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Derivative-free optimization and neural networks for robust regression

机译:无导数优化和神经网络用于稳健回归

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Large outliers break down linear and nonlinear regression models. Robust regression methods allow one to filter out the outliers when building a model. By replacing the traditional least squares criterion with the least trimmed squares (LTS) criterion, in which half of data is treated as potential outliers, one can fit accurate regression models to strongly contaminated data. High-breakdown methods have become very well established in linear regression, but have started being applied for non-linear regression only recently. In this work, we examine the problem of fitting artificial neural networks (ANNs) to contaminated data using LTS criterion. We introduce a penalized LTS criterion which prevents unnecessary removal of valid data. Training of ANNs leads to a challenging non-smooth global optimization problem. We compare the efficiency of several derivative-free optimization methods in solving it, and show that our approach identifies the outliers correctly when ANNs are used for nonlinear regression.View full textDownload full textKeywordsglobal optimization, non-smooth optimization, robust regression, neural networks, least-trimmed squaresRelated var addthis_config = { ui_cobrand: "Taylor & Francis Online", services_compact: "citeulike,netvibes,twitter,technorati,delicious,linkedin,facebook,stumbleupon,digg,google,more", pubid: "ra-4dff56cd6bb1830b" }; Add to shortlist Link Permalink http://dx.doi.org/10.1080/02331934.2012.674946
机译:大的离群值分解了线性和非线性回归模型。建立模型时,强大的回归方法可以过滤异常值。通过将最小二乘标准(LTS)替换为传统的最小二乘标准(LTS),其中一半的数据被视为潜在的异常值,可以将精确的回归模型拟合到受到严重污染的数据。高分解方法在线性回归中已经非常成熟,但是直到最近才开始用于非线性回归。在这项工作中,我们研究了使用LTS准则将人工神经网络(ANN)拟合到受污染数据的问题。我们引入了惩罚性的LTS标准,以防止不必要的有效数据删除。人工神经网络的训练会导致具有挑战性的非平滑全局优化问题。我们比较了几种无导数优化方法求解该算法的效率,并证明了当将ANN用于非线性回归时,我们的方法可以正确识别异常值。查看全文下载全文关键字全局优化,非平滑优化,鲁棒回归,神经网络,最小修整后的正方形相关的变量add add_id };添加到候选列表链接永久链接http://dx.doi.org/10.1080/02331934.2012.674946

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