快速优化加权稀疏决策树,用于优化治疗机制和优化政策设计。

CEUR workshop proceedings Pub Date : 2022-10-01
Ali Behrouz, Mathias Lécuyer, Cynthia Rudin, Margo Seltzer
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引用次数: 0

摘要

稀疏决策树是最常见的可解释模型形式之一。虽然最近的进步已经产生了可以完全优化稀疏决策树预测的算法,但这项工作并没有解决策略设计的问题,因为这些算法无法处理加权数据样本。具体来说,这些算法依赖于损失函数的离散性,这意味着无法直接使用实值权重。例如,现有技术中没有一种能在单个数据点上生成包含反倾向加权的策略。我们提出了三种高效稀疏加权决策树优化算法。第一种方法直接优化加权损失函数,但对于大型数据集来说,计算效率往往较低。我们的第二种方法扩展效率更高,它将权重转换为整数值,并利用数据复制将加权决策树优化问题转换为非加权(但更大)的对应问题。我们的第三种算法可扩展到更大的数据集,它采用随机程序,以与其权重成正比的概率对每个数据点进行采样。我们提出了这两种快速方法的误差理论界限,并通过实验证明,这些方法比直接优化加权损失的方法快两个数量级,而不会损失显著的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Optimization of Weighted Sparse Decision Trees for use in Optimal Treatment Regimes and Optimal Policy Design.

Sparse decision trees are one of the most common forms of interpretable models. While recent advances have produced algorithms that fully optimize sparse decision trees for prediction, that work does not address policy design, because the algorithms cannot handle weighted data samples. Specifically, they rely on the discreteness of the loss function, which means that real-valued weights cannot be directly used. For example, none of the existing techniques produce policies that incorporate inverse propensity weighting on individual data points. We present three algorithms for efficient sparse weighted decision tree optimization. The first approach directly optimizes the weighted loss function; however, it tends to be computationally inefficient for large datasets. Our second approach, which scales more efficiently, transforms weights to integer values and uses data duplication to transform the weighted decision tree optimization problem into an unweighted (but larger) counterpart. Our third algorithm, which scales to much larger datasets, uses a randomized procedure that samples each data point with a probability proportional to its weight. We present theoretical bounds on the error of the two fast methods and show experimentally that these methods can be two orders of magnitude faster than the direct optimization of the weighted loss, without losing significant accuracy.

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