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A Local Search with a Surrogate Assisted Option for Instance Reduction

机译:具有代理辅助选项的本地搜索,例如减少

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In data mining, instance reduction is a key data preprocessing step that simplifies and cleans raw data, by either selecting or creating new samples, before applying a learning algorithm. This usually yields to a complex large scale and computationally expensive optimisation problem which has been typically tackled by sophisticated population-based metaheuristics. Unlike the recent literature, in order to accomplish this target, this article proposes the use of a simple local search algorithm and its integration with an optional surrogate assisted model. This local search, in accordance with variable decomposition techniques for large scale problems, perturbs an n-dimensional vector along the directions identified by its design variables one by one. Empirical results in 40 small data sets show that, despite its simplicity, the proposed baseline local search on its own is competitive with more complex algorithms representing the state-of-the-art for instance reduction in classification problems. The use of the proposed local surrogate model enables a reduction of the computationally expensive objective function calls with accuracy test results overall comparable with respect to its baseline counterpart.
机译:在数据挖掘中,实例减少是通过在应用学习算法之前选择或创建新样本来简化和清除原始数据的关键数据预处理步骤。这通常会产生复杂的大规模和计算昂贵的优化问题,其通常由基于复杂的基于人群的殖民学造成的。与最近的文献不同,为了完成这个目标,本文提出了使用简单的本地搜索算法及其与可选代理辅助模型的集成。该本地搜索,根据变量分解技术进行大规模问题,沿着其设计变量彼此识别的方向进行多尺寸向量。在40个小数据集中的经验结果表明,尽管其简单性,所提出的基线本地搜索是竞争更有的算法,其代表最先进的算法,例如减少分类问题。所提出的本地代理模型的使用使得能够降低计算昂贵的客观函数调用,其精度测试结果与其基线对应物的总体相当。

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