Continuous Monte Carlo Graph Search
This work addresses online planning challenges for researchers and practitioners in reinforcement learning and robotics dealing with continuous state and action spaces, representing an incremental improvement over existing MCTS extensions.
The paper tackles the problem of high branching factor and search tree explosion in Monte Carlo Tree Search (MCTS) for continuous domains by proposing Continuous Monte Carlo Graph Search (CMCGS), which clusters similar states into stochastic action bandit nodes to form a layered directed graph, resulting in outperformance over comparable planning methods in complex continuous benchmarks like DeepMind Control Suite and 2D navigation tasks with limited sample budgets.
Online planning is crucial for high performance in many complex sequential decision-making tasks. Monte Carlo Tree Search (MCTS) employs a principled mechanism for trading off exploration for exploitation for efficient online planning, and it outperforms comparison methods in many discrete decision-making domains such as Go, Chess, and Shogi. Subsequently, extensions of MCTS to continuous domains have been developed. However, the inherent high branching factor and the resulting explosion of the search tree size are limiting the existing methods. To address this problem, we propose Continuous Monte Carlo Graph Search (CMCGS), an extension of MCTS to online planning in environments with continuous state and action spaces. CMCGS takes advantage of the insight that, during planning, sharing the same action policy between several states can yield high performance. To implement this idea, at each time step, CMCGS clusters similar states into a limited number of stochastic action bandit nodes, which produce a layered directed graph instead of an MCTS search tree. Experimental evaluation shows that CMCGS outperforms comparable planning methods in several complex continuous DeepMind Control Suite benchmarks and 2D navigation and exploration tasks with limited sample budgets. Furthermore, CMCGS can be scaled up through parallelization, and it outperforms the Cross-Entropy Method (CEM) in continuous control with learned dynamics models.