The Programming Game: Evaluating MCTS as an Alternative to GP for Symbolic Regression

@inproceedings{White2015ThePG,
  title={The Programming Game: Evaluating MCTS as an Alternative to GP for Symbolic Regression},
  author={David Robert White and Shin Yoo and Jeremy Singer},
  booktitle={GECCO},
  year={2015}
}
We develop previous work by Cazenave applying Monte Carlo Tree Search (MCTS) to programming. We compare MCTS to Genetic Programming (GP) and find that MCTS is competitive with GP for standard benchmarks. 

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