TL;DR
This review analyzes 135 studies on machine learning in archaeology, highlighting its growing use, common methods, challenges, and proposing a workflow guide for better application and reporting of ML techniques in archaeological research.
Contribution
It provides an exhaustive overview of ML applications in archaeology, identifies gaps like underrepresented methods, and offers a workflow guide to improve methodological coherence.
Findings
Rapid increase in ML publications since 2019
Automatic structure detection and artefact classification are most common tasks
Neural networks and ensemble methods dominate the models used
Abstract
Artificial intelligence and machine learning applications in archaeology have increased significantly in recent years, and these now span all subfields, geographical regions, and time periods. The prevalence and success of these applications have remained largely unexamined, as recent reviews on the use of machine learning in archaeology have only focused only on specific subfields of archaeology. Our review examined an exhaustive corpus of 135 articles published between 1997 and 2022. We observed a significant increase in the number of publications from 2019 onwards. Automatic structure detection and artefact classification were the most represented tasks in the articles reviewed, followed by taphonomy, and archaeological predictive modelling. From the review, clustering and unsupervised methods were underrepresented compared to supervised models. Artificial neural networks and…
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