Data Fusion in Neuromarketing: Multimodal Analysis of Biosignals,
Lifecycle Stages, Current Advances, Datasets, Trends, and Challenges
- URL: http://arxiv.org/abs/2209.00993v2
- Date: Mon, 21 Aug 2023 10:04:47 GMT
- Title: Data Fusion in Neuromarketing: Multimodal Analysis of Biosignals,
Lifecycle Stages, Current Advances, Datasets, Trends, and Challenges
- Authors: Mario Quiles P\'erez, Enrique Tom\'as Mart\'inez Beltr\'an, Sergio
L\'opez Bernal, Eduardo Horna Prat, Luis Montesano Del Campo, Lorenzo
Fern\'andez Maim\'o, Alberto Huertas Celdr\'an
- Abstract summary: Traditionally, neuromarketing studies have relied on a single biosignal to obtain feedback from presented stimuli.
Thanks to new devices and technological advances, recent trends indicate a shift towards the fusion of diverse biosignals.
This paper conducts a comprehensive analysis of the objectives, biosignals, and data processing techniques employed in neuromarketing research.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: 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.
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