Limit search to available items
368 results found. sorted by date .
Book Cover
E-book
Author Castiello, Maria Elena.

Title Computational and machine learning tools for archeological site modeling / Maria Elena Castiello
Published Cham, Switzerland : Springer, 2022

Copies

Description 1 online resource
Series Springer theses, 2190-5061
Springer theses, 2190-5061
Contents Introduction -- Space, Environment and Quantitative approaches in Archaeology -- Predictive Modeling -- Materials and Data
Summary This book describes a novel machine-learning based approach to answer some traditional archaeological problems, relating to archaeological site detection and site locational preferences. Institutional data collected from six Swiss regions (Zurich, Aargau, Grisons, Vaud, Geneva and Fribourg) have been analyzed with an original conceptual framework based on the Random Forest algorithm. It is shown how the algorithm can assist in the modelling process in connection with heterogeneous, incomplete archaeological datasets and related cultural heritage information. Moreover, an in-depth review of past and more recent works of quantitative methods for archaeological predictive modelling is provided. The book guides the readers to set up their own protocol for: i) dealing with uncertain data, ii) predicting archaeological site location, iii) establishing environmental features importance, iv) and suggest a model validation procedure. It addresses both academics and professionals in archaeology and cultural heritage management, and offers a source of inspiration for future research directions in the field of digital humanities and computational archaeology
Notes "Doctoral Thesis accepted by University of Bern, Switzerland."
Bibliography Includes bibliographical references
Notes Online resource; title from PDF title page (SpringerLink, viewed February 9, 2022)
Subject Archaeology -- Data processing
Machine learning.
Archaeology -- Data processing
Machine learning
Form Electronic book
ISBN 9783030885670
3030885674