Neural Networks (SOM) Applied to INAA Data of Chemical Elements in Archaeological Ceramics from Central Amazon

R. Hazenfratz, C. Munita, E. Neves
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引用次数: 9

Abstract

ABSTRACT Artificial neural networks represent an alternative to traditional multivariate techniques, such as principal component and discriminant analysis, which rely on hypotheses regarding the normal distribution of the data and homoscedasticity. They also may be a powerful tool for multivariate modeling of systems that do not present linear correlation between variables, as well as to visualize high-dimensional data in bi- or trivariate structures. One special kind of neural network of interest in archaeometric studies is the Self-Organizing Map (SOM). SOMs can be distinguished from other neural networks for preserving the topological features of the original multivariate space. In this study, the self-organizing maps were applied to concentration data of chemical elements measured in archaeological ceramics from Central Amazon using instrumental neutron activation analysis (INAA). The main objective was testing the chemical patterns previously identified using cluster and principal component analysis, forming groups of ceramics according the multivariate chemical composition. It was verified by statistical tests that the chemical elemental data was not normally distributed and did not present homogeneity of covariance matrices for different groups, as requested by principal component analysis and other multivariate techniques. The maps obtained were consistent with the patterns identified by cluster and principal component analysis, forming two chemical groups of pottery shards for each archaeological site tested. Finally, it was verified the potential of SOMs for testing if failures in underlying hypotheses of traditional multivariate techniques might be critically influencing the results and subsequent archaeological interpretation of archaeometric data.
神经网络(SOM)在亚马逊河中部考古陶瓷化学元素INAA数据中的应用
人工神经网络替代了传统的多元分析方法,如主成分分析和判别分析,这些方法依赖于关于数据正态分布和均方差的假设。它们也可能是一个强大的工具,用于对变量之间不存在线性相关性的系统进行多变量建模,以及在双变量或三变量结构中可视化高维数据。自组织地图(SOM)是考古研究中一个特别的神经网络。SOMs可以区别于其他神经网络,因为它保留了原始多元空间的拓扑特征。本研究利用仪器中子活化分析(INAA)将自组织图谱应用于亚马逊中部考古陶瓷中化学元素的浓度数据。主要目的是测试之前使用聚类和主成分分析确定的化学模式,根据多元化学成分形成陶瓷组。通过统计检验证实,化学元素数据不符合主成分分析等多变量分析方法的要求,不存在不同组间协方差矩阵的同质性。获得的地图与通过聚类和主成分分析确定的模式一致,为每个考古遗址形成了两个陶器碎片的化学组。最后,它验证了som用于测试的潜力,如果传统多元技术的潜在假设失败可能会严重影响考古数据的结果和随后的考古解释。
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