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Sequential decision problems, dependent types and generic solutions

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Botta,  Nicola
Potsdam Institute for Climate Impact Research;

Jansson,  P.
External Organizations;

Ionescu,  C.
External Organizations;

Christiansen,  D. R.
External Organizations;

Brady,  E.
External Organizations;

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1610.07145.pdf
(Verlagsversion), 359KB

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Zitation

Botta, N., Jansson, P., Ionescu, C., Christiansen, D. R., Brady, E. (2017): Sequential decision problems, dependent types and generic solutions. - Logical Methods in Computer Science, 13, 1 (lmcs:3202).
https://doi.org/10.23638/LMCS-13(1:7)2017


Zitierlink: https://publications.pik-potsdam.de/pubman/item/item_21112
Zusammenfassung
We present a computer-checked generic implementation for solving finite-horizon sequential decision problems. This is a wide class of problems, including inter-temporal optimizations, knapsack, optimal bracketing, scheduling, etc. The implementation can handle time-step dependent control and state spaces, and monadic representations of uncertainty (such as stochastic, non-deterministic, fuzzy, or combinations thereof). This level of genericity is achievable in a programming language with dependent types (we have used both Idris and Agda). Dependent types are also the means that allow us to obtain a formalization and computer-checked proof of the central component of our implementation: Bellman's principle of optimality and the associated backwards induction algorithm. The formalization clarifies certain aspects of backwards induction and, by making explicit notions such as viability and reachability, can serve as a starting point for a theory of controllability of monadic dynamical systems, commonly encountered in, e.g., climate impact research.