Strategic classification regards the problem of learning in settings where users can strategically modify their features to improve outcomes. This setting applies broadly and has received much recent attention. But despite its practical significance, work in this space has so far been predominantly theoretical. In this paper we present a learning framework for strategic classification that is practical. Our approach directly minimizes the "strategic" empirical risk, achieved by differentiating through the strategic response of users. This provides flexibility that allows us to extend beyond the original problem formulation and towards more realistic learning scenarios. A series of experiments demonstrates the effectiveness of our approach on various learning settings.
翻译:战略分类涉及在用户能够从战略角度修改其特征以改善成果的环境中的学习问题,这种背景广泛适用,最近也受到很多关注,但尽管其实际意义很大,迄今为止,这一空间的工作主要是理论性的。在本文件中,我们提出了一个实用的战略分类学习框架。我们的方法直接将通过用户的战略反应而实现的“战略”经验风险降到最低。这提供了灵活性,使我们能够超越最初的问题提法,转向更现实的学习情景。一系列实验表明我们在各种学习环境中的做法的有效性。