An Explorative Application of Random Forest Algorithm for Archaeological Predictive Modeling. A Swiss Case Study

The present work proposes an innovative approach to surveys and demonstrates the effectiveness of bringing together traditional archaeological questions, such as the exploration and the analysis of settlement patterns, with the most innovative technologies related to Machine Learning. Namely, we app...

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Main Authors: Maria Elena Castiello, Marj Tonini
Format: Article
Language:English
Published: Ubiquity Press 2021-05-01
Series:Journal of Computer Applications in Archaeology
Subjects:
Online Access:https://journal.caa-international.org/articles/71
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spelling doaj-e6b4dd0615f04298a1b4694dbc99935e2021-06-10T08:05:01ZengUbiquity PressJournal of Computer Applications in Archaeology2514-83622021-05-014110.5334/jcaa.7152An Explorative Application of Random Forest Algorithm for Archaeological Predictive Modeling. A Swiss Case StudyMaria Elena Castiello0Marj Tonini1Institute of Archaeological Sciences, University of Bern, CH-3012 BernInstitute of Earth Surface Dynamics, Faculty of Geosciences and Environment, University of Lausanne, CH-1015 LausanneThe present work proposes an innovative approach to surveys and demonstrates the effectiveness of bringing together traditional archaeological questions, such as the exploration and the analysis of settlement patterns, with the most innovative technologies related to Machine Learning. Namely, we applied Random Forest, an ensemble learning method based on decision trees, to perform archaeological predictive modeling (APM) for the Canton of Zurich, in Switzerland. This was done based on a dataset of known archaeological sites dating back to the Roman Age. The APM represents an automated decision-making and probabilistic reasoning tool that is relevant for archaeological risk assessment and cultural heritage management. Machine learning-based approaches can learn from data and make predictions, starting from the acquired knowledge, through the modeling of the hidden relationships between a set of observations, representing the dependent variable (i.e. the archeological sites), and the independent variables (i.e. the geo-environmental features prone to influence the site locations). The main objective of the present study is to assess the spatial probability of presence for Roman settlements within the study area. As results, we produced: 1) a probability map, expressing the likelihood of finding a Roman site at different locations; 2) the importance ranking of the geo-environmental features influencing the presence of the archeological sites. These outputs in our results are of paramount importance, not only in verifying the reliability of the data, but also in stimulating experts in different ways. Also, these results help evaluate the benefits and constraints of using such innovative techniques and, ultimately, help explore the performance of machine learning-based models in processing archaeological information.https://journal.caa-international.org/articles/71roman settlementslocational patternsmachine learningcultural heritage managementcanton of zurich
collection DOAJ
language English
format Article
sources DOAJ
author Maria Elena Castiello
Marj Tonini
spellingShingle Maria Elena Castiello
Marj Tonini
An Explorative Application of Random Forest Algorithm for Archaeological Predictive Modeling. A Swiss Case Study
Journal of Computer Applications in Archaeology
roman settlements
locational patterns
machine learning
cultural heritage management
canton of zurich
author_facet Maria Elena Castiello
Marj Tonini
author_sort Maria Elena Castiello
title An Explorative Application of Random Forest Algorithm for Archaeological Predictive Modeling. A Swiss Case Study
title_short An Explorative Application of Random Forest Algorithm for Archaeological Predictive Modeling. A Swiss Case Study
title_full An Explorative Application of Random Forest Algorithm for Archaeological Predictive Modeling. A Swiss Case Study
title_fullStr An Explorative Application of Random Forest Algorithm for Archaeological Predictive Modeling. A Swiss Case Study
title_full_unstemmed An Explorative Application of Random Forest Algorithm for Archaeological Predictive Modeling. A Swiss Case Study
title_sort explorative application of random forest algorithm for archaeological predictive modeling. a swiss case study
publisher Ubiquity Press
series Journal of Computer Applications in Archaeology
issn 2514-8362
publishDate 2021-05-01
description The present work proposes an innovative approach to surveys and demonstrates the effectiveness of bringing together traditional archaeological questions, such as the exploration and the analysis of settlement patterns, with the most innovative technologies related to Machine Learning. Namely, we applied Random Forest, an ensemble learning method based on decision trees, to perform archaeological predictive modeling (APM) for the Canton of Zurich, in Switzerland. This was done based on a dataset of known archaeological sites dating back to the Roman Age. The APM represents an automated decision-making and probabilistic reasoning tool that is relevant for archaeological risk assessment and cultural heritage management. Machine learning-based approaches can learn from data and make predictions, starting from the acquired knowledge, through the modeling of the hidden relationships between a set of observations, representing the dependent variable (i.e. the archeological sites), and the independent variables (i.e. the geo-environmental features prone to influence the site locations). The main objective of the present study is to assess the spatial probability of presence for Roman settlements within the study area. As results, we produced: 1) a probability map, expressing the likelihood of finding a Roman site at different locations; 2) the importance ranking of the geo-environmental features influencing the presence of the archeological sites. These outputs in our results are of paramount importance, not only in verifying the reliability of the data, but also in stimulating experts in different ways. Also, these results help evaluate the benefits and constraints of using such innovative techniques and, ultimately, help explore the performance of machine learning-based models in processing archaeological information.
topic roman settlements
locational patterns
machine learning
cultural heritage management
canton of zurich
url https://journal.caa-international.org/articles/71
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