范围分析及根源分析的应用

Z. Khasidashvili, A. Norman
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引用次数: 3

摘要

我们提出了一种监督学习算法,其目的是推导出比原始特征更好地解释响应变量的特征。此外,当正样本与负样本有意义时,我们的目标是推导出解释正样本或具有相同根本原因的正样本子集的特征。每个衍生特征表示特征空间的单个或多维子空间,其中每个维度被指定为数字特征的特征范围对,以及分类特征的特征级别对。与大多数规则学习和子组发现算法不同,响应变量可以是数值的,并且我们的算法不需要对响应进行离散化。该算法已成功应用于英特尔芯片设计、制造和验证中的许多现实生活中的根源任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Range Analysis and Applications to Root Causing
We propose a supervised learning algorithm whose aim is to derive features that explain the response variable better than the original features. Moreover, when there is a meaning for positive vs negative samples, our aim is to derive features that explain the positive samples, or subsets of positive samples that have the same root-cause. Each derived feature represents a single or multi-dimensional subspace of the feature space, where each dimension is specified as a feature-range pair for numeric features, and as a feature-level pair for categorical features. Unlike most Rule Learning and Subgroup Discovery algorithms, the response variable can be numeric, and our algorithm does not require a discretization of the response. The algorithm has been applied successfully to numerous real-life root-causing tasks in chip design, manufacturing, and validation, at Intel.
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