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Computing nonlinear lts estimator based on a random differential evolution strategy

机译:基于随机差分进化策略的非线性lts估计量的计算

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摘要

Nonlinear least trimmed squares (NLTS) estimator is a very important kind of nonlinear robust estimator, which is widely used for recovering an ideal high-quality signal from contaminated data. However, the NLTS estimator has not been widely used because it is hard to compute. This paper develops an algorithm to compute the NLTS estimator based on a random differential evolution (DE) strategy. The strategy which uses random DE schemes and control variables improves the DE performance. The simulation results demonstrate that the algorithm gives better performance and is more convenient than existing computing algorithms for the NLTS estimator. The algorithm makes the NLTS estimator easy to apply in practice, even for large data sets, e.g. in a data mining context.
机译:非线性最小修剪平方(NLTS)估计器是一种非常重要的非线性鲁棒估计器,广泛用于从受污染的数据中恢复理想的高质量信号。但是,NLTS估计器由于难以计算而尚未得到广泛使用。本文开发了一种基于随机差分进化(DE)策略的NLTS估计器计算算法。使用随机DE方案和控制变量的策略可提高DE性能。仿真结果表明,与现有的NLTS估计器计算算法相比,该算法具有更好的性能并且更方便。该算法使NLTS估算器易于在实践中应用,即使对于大型数据集(例如在数据挖掘环境中。

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