Corpus ID: 12903238

On Move Pattern Trends in a Large Go Games Corpus

@inproceedings{Baudivs2012OnMP,
  title={On Move Pattern Trends in a Large Go Games Corpus},
  author={Petr Baudivs and Josef Moudvr'ik},
  year={2012}
}
  • Petr Baudivs, Josef Moudvr'ik
  • Published 2012
  • Computer Science
  • We process a large corpus of game records of the board game of Go and propose a way of extracting summary information on played moves. We then apply several basic datmining methods on the summary information to identify the most differentiating features within the summary informat ion, and discuss their correspondence with traditional Go knowl edge. We show statistically significant mappings of the features t o player attributes such as playing strength or informally perceived “playing style… CONTINUE READING
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