Chronos LTV uses MDPs to define the marginal policy effect of changing average delay rates and identifies it under sequential unconfoundedness via covariate balancing.
Estimating Dynamic Marginal Policy Effects under Sequential Unconfoundedness
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abstract
We develop methods for estimating how infinitesimal policy changes affect long-term outcomes in dynamic systems. We show that dynamic marginal policy effects (MPEs) can be identified via tractable reduced-form expressions, and can be estimated under a general sequential unconfoundedness assumption. We also propose a doubly robust estimator for dynamic MPEs. Our approach does not require observing full dynamic state information (as is typically assumed for off-policy evaluation in Markov decision processes), and does not incur an exponential curse of horizon (as is typical in non-Markovian off-policy evaluation). We demonstrate practicality and robustness of our approach in a number of simulations, including one motivated by a dynamic pricing application where people use past prices to form a reference level for current prices.
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What is the Long-Term Value of Reliability?
Chronos LTV uses MDPs to define the marginal policy effect of changing average delay rates and identifies it under sequential unconfoundedness via covariate balancing.