-----BEGIN PGP SIGNED MESSAGE----- Hash: SHA1 Hi,
I'd like to start some discussion again. The Title "Better Computer Go Player with Neural Network and Long-term Prediction" seems to put the focus on Long-term Prediction, but my Problem is, that I can not find the result from the paper. My main problem is: darkforest and darkfores1 differ in two parameters: Training database and long term prediction ("Our first bot darkforest is trained using standard features, 1 step prediction on KGS dataset. The second bot darkfores1 is trained using extended features, 3 step prediction on GoGoD dataset.") And the importance of the dataset has be found by previous CNN papers. I understand the idea, that long term prediction might lead to a different optimum (but it should not lead to one with a higher one step prediction rate: it might result in a stronger player with the same prediction rate...), and might increase training speed, but hard facts would be great before spending a GPU month into this :) Detlef Am 23.11.2015 um 09:54 schrieb Rémi Coulom: > It is darkforest, indeed: > > Title: Better Computer Go Player with Neural Network and Long-term > Prediction > > Authors: Yuandong Tian, Yan Zhu > > Abstract: Competing with top human players in the ancient game of > Go has been a long-term goal of artificial intelligence. Go's high > branching factor makes traditional search techniques ineffective, > even on leading-edge hardware, and Go's evaluation function could > change drastically with one stone change. Recent works [Maddison et > al. (2015); Clark & Storkey (2015)] show that search is not > strictly necessary for machine Go players. A pure pattern-matching > approach, based on a Deep Convolutional Neural Network (DCNN) that > predicts the next move, can perform as well as Monte Carlo Tree > Search (MCTS)-based open source Go engines such as Pachi [Baudis & > Gailly (2012)] if its search budget is limited. We extend this idea > in our bot named darkforest, which relies on a DCNN designed for > long-term predictions. Darkforest substantially improves the win > rate for pattern-matching approaches against MCTS-based approaches, > even with looser search budgets. Against human players, darkforest > achieves a stable 1d-2d level on KGS Go Server, estimated from free > games against human players. This substantially improves the > estimated rankings reported in Clark & Storkey (2015), where > DCNN-based bots are estimated at 4k-5k level based on performance > against other machine players. Adding MCTS to darkforest creates a > much stronger player: with only 1000 rollouts, darkforest+MCTS > beats pure darkforest 90% of the time; with 5000 rollouts, our best > model plus MCTS beats Pachi with 10,000 rollouts 95.5% of the > time. > > http://arxiv.org/abs/1511.06410 > > Rémi > > On 11/03/2015 08:32 PM, Nick Wedd wrote: >> I think this Facebook AI may be the program playing on KGS as >> darkforest and darkfores1. >> >> Nick >> >> On 3 November 2015 at 14:28, Petr Baudis <pa...@ucw.cz >> <mailto:pa...@ucw.cz>> wrote: >> >> Hi! >> >> Facebook is working on a Go AI too, now: >> >> https://www.facebook.com/Engineering/videos/10153621562717200/ >> https://code.facebook.com/posts/1478523512478471 >> >> http://www.wired.com/2015/11/facebook-is-aiming-its-ai-at-go-the-game-no-computer-can-crack/ >> >> >> >> The way it's presented triggers my hype alerts, but nevertheless: >> does anyone know any details about this? Most interestingly, >> how strong is it? >> >> -- Petr Baudis If you have good ideas, good data and fast >> computers, you can do almost anything. -- Geoffrey Hinton >> _______________________________________________ Computer-go >> mailing list Computer-go@computer-go.org >> <mailto:Computer-go@computer-go.org> >> http://computer-go.org/mailman/listinfo/computer-go >> >> >> >> >> -- Nick Wedd mapr...@gmail.com <mailto:mapr...@gmail.com> >> >> >> _______________________________________________ Computer-go >> mailing list Computer-go@computer-go.org >> http://computer-go.org/mailman/listinfo/computer-go > > _______________________________________________ Computer-go mailing > list Computer-go@computer-go.org > http://computer-go.org/mailman/listinfo/computer-go > -----BEGIN PGP SIGNATURE----- Version: GnuPG v2.0.22 (GNU/Linux) iQIcBAEBAgAGBQJWYusGAAoJEInWdHg+Znf4MNAP/RCKudGHeHunA3VimzH2GNsw PGn6OiQKZ37SH12E4exouoPSDdtYaCZPYNbxR9sKt1K60LEUYyn6uk38HCM98VOR Wa/muIMP4IAf0c+5IcA7RTKBBz6GAQaVNDX6zIGF9Os5K9TVrsgv41bAy4K/WJ+V cFL0ooZW1Gwy1dULwfIelF6JPft+9bC0/Nb2/nrM6nHUcm1ZFGCNkD7kJV1FejbA tBjzZHjJ5cHPIbPsrFs/ZbQX9SXaiZfrsbf8dE01TqTeYAImXuA1kswXWsNzAJp7 1lAMnl953/iGGG8JmHdxN1owN3Y/KGQvLUcVNhe+0F9GBpjcQ2Hp5M/MuQEkRuko RwH2kEubVnCBoq1apyXGerBSgB1lATTFIC0613lOyxOaFlurZJl/hVEoGg5b/SEG mDKz3DCDp3N6Cqtx/2OuDwvNhSlAunXfEfsa5W+XO77VOxk6FvwZNieHxdugltqc xbogHLp2iVVS7d8jEdoQLwbuXXdPZ+ylQC+oBpUjsT+5h7uWF8MMQgsNXv36Of8M xqTIf9LtcjB3EjeeHIpsfMdfToMFelsIGiyHZXyVVwpIpibVVhNbawM868I6s5UD 6qFkpf1I3aLD2bB6MrBqsuUF27p4fNjOoabcFEI0YgU6WM3yz46qnzV9n5N3XSCP G9MP1edplbtkv6rfKZrN =qdXi -----END PGP SIGNATURE----- _______________________________________________ Computer-go mailing list Computer-go@computer-go.org http://computer-go.org/mailman/listinfo/computer-go