随机森林算法在考古预测建模中的探索性应用。瑞士案例研究

Q1 Social Sciences
M. Castiello, M. Tonini
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引用次数: 5

摘要

本工作提出了一种创新的调查方法,并证明了将传统考古问题(如定居点模式的探索和分析)与机器学习相关的最具创新性的技术结合起来的有效性。也就是说,我们应用随机森林,一种基于决策树的集成学习方法,对瑞士苏黎世州进行考古预测建模(APM)。这是基于罗马时代已知考古遗址的数据集进行的。APM是一种自动化决策和概率推理工具,与考古风险评估和文化遗产管理相关。基于机器学习的方法可以从数据中学习,并从获得的知识开始,通过对一组观测值(代表因变量(即考古遗址))和自变量(即倾向于影响遗址位置的地理环境特征)之间的隐藏关系进行建模,进行预测。本研究的主要目的是评估研究区域内罗马定居点存在的空间概率。结果,我们制作了:1)一张概率图,表示在不同位置找到罗马遗址的可能性;2) 影响考古遗址存在的地质环境特征的重要性排序。我们结果中的这些输出至关重要,不仅在验证数据的可靠性方面,而且在以不同方式激励专家方面。此外,这些结果有助于评估使用此类创新技术的好处和限制,并最终有助于探索基于机器学习的模型在处理考古信息方面的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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 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.
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来源期刊
CiteScore
5.50
自引率
0.00%
发文量
12
审稿时长
19 weeks
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