When users can benefit from certain predictive outcomes, they may be prone to act to achieve those outcome, e.g., by strategically modifying their features. The goal in strategic classification is therefore to train predictive models that are robust to such behavior. However, the conventional framework assumes that changing features does not change actual outcomes, which depicts users as "gaming" the system. Here we remove this assumption, and study learning in a causal strategic setting where true outcomes do change. Focusing on accuracy as our primary objective, we show how strategic behavior and causal effects underlie two complementing forms of distribution shift. We characterize these shifts, and propose a learning algorithm that balances between these two forces and over time, and permits end-to-end training. Experiments on synthetic and semi-synthetic data demonstrate the utility of our approach.
翻译:当用户能够受益于某些预测结果时,他们可能容易采取行动实现这些结果,例如,从战略上改变其特征。因此,战略分类的目标是培训对这种行为具有活力的预测模型。然而,传统框架假定变化的特征不会改变实际结果,而将用户描述为“组合”系统。在这里,我们删除这一假设,并在一个真正结果确实改变的因果战略环境中研究学习。我们把精确性作为首要目标,我们展示了两种补充性分布转移形式的战略行为和因果关系。我们描述这些变化的特点,并提出一种平衡这两种力量和时间之间的平衡的学习算法,并允许进行端对端培训。关于合成和半合成数据的实验展示了我们方法的实用性。