BRAIN. Broad Research in Artificial Intelligence and Neuroscience

Volume: 17 | Issue: 1 | Paper number: 13.

Predictive Neuromarketing: A Bayesian and Predictive-Coding Framework for Consumer Neuroscience

Published March 19, 2026
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Ioannis Mavroudis - United Kingdom & Leeds University, Leeds (GB), Theologos Vavdinoudis - KalVa Marketing Group, Thessaloniki (GR), Dimitrios Kalifatidis - KalVa Marketing Group, Thessaloniki (GR), Ramona Alexandra Ciausu - “Alexandru Ioan Cuza” University of Iasi (RO), Alin Stelian Ciobica - Alexandru Ioan Cuza University of Iasi; Apollonia University, Iasi; Romanian Academy, Iasi (RO), Bogdan Novac - University of Medicine and Pharmacy “Grigore T. Popa”, Iasi (RO), Otilia Novac - University of Medicine and Pharmacy “Grigore T. Popa”, Iasi (RO), Diana Gheban - “Ioan Haulica” Institute; Apollonia University, Iasi (RO),

Abstract

Neuromarketing has emerged as a rapidly expanding field aimed at understanding the neural mechanisms that shape consumer behaviour. Yet despite its empirical success, the field lacks a unifying computational theory. In contrast, cognitive neuroscience increasingly converges on the Bayesian Brain and predictive-coding frameworks, which conceptualise perception, learning, and decision-making as hierarchical predictive processes driven by minimisation of precision-weighted prediction errors. This paper introduces Predictive Neuromarketing, a hybrid neuroscience–marketing paradigm that integrates predictive coding with consumer neuroscience findings. We develop a mathematical framework that formalises consumer expectations, brand priors, price cues, and prediction errors, providing a computational explanation for phenomena such as price placebo effects, brand-identity modulation, electroencephalography (EEG)-based preference prediction, and neuroforecasting of advertising success. We then reinterpret the empirical neuromarketing literature through this lens and propose experimental paradigms to test predictive-coding principles in consumer contexts. By embedding neuromarketing within a rigorous predictive framework, we offer a mechanistic account of how marketing stimuli shape consumer beliefs, valuation, and behaviour. The paper concludes with ethical considerations and a research agenda for advancing Predictive Neuromarketing. The contribution of this worki s the formal integration of consumer neuroscience findings into a cohesive Bayesian and predictive-coding generative model, producing clear, testable computational predictions without introducing additional empirical data.

Academic discipline and sub-disciplines: Artificial Intelligence; Neuroscience; Psychology

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DOI: http://dx.doi.org/10.70594/brain/17.1/13

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