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General game playing

From Wikipedia, the free encyclopedia

General game playing (GGP) is the design of artificial intelligence programs to be able to play more than one game successfully.[1][2][3] For many games like chess, computers are programmed to play these games using a specially designed algorithm, which cannot be transferred to another context. For instance, a chess-playing computer program cannot play checkers. General game playing is considered as a necessary milestone on the way to artificial general intelligence.[4]

General video game playing (GVGP) is the concept of GGP adjusted to the purpose of playing video games. For video games, game rules have to be either learnt over multiple iterations by artificial players like TD-Gammon,[5] or are predefined manually in a domain-specific language and sent in advance to artificial players[6][7] like in traditional GGP. Starting in 2013, significant progress was made following the deep reinforcement learning approach, including the development of programs that can learn to play Atari 2600 games[8][5][9][10][11] as well as a program that can learn to play Nintendo Entertainment System games.[12][13][14]

The first commercial usage of general game playing technology was Zillions of Games in 1998. General game playing was also proposed for trading agents in supply chain management there under price negotiation in online auctions from 2003 on.[15][16][17][18]

History

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In 1992, Barney Pell defined the concept of Meta-Game Playing, and developed the "MetaGame" system. This was the first program to automatically generate game rules of chess-like games, and one of the earliest programs to use automated game generation. Pell then developed the system Metagamer.[19] This system was able to play a number of chess-like games, given game rules definition in a special language called Game Description Language (GDL), without any human interaction once the games were generated.[20]

In 1998, the commercial system Zillions of Games was developed by Jeff Mallett and Mark Lefler. The system used a LISP-like language to define the game rules. Zillions of Games derived the evaluation function automatically from the game rules based on piece mobility, board structure and game goals. It also employed usual algorithms as found in computer chess systems: alpha–beta pruning with move ordering, transposition tables, etc.[21] The package was extended in 2007 by the addition of the Axiom plug-in, an alternate metagame engine that incorporates a complete Forth-based programming language.

In 1998, z-Tree was developed by Urs Fischbacher.[22] z-Tree is the first and the most cited software tool for experimental economics. z-Tree allows the definition of game rules in z-Tree-language for game-theoretic experiments with human subjects. It also allows definition of computer players, which participate in a play with human subjects.[23]

In 2005, the Stanford Project General Game Playing was established.[3]

In 2012, the development of PyVGDL started.[24]

GGP implementations

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Stanford project

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General Game Playing is a project of the Stanford Logic Group of Stanford University, California, which aims to create a platform for general game playing. It is the most well-known effort at standardizing GGP AI, and generally seen as the standard for GGP systems. The games are defined by sets of rules represented in the Game Description Language. In order to play the games, players interact with a game hosting server[25][26] that monitors moves for legality and keeps players informed of state changes.

Since 2005, there have been annual General Game Playing competitions at the AAAI Conference. The competition judges competitor AI's abilities to play a variety of different games, by recording their performance on each individual game. In the first stage of the competition, entrants are judged on their ability to perform legal moves, gain the upper hand, and complete games faster. In the following runoff round, the AIs face off against each other in increasingly complex games. The AI that wins the most games at this stage wins the competition, and until 2013 its creator used to win a $10,000 prize.[19] So far, the following programs were victorious:[27]

Year Name Developer Institution Ref
2005 Cluneplayer Jim Clune UCLA
2006 Fluxplayer Stephan Schiffel and Michael Thielscher Dresden University of Technology [28]
2007 Cadiaplayer Yngvi Björnsson and Hilmar Finnsson Reykjavik University [29]
2008 Cadiaplayer Yngvi Björnsson, Hilmar Finnsson and Gylfi Þór Guðmundsson Reykjavik University
2009 Ary Jean Méhat Paris 8 University
2010 Ary Jean Méhat Paris 8 University
2011 TurboTurtle Sam Schreiber
2012 Cadiaplayer Hilmar Finnsson and Yngvi Björnsson Reykjavik University
2013 TurboTurtle Sam Schreiber
2014 Sancho Steve Draper and Andrew Rose [30]
2015 Galvanise Richard Emslie
2016 WoodStock Eric Piette Artois University

