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Development of a Machine-Learning-Based AI For Go By Justin Park In 1997, IBM’s Deep Blue defeated Grand Master Gary Kasparov. The Future of AI Problem Solving: • Artificial intelligence has been centered around Go • Go is an ancient Board game developed in China from 2500-4000 years ago • 19x19 Board Size • Players alternate with black and white stones • Game ends with two consecutive passes The Challenges of Go • Large game set – 200-300 possible moves – 10,000,000,000 leaves in game tree • Difficulty in creating a heuristic function • Pattern analysis/abstract thinking The Solution: (My Project) • A machine-learning-based AI with a genetic algorithm for “learning” new moves • A minimalist heuristic “guiding function” for learning basic moves • Database storing of previously played games • Recreation of “Roving Eye” techniques to further adaptation to larger size boards. Development (Python) – Board rules: illegal moves and killing stones – Creation of heuristic function based on influence with respect to distance – Sort possible moves and corresponding score (as determined by evaluation function) Development (continued) • Creation of classes Game and Games to store boards. • Search for best move algorithm – Comparison of boards with similar # of moves – Heuristic function = similarity + influence(board) Results Machine Machine-Learning learns how to either win or lose Machine-Learning function degenerates when faced against its parent function Machine-Learning function improves with outside human intervention Future Work • Research with a larger pool of heuristic functions • Increase depth of heuristic search • Compare boards with 3x3 squares • Compatibility with GMP • .sgf reading and writing