Levente Kocsis

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Levente Kocsis [1]

Levente Kocsis,
a Hungarian computer scientist and researcher in Machine Learning with interests in Reinforcement Learning, Games like Chess, Go, Poker and Lines of Action, Search Control, Neural Networks and optimization algorithms for combinatorial problems. He defended his Ph.D thesis Learning Search Decisions [2] in 2003 at Maastricht University. Levente Kocsis is member of the Machine Learning Research Group of the Hungarian Academy of Sciences.

UCT

In 2006, along with Csaba Szepesvári, Levente Kocsis introduced UCT (Upper Confidence bounds applied to Trees), a new algorithm that applies bandit ideas to guide Monte-Carlo planning [3]. UCT accelerated the Monte-Carlo revolution in computer Go [4] and other domains.

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Selected Publications

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