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Simultaneous robust estimation of multi-response surfaces in the presence of outliers

机译:存在离群值时的多响应表面同时鲁棒估计

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A robust approach should be considered when estimating regression coefficients in multi-response problems. Many models are derived from the least squares method. Because the presence of outlier data is unavoidable in most real cases and because the least squares method is sensitive to these types of points, robust regression approaches appear to be a more reliable and suitable method for addressing this problem. Additionally, in many problems, more than one response must be analyzed; thus, multi-response problems have more applications. The robust regression approach used in this paper is based on M-estimator methods. One of the most widely used weighting functions used in regression estimation is Huber’s function. In multi-response surfaces, an individual estimation of each response can cause a problem in future deductions because of separate outlier detection schemes. To address this obstacle, a simultaneous independent multi-response iterative reweighting (SIMIR) approach is suggested. By presenting a coincident outlier index (COI) criterion while considering a realistic number of outliers in a multi-response problem, the performance of the proposed method is illustrated. Two well-known cases are presented as numerical examples from the literature. The results show that the proposed approach performs better than the classic estimation, and the proposed index shows efficiency of the proposed approach.
机译:在估计多响应问题中的回归系数时,应考虑采用可靠的方法。许多模型是从最小二乘法得出的。因为在大多数实际情况下不可避免地存在异常数据,并且因为最小二乘法对这些类型的点都敏感,所以稳健的回归方法似乎是解决此问题的更可靠,更合适的方法。此外,在许多问题中,必须分析不止一种反应;因此,多响应问题有更多的应用。本文使用的鲁棒回归方法基于M估计器方法。回归估计中使用最广泛的加权函数之一是Huber函数。在多响应表面中,由于单独的异常值检测方案,每个响应的单独估计可能会在将来的推论中引起问题。为了解决此障碍,建议同时使用独立的多响应迭代重加权(SIMIR)方法。通过提出一个一致的离群值索引(COI)标准,同时考虑了多响应问题中的离群值的实际数量,该方法的性能得到了说明。作为文献中的数值示例,提出了两个众所周知的案例。结果表明,该方法的性能优于经典估计,并且所提出的指标表明了该方法的有效性。

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