A forest of green beads: A machine-learning based framework to determine the geological provenance of prehistoric variscite artifacts.

This study addresses critical gaps in the provenance analysis of variscite and related green phosphate minerals, which serve as key tracers of prehistoric socio-economic networks in Late Prehistoric Europe (c. 6000 1200 BC). Despite their significance, existing provenance models are limited by small...

Descripción completa

Detalles Bibliográficos
Autores: Zambrana Vega, María Dolores, Odriozola Lloret, Carlos Patricio, Garrido Cordero, José Ángel, Martínez Blanes, José María
Tipo de recurso: artículo
Fecha de publicación:2026
País:España
Institución:Universidad de Sevilla (US)
Repositorio:idUS. Depósito de Investigación de la Universidad de Sevilla
OAI Identifier:oai:idus.us.es:11441/182345
Acceso en línea:https://hdl.handle.net/11441/182345
https://doi.org/10.1016/j.jas.2025.106428
Access Level:acceso abierto
Palabra clave:Variscite
Provenance analysis
Machine learning
Random forest
Prehistoric exchange networks
Iberian Peninsula
p-XRF
Shapley values
Information theory
Descripción
Sumario:This study addresses critical gaps in the provenance analysis of variscite and related green phosphate minerals, which serve as key tracers of prehistoric socio-economic networks in Late Prehistoric Europe (c. 6000 1200 BC). Despite their significance, existing provenance models are limited by small, unrepresentative datasets, outdated data processing techniques, and a lack of robust validation metrics. These limitations hinder the accurate reconstruction of prehistoric exchange networks and the cultural significance of these materials. To overcome these challenges, we present a scalable, data-driven approach that integrates portable X-ray fluorescence (p-XRF) analysis, machine learning (ML), and information theory. We compiled the largest geoarchaeological green phosphate dataset to date (n = 1778), sourced from three major Iberian deposits: Aliste, Encinasola, and the Gava ` Mines. Using a supervised Random Forest (RF) model, we classified samples into three geographic source groups based on elemental composition, achieving 95 % accuracy. Key elements such as Ca, As, Ba, V, Sr, Ta, Cu, Cr, Mo, K, Se, Ti, S, and Zn were identified as critical discriminators through feature mportance analysis and Shapley values. The model was validated against an external dataset of 571 beads from 15 archaeological sites across Iberia and France. Results revealed that Aliste and the Gav` a Mines played a more significant role in prehistoric variscite exchange than previously assumed, challenging the traditional emphasis on Encinasola as a primary source. Notably, French materials were predominantly linked to Aliste, suggesting an overland distribution network rather than maritime connections. The compositional complexity of the Gav` a Mines was reflected in high uncertainty in the Catalan sites, highlighting the need for subclass distinctions in future iterations. Our findings underscore the importance of integrating chemical and mineralogical variability into provenance studies. By quantifying uncertainty and employing probabilistic frameworks, this study provides a more nuanced understanding of prehistoric exchange networks. The methodological advancements presented here—combining expanded datasets, advanced ML techniques, and rigorous performance evaluation—set a new standard for provenance analysis in archaeology. This approach not only refines our understanding of variscite distribution but also offers a scalable framework for studying other archaeologically significant materials.