Other approaches

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There are other general game playing systems, which use their own languages for defining the game rules. Other general game playing software include:

System Year Description
FRAMASI 2009 Developed for general game playing and economic experiments during a PhD thesis.[31][32]
AiAi 2015-2017 Developed by Stephen Tavener (previous Zillions developer).[33][34][35]
PolyGamo Player 2017 Released by David M. Bennett in September 2017 based on the Unity game engine.[36]
Regular Boardgames 2019 Developed by Jakub Kowalski, Marek Szykuła, and their team at University of Wrocław.[37][38]
Ludii 2020 Released by Cameron Browne and his team at Maastricht University as part of the ERC-funded Digital Ludeme Project.[39][40][41]

GVGP implementations

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Reinforcement learning

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GVGP could potentially be used to create real video game AI automatically, as well as "to test game environments, including those created automatically using procedural content generation and to find potential loopholes in the gameplay that a human player could exploit".[7] GVGP has also been used to generate game rules, and estimate a game's quality based on Relative Algorithm Performance Profiles (RAPP), which compare the skill differentiation that a game allows between good AI and bad AI.[42]

Video Game Description Language

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The General Video Game AI Competition (GVGAI) has been running since 2014. In this competition, two-dimensional video games similar to (and sometimes based on) 1980s-era arcade and console games are used instead of the board games used in the GGP competition. It has offered a way for researchers and practitioners to test and compare their best general video game playing algorithms. The competition has an associated software framework including a large number of games written in the Video Game Description Language (VGDL), which should not be confused with GDL and is a coding language using simple semantics and commands that can easily be parsed. One example for VGDL is PyVGDL developed in 2013.[6][24] The games used in GVGP are, for now, often 2-dimensional arcade games, as they are the simplest and easiest to quantify.[43] To simplify the process of creating an AI that can interpret video games, games for this purpose are written in VGDL manually.[clarification needed] VGDL can be used to describe a game specifically for procedural generation of levels, using Answer Set Programming (ASP) and an Evolutionary Algorithm (EA). GVGP can then be used to test the validity of procedural levels, as well as the difficulty or quality of levels based on how an agent performed.[44]

Algorithms

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Since GGP AI must be designed to play multiple games, its design cannot rely on algorithms created specifically for certain games. Instead, the AI must be designed using algorithms whose methods can be applied to a wide range of games. The AI must also be an ongoing process, that can adapt to its current state rather than the output of previous states. For this reason, open loop techniques are often most effective.[45]

A popular method for developing GGP AI is the Monte Carlo tree search (MCTS) algorithm.[46] Often used together with the UCT method (Upper Confidence Bound applied to Trees), variations of MCTS have been proposed to better play certain games, as well as to make it compatible with video game playing.[47][48][49] Another variation of tree-search algorithms used is the Directed Breadth-first Search (DBS),[50] in which a child node to the current state is created for each available action, and visits each child ordered by highest average reward, until either the game ends or runs out of time.[51] In each tree-search method, the AI simulates potential actions and ranks each based on the average highest reward of each path, in terms of points earned.[46][51]

Assumptions

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In order to interact with games, algorithms must operate under the assumption that games all share common characteristics. In the book Half-Real: Video Games Between Real Worlds and Fictional Worlds, Jesper Juul gives the following definition of games: Games are based on rules, they have variable outcomes, different outcomes give different values, player effort influences outcomes, the player is attached to the outcomes, and the game has negotiable consequences.[52] Using these assumptions, game playing AI can be created by quantifying the player input, the game outcomes, and how the various rules apply, and using algorithms to compute the most favorable path.[43]

