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  • Solving the Rubik’s Cube with Learned Guidance Functions
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  • 2019-01-31
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  • This paper introduces move sequence problems— problems where a system can exist in a number of states, including a goal state, with moves between those states. This paper introduces Learned Guidance Functions (LGFs) as a machine learning method to tackle these. An LGF is a function learned by supervised machine learning that predicts how far a particular state is from the goal state. These methods are applied to the challenging problem of unscrambling a Rubik’s Cube.
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