Cost-Sensitive Parsimonious Linear Regression

R. Goetschalckx, K. Driessens, S. Sanner
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引用次数: 10

Abstract

We examine linear regression problems where some features may only be observable at a cost (e.g., in medical domains where features may correspond to diagnostic tests that take time and costs money). This can be important in the context of data mining, in order to obtain the best predictions from the data on a limited cost budget. We define a parsimonious linear regression objective criterion that jointly minimizes prediction error and feature cost. We modify least angle regression algorithms commonly used for sparse linear regression to produce the ParLiR algorithm, which not only provides an efficient and parsimonious solution as we demonstrate empirically, but it also provides formal guarantees that we prove theoretically.
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代价敏感的简约线性回归
我们研究线性回归问题,其中一些特征可能只能在一定成本下观察到(例如,在医学领域,特征可能对应于需要时间和金钱的诊断测试)。这在数据挖掘的上下文中可能很重要,以便在有限的成本预算下从数据中获得最佳预测。我们定义了一个简洁的线性回归客观准则,使预测误差和特征代价共同最小化。我们修改了通常用于稀疏线性回归的最小角度回归算法,以产生parliamentary算法,该算法不仅提供了我们经验证明的有效和简洁的解决方案,而且还提供了我们理论上证明的形式保证。
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