Saltar al contenido
Enrique Tomás Martínez Beltrán
InicioInvestigaciónPublicacionesDocenciaBlog
ENES
Contacto
InicioInvestigaciónPublicacionesDocenciaBlog
ENES
Contacto

Enrique Tomás Martínez Beltrán

Estudiante de doctorado en la Universidad de Murcia, centrado en aprendizaje federado, ciberseguridad e IA que preserva la privacidad para sistemas reales.

  • Política de privacidad
  • Términos del servicio
  • Accesibilidad
  • GitHubse abre en una pestaña nueva
  • LinkedInse abre en una pestaña nueva
  • Google Scholarse abre en una pestaña nueva
  • RGse abre en una pestaña nueva
  • ORCIDse abre en una pestaña nueva
  • Scopusse abre en una pestaña nueva
  • DBLPse abre en una pestaña nueva
  • Web of Sciencese abre en una pestaña nueva

Enrique Tomás Martínez Beltrán. Todos los derechos reservados.

Volver arriba

Este sitio utiliza cookies analíticas para entender cómo los visitantes interactúan con el contenido. No se comparten datos personales con terceros.

  1. Inicio
  2. Publicaciones
  3. Data fusion in neuromarketing: Multimodal analysis of biosignals, lifecycle stages, current advances, datasets, trends, and challenges
Artículo de revista2024

Information Fusion

Data fusion in neuromarketing: Multimodal analysis of biosignals, lifecycle stages, current advances, datasets, trends, and challenges

The primary goal of any company is to increase its profits by improving both the quality of its products and how they are advertised. In this context, neuromarketing seeks to enhance the promotion of products and generat...

Editorialse abre en una pestaña nuevaDOIse abre en una pestaña nueva
  • LinkedInse abre en una pestaña nueva
  • Xse abre en una pestaña nueva
Data fusionNeuromarketingBiosignalsLife cycleBrain–computer interfacesBiosensors

Datos rápidos

Año
2024
Venue
Information Fusion
Identificador
quilesperez2024data

Cita sugerida

Mario Quiles Pérez, Enrique Tomás Martínez Beltrán, Sergio López Bernal, Eduardo Horna Prat, Luis Montesano Del Campo, Lorenzo Fernández Maimó, Alberto Huertas Celdrán (2024). Data fusion in neuromarketing: Multimodal analysis of biosignals, lifecycle stages, current advances, datasets, trends, and challenges. Information Fusion.

Resumen

The primary goal of any company is to increase its profits by improving both the quality of its products and how they are advertised. In this context, neuromarketing seeks to enhance the promotion of products and generate a greater acceptance on potential buyers. Traditionally, neuromarketing studies have relied on a single biosignal to obtain feedback from presented stimuli. However, thanks to new devices and technological advances studying this area of knowledge, recent trends indicate a shift towards the fusion of diverse biosignals. An example is the usage of electroencephalography for understanding the impact of an advertisement at the neural level and visual tracking to identify the stimuli that induce such impacts. This emerging pattern determines which biosignals to employ for achieving specific neuromarketing objectives. Furthermore, the fusion of data from multiple sources demands advanced processing methodologies. Despite these complexities, there is a lack of literature that adequately collates and organizes the various data sources and the applied processing techniques for the research objectives pursued. To address these challenges, the current paper conducts a comprehensive analysis of the objectives, biosignals, and data processing techniques employed in neuromarketing research. This study provides both the technical definition and a graphical distribution of the elements under revision. Additionally, it presents a categorization based on research objectives and provides an overview of the combinatory methodologies employed. After this, the paper examines primary public datasets designed for neuromarketing research together with others whose main purpose is not neuromarketing, but can be used for this matter. Ultimately, this work provides a historical perspective on the evolution of techniques across various phases over recent years and enumerates key lessons learned.

Autores

Mario Quiles PérezEnrique Tomás Martínez BeltránSergio López BernalEduardo Horna PratLuis Montesano Del CampoLorenzo Fernández MaimóAlberto Huertas Celdrán

Palabras clave

Data fusionNeuromarketingBiosignalsLife cycleBrain–computer interfacesBiosensors

Publicaciones relacionadas

Trabajos cercanos por temática, tipo y solapamiento de etiquetas.

Artículo de revista2024

Applied Intelligence

Analyzing the robustness of decentralized horizontal and vertical federated learning architectures in a non-IID scenario

Pedro Miguel Sánchez Sánchez, Alberto Huertas Celdrán, Enrique Tomás Martínez Beltrán, Daniel Demeter, Gérôme Bovet, Gregorio Martínez Pérez, Burkhard Stiller

Federated learning (FL) enables participants to collaboratively train machine and deep learning models while safeguarding data privacy. However, the FL paradigm still has drawbacks that affect its trustworthiness, as mal...

Editorialse abre en una pestaña nuevaDOIse abre en una pestaña nueva
Artículo de revista2024

Array

DART: A Solution for decentralized federated learning model robustness analysis

Chao Feng, Alberto Huertas Celdrán, Jan von der Assen, Enrique Tomás Martínez Beltrán, Gérôme Bovet, Burkhard Stiller

Federated Learning (FL) has emerged as a promising approach to address privacy concerns inherent in Machine Learning (ML) practices. However, conventional FL methods, particularly those following the Centralized FL (CFL)...

Editorialse abre en una pestaña nuevaDOIse abre en una pestaña nueva
Artículo de revista2024

Expert Systems with Applications

Fedstellar: A Platform for Decentralized Federated Learning

Enrique Tomás Martínez Beltrán, Ángel Luis Perales Gómez, Chao Feng, Pedro Miguel Sánchez Sánchez, Sergio López Bernal, Gérôme Bovet, Manuel Gil Pérez, Gregorio Martínez Pérez, Alberto Huertas Celdrán

In 2016, Google proposed Federated Learning (FL) as a novel paradigm to train Machine Learning (ML) models across the participants of a federation while preserving data privacy. Since its birth, Centralized FL (CFL) has...

Editorialse abre en una pestaña nuevaDOIse abre en una pestaña nueva

Investigación relacionada

DEFENDIS: aprendizaje federado descentralizado para identificación y seguridad de dispositivos IoT

Abr 2023 — Nov 2023

DEFENDIS: aprendizaje federado descentralizado para identificación y seguridad de dispositivos IoT

DEFENDIS desarrolla un marco para identificar de forma distribuida dispositivos IoT y abordar amenazas de seguridad mediante aprendizaje federado descentralizado.

EU-GUARDIAN: marco europeo y pruebas de concepto para la automatización inteligente de la gestión de incidentes de ciberdefensa

Dic 2022 — Nov 2025

EU-GUARDIAN: marco europeo y pruebas de concepto para la automatización inteligente de la gestión de incidentes de ciberdefensa

Solución avanzada basada en IA para automatizar la gestión de incidentes de ciberdefensa y reforzar la postura y las capacidades operativas de ciberdefensa de la UE.