Estimating Treatment Effects from Irregular Time Series Observations with Hidden Confounders

03/04/2023
by   Defu Cao, et al.
0

Causal analysis for time series data, in particular estimating individualized treatment effect (ITE), is a key task in many real-world applications, such as finance, retail, healthcare, etc. Real-world time series can include large-scale, irregular, and intermittent time series observations, raising significant challenges to existing work attempting to estimate treatment effects. Specifically, the existence of hidden confounders can lead to biased treatment estimates and complicate the causal inference process. In particular, anomaly hidden confounders which exceed the typical range can lead to high variance estimates. Moreover, in continuous time settings with irregular samples, it is challenging to directly handle the dynamics of causality. In this paper, we leverage recent advances in Lipschitz regularization and neural controlled differential equations (CDE) to develop an effective and scalable solution, namely LipCDE, to address the above challenges. LipCDE can directly model the dynamic causal relationships between historical data and outcomes with irregular samples by considering the boundary of hidden confounders given by Lipschitz-constrained neural networks. Furthermore, we conduct extensive experiments on both synthetic and real-world datasets to demonstrate the effectiveness and scalability of LipCDE.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/19/2023

Estimating Treatment Effects in Continuous Time with Hidden Confounders

Estimating treatment effects plays a crucial role in causal inference, h...
research
06/16/2022

Continuous-Time Modeling of Counterfactual Outcomes Using Neural Controlled Differential Equations

Estimating counterfactual outcomes over time has the potential to unlock...
research
07/25/2023

Continuous Time Evidential Distributions for Irregular Time Series

Prevalent in many real-world settings such as healthcare, irregular time...
research
08/21/2022

Stop Hop: Early Classification of Irregular Time Series

Early classification algorithms help users react faster to their machine...
research
05/29/2019

GRU-ODE-Bayes: Continuous modeling of sporadically-observed time series

Modeling real-world multidimensional time series can be particularly cha...
research
07/22/2018

Learning Deep Hidden Nonlinear Dynamics from Aggregate Data

Learning nonlinear dynamics from diffusion data is a challenging problem...
research
12/06/2021

Deconfounding Temporal Autoencoder: Estimating Treatment Effects over Time Using Noisy Proxies

Estimating individualized treatment effects (ITEs) from observational da...

Please sign up or login with your details

Forgot password? Click here to reset