Predicting the impact of treatments from observational data only still represents a majorchallenge despite recent significant advances in time series modeling. Treatment assignments are usually correlated with the predictors of the response, resulting in a lack of data support for counterfactual predictions and therefore in poor quality estimates. Developments in causal inference have lead to methods addressing this confounding by requiring a minimum level of overlap. However,overlap is difficult to assess and usually notsatisfied in practice. In this work, we propose Counterfactual ODE (CF-ODE), a novel method to predict the impact of treatments continuously over time using Neural Ordinary Differential Equations equipped with uncertainty estimates. This allows to specifically assess which treatment outcomes can be reliably predicted. We demonstrate over several longitudinal data sets that CF-ODE provides more accurate predictions and more reliable uncertainty estimates than previously available methods.
翻译:预测观察数据中处理方法的影响,尽管时间序列模型的最近取得显著进展,但仍然是一大挑战。治疗任务通常与反应预测者相关,导致对反事实预测缺乏数据支持,从而导致质量估计差。因果推论的发展导致通过要求最低程度的重叠解决这一混乱的方法。然而,重叠难以评估,在实践中通常不满意。在这项工作中,我们提议采用具有不确定性估计值的神经普通差异值预测治疗长期持续影响的一种新颖方法,即反事实数据值(CF-ODE ) 。这可以具体评估哪些治疗结果可以可靠地预测。我们通过几套纵向数据集表明,CF-ODE比以前使用的方法更准确的预测和更可靠的不确定性估计。