论文标题
通过潜在替代表征学习的长期因果效应估计
Long-term Causal Effects Estimation via Latent Surrogates Representation Learning
论文作者
论文摘要
在许多现实世界应用中,例如市场和医学,估计基于短期替代物的长期因果影响是一个重大但具有挑战性的问题。尽管在某些领域取得了成功,但大多数现有方法都以理想主义和简单的方式估算了因果关系 - 忽略了短期结果之间的因果结构,而是将所有因果关系视为替代物。但是,这种方法不能很好地应用于现实世界中,其中部分观察到的替代物与短期结局中的代理混合在一起。为此,我们开发了我们的灵活方法激光,以估计更现实的情况下,替代物被观察或观察到了代理人。通过替代物和代理之间的不可区分性,我们利用了可识别的可识别变异自动验证的自动化(ivae)来恢复所有有效的替代者,以区分所有候选者,以恢复所有候选人的替代。潜在代理人的代理。在恢复的替代物的帮助下,我们进一步设计了对长期因果影响的公正估计。关于现实世界和半合成数据集的广泛实验结果证明了我们提出的方法的有效性。
Estimating long-term causal effects based on short-term surrogates is a significant but challenging problem in many real-world applications, e.g., marketing and medicine. Despite its success in certain domains, most existing methods estimate causal effects in an idealistic and simplistic way - ignoring the causal structure among short-term outcomes and treating all of them as surrogates. However, such methods cannot be well applied to real-world scenarios, in which the partially observed surrogates are mixed with their proxies among short-term outcomes. To this end, we develop our flexible method, Laser, to estimate long-term causal effects in the more realistic situation that the surrogates are observed or have observed proxies.Given the indistinguishability between the surrogates and proxies, we utilize identifiable variational auto-encoder (iVAE) to recover the whole valid surrogates on all the surrogates candidates without the need of distinguishing the observed surrogates or the proxies of latent surrogates. With the help of the recovered surrogates, we further devise an unbiased estimation of long-term causal effects. Extensive experimental results on the real-world and semi-synthetic datasets demonstrate the effectiveness of our proposed method.