Estimation of interventional effects of features on prediction

Patrick Blöbaum, Shohei Shimizu
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引用次数: 5

Abstract

The interpretability of prediction mechanisms with respect to the underlying prediction problem is often unclear. While several studies have focused on developing prediction models with meaningful parameters, the causal relationships between the predictors and the actual prediction have not been considered. Here, we connect the underlying causal structure of a data generation process and the causal structure of a prediction mechanism. To achieve this, we propose a framework that identifies the feature with the greatest causal influence on the prediction and estimates the necessary causal intervention of a feature such that a desired prediction is obtained. The general concept of the framework has no restrictions regarding data linearity; however, we focus on an implementation for linear data here. The framework applicability is evaluated using artificial data and demonstrated using real-world data.
特征对预测介入效应的估计
相对于潜在的预测问题,预测机制的可解释性常常是不清楚的。虽然一些研究侧重于开发具有有意义参数的预测模型,但尚未考虑预测因子与实际预测之间的因果关系。在这里,我们将数据生成过程的潜在因果结构与预测机制的因果结构联系起来。为了实现这一目标,我们提出了一个框架,该框架识别对预测具有最大因果影响的特征,并估计特征的必要因果干预,从而获得所需的预测。框架的一般概念对数据线性没有限制;然而,我们在这里关注的是线性数据的实现。使用人工数据评估框架的适用性,并使用实际数据进行演示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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