Abstract
Treatment effects can be estimated from observational data as the difference in potential outcomes. In this paper, we address the challenge of estimating the potential outcome when treatment-dose levels can vary continuously over time. Further, the outcome variable may not be measured at a regular frequency. Our proposed solution represents the treatment response curves using linear time-invariant dynamical systems-this provides a flexible means for modeling response over time to highly variable dose curves. Moreover, for multivariate data, the proposed method: uncovers shared structure in treatment response and the baseline across multiple markers; and, flexibly models challenging correlation structure both across and within signals over time. For this, we build upon the framework of multiple-output Gaussian Processes. On simulated and a challenging clinical dataset, we show significant gains in accuracy over stateof- the-art models.
Original language | English (US) |
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Title of host publication | Uncertainty in Artificial Intelligence - Proceedings of the 33rd Conference, UAI 2017 |
Publisher | AUAI Press Corvallis |
State | Published - 2017 |
Event | 33rd Conference on Uncertainty in Artificial Intelligence, UAI 2017 - Sydney, Australia Duration: Aug 11 2017 → Aug 15 2017 |
Other
Other | 33rd Conference on Uncertainty in Artificial Intelligence, UAI 2017 |
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Country/Territory | Australia |
City | Sydney |
Period | 8/11/17 → 8/15/17 |
ASJC Scopus subject areas
- Artificial Intelligence