuromarketing, such as
eye tracking, galvanic skin reaction, EEG analysis and cognitive analysis. These
approaches can be combined to create a comprehensive understanding. That can
allow the customers to respond to marketing stimuli. Overall, this study adds to the
expanding body of information on neuromarketing that leads to creating interest in
this particular area. Besides, it’s potential for use in brand management, advertis ing, and marketing. Explores the potential of EEG technology in neuromarketing
which is emphasizing the ethical considerations. It highlights the role of machine
learning algorithms. In terms of analyzing consumer responses to marketing stim uli through EEG signals.Through, suggesting the field is on the verge of significant
breakthroughs. It focuses on the empirical approaches in neuromarketing applied to
food choices. Therefore, it presents a comprehensive approach to predict consumer
emotions. Through EEG signal analysis, it can achieve a remarkable accuracy of
approximately 96.89% in predicting consumer preferences.