Optimal Causal Imputation for Control
- Creators
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Dong, Roy
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Mazumdar, Eric
- Sastry, S. Shankar
Abstract
The widespread applicability of analytics in cyber-physical systems has motivated research into causal inference methods. Predictive estimators are not sufficient when analytics are used for decision making; rather, the flow of causal effects must be determined. Generally speaking, these methods focus on estimation of a causal structure from experimental data. In this paper, we consider the dual problem: we fix the causal structure and optimize over causal imputations to achieve desirable system behaviors for a minimal imputation cost. First, we present the optimal causal imputation problem, and then we analyze the problem in two special cases: 1) when the causal imputations can only impute to a fixed value, 2) when the causal structure has linear dynamics with additive Gaussian noise. This optimal causal imputation framework serves to bridge the gap between causal structures and control.
Attached Files
Submitted - 1703.07049.pdf
Files
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Additional details
- Eprint ID
- 110717
- Resolver ID
- CaltechAUTHORS:20210903-213646411
- Created
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2021-09-07Created from EPrint's datestamp field
- Updated
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2023-06-02Created from EPrint's last_modified field