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Machine learning techniques for age at death estimation from long bone lengths

机译:机器学习技术,可根据长骨来估算死亡年龄

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Estimating age at death of cadavers is an important ability in various subfields of forensic science and bioarchaeology. It can allow investigators to pinpoint someone's identity, more accurately locate an event of interest in time and clarify other societal or legal issues concerning a given skeletal collection. There are two main categories of methods for estimating age at death: biochemical methods - which use various biological or chemical processes to obtain an estimation -, and mathematical methods - which employ the use of data mining tools such as regression in order to estimate age from various numerical features. In this paper, we propose two machine learning approaches for the age estimation problem and prove that they outperform existing mathematical approaches on a number of case studies derived from publicly available data used for this task. Moreover, our methods are more robust and easier to reuse on new data.
机译:估计尸体死亡年龄是法医学和生物考古学各个子领域的一项重要功能。它可以使研究人员查明某人的身份,更准确地及时找到一个感兴趣的事件,并阐明与给定骨骼收藏有关的其他社会或法律问题。估计死亡年龄的方法主要有两类:生化方法-使用各种生物或化学过程来获得估计-和数学方法-使用数据挖掘工具(例如回归)来估计死亡年龄各种数值特征。在本文中,我们提出了两种针对年龄估计问题的机器学习方法,并证明它们在从用于此任务的公开可用数据得出的许多案例研究中均优于现有的数学方法。而且,我们的方法更健壮,更易于在新数据上重用。

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