AILGJun 2, 2020

Combining Reinforcement Learning and Constraint Programming for Combinatorial Optimization

arXiv:2006.01610v1173 citations
Originality Incremental advance
AI Analysis

This work addresses the scalability and flexibility issues in combinatorial optimization for applications in fields like transportation and finance, though it is incremental as it builds on existing RL and CP techniques.

The authors tackled the challenge of solving combinatorial optimization problems by proposing a hybrid approach that combines deep reinforcement learning and constraint programming, which outperforms standalone methods and is competitive with industrial solvers on problems like the traveling salesman with time windows and portfolio optimization.

Combinatorial optimization has found applications in numerous fields, from aerospace to transportation planning and economics. The goal is to find an optimal solution among a finite set of possibilities. The well-known challenge one faces with combinatorial optimization is the state-space explosion problem: the number of possibilities grows exponentially with the problem size, which makes solving intractable for large problems. In the last years, deep reinforcement learning (DRL) has shown its promise for designing good heuristics dedicated to solve NP-hard combinatorial optimization problems. However, current approaches have two shortcomings: (1) they mainly focus on the standard travelling salesman problem and they cannot be easily extended to other problems, and (2) they only provide an approximate solution with no systematic ways to improve it or to prove optimality. In another context, constraint programming (CP) is a generic tool to solve combinatorial optimization problems. Based on a complete search procedure, it will always find the optimal solution if we allow an execution time large enough. A critical design choice, that makes CP non-trivial to use in practice, is the branching decision, directing how the search space is explored. In this work, we propose a general and hybrid approach, based on DRL and CP, for solving combinatorial optimization problems. The core of our approach is based on a dynamic programming formulation, that acts as a bridge between both techniques. We experimentally show that our solver is efficient to solve two challenging problems: the traveling salesman problem with time windows, and the 4-moments portfolio optimization problem. Results obtained show that the framework introduced outperforms the stand-alone RL and CP solutions, while being competitive with industrial solvers.

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The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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