Greetings all,

I have been looking through the literature (many thanks to Markus's wonderful online bibliography) on existing strategies in the opening game, and have not found too many articles on the specifics outside of a few papers on neural net learning applied to the opening. There are some vague references to 'pattern matching' to generate moves, but no information about how those patterns and moves were created.

I am wondering if anyone knows of any attempts made to run pattern recognition (for example, clustering) algorithms over a library of games in order to learn reasonable opening moves. If so, and there are any papers about the success (or failures) of such an effort, I would really appreciate a pointer!

Many thanks in advance for any info,

All the best,

Erik Steinmetz
[EMAIL PROTECTED]
[EMAIL PROTECTED]


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