基于实例的人类骨骼高度预测学习方法

Vlad-Sebastian Ionescu, Ioan-Gabriel Mircea, Diana-Lucia Miholca, G. Czibula
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引用次数: 0

摘要

利用骨骼测量预测人类骨骼遗骸的高度是生物考古学中的一项重要任务。经典的解决这一问题的尝试主要包括对不同骨长度的线性回归公式。为了改善这些结果,我们建议使用局部加权回归和径向基函数网络来更好地拟合可用数据,特别是当使用更多特征和处理复杂数据时,我们不能很好地用线性模型拟合。我们在一个流行的数据集上进行的实验表明,我们基于实例的学习算法比目前的技术水平产生了更好的结果。虽然我们提出的方法本质上是计算昂贵的,但我们认为这种成本与手头的问题无关,根据现有文献,最多只能处理几千个实例。由于我们的方法几乎与线性回归一样容易应用,同时提供更好的结果,我们认为它们对于解决此类生物考古学问题非常有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Instance based learning approaches for predicting the height of human skeletons
The task of predicting the stature of human skeletal remains using bone measurements is an important one in bioarchaeology. Classical attempts to solve this problem mostly consist of linear regression formulas on various bone lengths. In order to improve these results, we propose using locally-weighted regression and radial basis function networks in order to fit the available data better, especially when using more features and when dealing with complex data that we cannot fit well with linear models. The experiments we performed on a popular data set show that our instance based learning algorithms lead to much better results than the current state of the art. While the methods we propose are computationally expensive by nature, we consider that cost to be irrelevant for the problem at hand, which, according to the existing literature, only ever deals with a few thousand instances at most. Since our methods are almost as easy to apply as linear regression, while providing significantly better results, we consider them very useful for solving such bioarchaeology problems.
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