Bustos-Pérez Guillermo
Departament of Human Origins, Max Planck Institute for Evolutionary Anthropology, Leipzig, Germany.
Institut Català de Paleoecologia Humana i Evolució Social (IPHES-CERCA), Tarragona, Spain.
PLoS One. 2025 Jul 28;20(7):e0327597. doi: 10.1371/journal.pone.0327597. eCollection 2025.
Predicting the original mass of a retouched scraper has long been a major goal in lithic analysis. It is commonly linked to lithic technological organization of past societies along with notions of stone tool general morphology, standardization through the reduction process, use life, and site occupation patterns. In order to obtain a prediction of original stone tool mass, previous studies have focused on attributes that would remain constant or unaltered through retouch episodes. However, these approaches have provided limited success for predictions and have also remained untested in the framework of successive resharpening episodes. In the research presented here, a set of experimentally knapped flint flakes were successively resharpened as scraper types. After each resharpening episode, four attributes were recorded (scraper mass, height of retouch, maximum thickness and the GIUR index). Four machine learning models were trained using these variables in order to estimate the mass of the flake prior to any retouch. A Random Forest model provided the best results with an [Formula: see text] value of 0.97 when predicting original flake mass, and a [Formula: see text] value of 0.84 when predicting percentage of mass lost by retouch. The Random Forest model has been integrated into an open source and free to use Shiny app. This allows for the wide spread implementation of a highly precise machine learning model for predicting initial mass of flake blanks successively retouched into scrapers.
长期以来,预测经过修整的刮削器的原始质量一直是石器分析的主要目标。它通常与过去社会的石器技术组织以及石器工具的一般形态、通过加工过程实现的标准化、使用寿命和遗址占用模式等概念相关联。为了获得对原始石器工具质量的预测,以往的研究集中在那些在修整过程中保持不变或未改变的属性上。然而,这些方法在预测方面取得的成功有限,并且在连续再打磨过程的框架内也未得到检验。在本文所介绍的研究中,一组通过实验敲打成的燧石片被相继修整成刮削器类型。在每次再打磨之后,记录了四个属性(刮削器质量、修整高度、最大厚度和GIUR指数)。使用这些变量训练了四个机器学习模型,以便估计在任何修整之前石片的质量。当预测原始石片质量时,随机森林模型给出了最佳结果,[公式:见正文]值为0.97;当预测因修整而损失的质量百分比时,[公式:见正文]值为0.84。随机森林模型已被集成到一个开源且免费使用的Shiny应用程序中。这使得一种用于预测相继修整成刮削器的薄片毛坯初始质量的高精度机器学习模型得以广泛应用。