Military Applications of Machine Learning: A Bibliometric Perspective
Jos\'e Javier Gal\'an, Ram\'on Alberto Carrasco, Antonio LaTorre

TL;DR
This paper presents a bibliometric analysis of machine learning applications in the military, identifying key research areas and proposing a conceptual architecture for practical deployment in military contexts.
Contribution
It offers a bibliometric perspective on military machine learning research and proposes a conceptual architecture based on analyzed data and trends.
Findings
Identifies main research areas in military machine learning
Highlights recent advances and trends in the field
Proposes a conceptual architecture for ML in military use
Abstract
The military environment generates a large amount of data of great importance, which makes necessary the use of machine learning for its processing. Its ability to learn and predict possible scenarios by analyzing the huge volume of information generated provides automatic learning and decision support. This paper aims to present a model of a machine learning architecture applied to a military organization, carried out and supported by a bibliometric study applied to an architecture model of a nonmilitary organization. For this purpose, a bibliometric analysis up to the year 2021 was carried out, making a strategic diagram and interpreting the results. The information used has been extracted from one of the main databases widely accepted by the scientific community, ISI WoS. No direct military sources were used. This work is divided into five parts: the study of previous research…
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Taxonomy
MethodsSparse Evolutionary Training
