Lucas Bonald , Demétrio Mützenberg , Eduardo Krempser , Philip Verhagen
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引用次数: 0
摘要
本文介绍了一种考古预测模型(APM),用于预测巴西伯南布哥州半干旱地区 Pajeú Watershed 流域的岩画考古遗址。该模型采用机器学习(ML)算法和再采样技术,以考虑岩画遗址数据集的不平衡,并测试预测遗址位置的不同归纳方法。结果显示,统计评估令人满意,使用的所有 ML 算法和再采样技术的真阳性率都很高,表明预测岩画遗址位置的潜力很大。根据模型输出生成的预测图显示,某些特征,如面宽、海拔和与不同岩层的距离,尤为重要。该模型的整体性能可以通过在帕茹流域附近的另一个半干旱区进行的测试得到证实,在该测试中,预测了在已知考古遗址附近发现岩画遗址的可能性较高的地区。
Predicting rock art sites in the Pajeú watershed, Brazil
This paper presents an Archaeological Predictive Model (APM) to predict rock art archaeological sites in the Pajeú Watershed, a semiarid region in Pernambuco, Brazil. The model uses Machine Learning (ML) algorithms and re-sampling techniques to account for the unbalanced data set of rock art sites and test different inductive methods for predicting site location. The results show a satisfactory statistical evaluation, with high true positive rates with all ML algorithms and resampling techniques used, indicating a high potential for predicting rock art site locations. The predictive maps generated from the model output, show that certain features, such as aspect, elevation and the distance to different lithologies, are particularly important. The overall model's performance could be corroborated with a test in another semi-arid region, next to the Pajeú watershed, where areas with high favorability of finding rock art sites are predicted near to already known archaeological sites.