See also

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References

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  1. ^ Pell, Barney (1992). H. van den Herik; L. Allis (eds.). "Metagame: a new challenge for games and learning" [Heuristic programming in artificial intelligence 3–the third computerolympiad] (PDF). Ellis-Horwood. Archived (PDF) from the original on 2020-02-17. Retrieved 2020-02-17.
  2. ^ Pell, Barney (1996). "A Strategic Metagame Player for General Chess-Like Games". Computational Intelligence. 12 (1): 177–198. doi:10.1111/j.1467-8640.1996.tb00258.x. ISSN 1467-8640. S2CID 996006.
  3. ^ a b Genesereth, Michael; Love, Nathaniel; Pell, Barney (15 June 2005). "General Game Playing: Overview of the AAAI Competition". AI Magazine. 26 (2): 62. doi:10.1609/aimag.v26i2.1813. ISSN 2371-9621.
  4. ^ Canaan, Rodrigo; Salge, Christoph; Togelius, Julian; Nealen, Andy (2019). Proceedings of the 14th International Conference on the Foundations of Digital Games [Proceedings of the 14th International Conference on the Leveling the playing field: fairness in AI versus human game benchmarks]. pp. 1–8. doi:10.1145/3337722. ISBN 9781450372176. S2CID 58599284.
  5. ^ a b Mnih, Volodymyr; Kavukcuoglu, Koray; Silver, David; Graves, Alex; Antonoglou, Ioannis; Wierstra, Daan; Riedmiller, Martin (2013). "Playing Atari with Deep Reinforcement Learning" (PDF). Neural Information Processing Systems Workshop 2013. Archived (PDF) from the original on 12 September 2014. Retrieved 25 April 2015.
  6. ^ a b Schaul, Tom (August 2013). "A video game description language for model-based or interactive learning". 2013 IEEE Conference on Computational Inteligence in Games (CIG). pp. 1–8. CiteSeerX 10.1.1.360.2263. doi:10.1109/CIG.2013.6633610. ISBN 978-1-4673-5311-3. S2CID 812565.
  7. ^ a b Levine, John; Congdon, Clare Bates; Ebner, Marc; Kendall, Graham; Lucas, Simon M.; Miikkulainen, Risto; Schaul, Tom; Thompson, Tommy (2013). "General Video Game Playing". Artificial and Computational Intelligence in Games. 6. Schloss Dagstuhl–Leibniz-Zentrum fuer Informatik: 77–83. Archived from the original on 9 April 2016. Retrieved 25 April 2015.
  8. ^ Bowling, M.; Veness, J.; Naddaf, Y.; Bellemare, M. G. (2013-06-14). "The Arcade Learning Environment: An Evaluation Platform for General Agents". Journal of Artificial Intelligence Research. 47: 253–279. arXiv:1207.4708. doi:10.1613/jair.3912. ISSN 1076-9757. S2CID 1552061.
  9. ^ Mnih, Volodymyr; Kavukcuoglu, Koray; Silver, David; Rusu, Andrei A.; Veness, Joel; Hassabis, Demis; Bellemare, Marc G.; Graves, Alex; Riedmiller, Martin; Fidjeland, Andreas K.; Stig Petersen, Georg Ostrovski; Beattie, Charles; Sadik, Amir; Antonoglou, Ioannis; King, Helen; Kumaran, Dharshan; Wierstra, Daan; Legg, Shane (26 February 2015). "Human-level control through deep reinforcement learning". Nature. 518 (7540): 529–533. Bibcode:2015Natur.518..529M. doi:10.1038/nature14236. PMID 25719670. S2CID 205242740.
  10. ^ Korjus, Kristjan; Kuzovkin, Ilya; Tampuu, Ardi; Pungas, Taivo (2014). "Replicating the Paper "Playing Atari with Deep Reinforcement Learning"" (PDF). University of Tartu. Archived (PDF) from the original on 18 December 2014. Retrieved 25 April 2015.
  11. ^ Guo, Xiaoxiao; Singh, Satinder; Lee, Honglak; Lewis, Richard L.; Wang, Xiaoshi (2014). "Deep Learning for Real-Time Atari Game Play Using Offline Monte-Carlo Tree Search Planning" (PDF). NIPS Proceedingsβ. Conference on Neural Information Processing Systems. Archived (PDF) from the original on 17 November 2015. Retrieved 25 April 2015.
  12. ^ Murphy, Tom (2013). "The First Level of Super Mario Bros. is Easy with Lexicographic Orderings and Time Travel ... after that it gets a little tricky." (PDF). SIGBOVIK. Archived (PDF) from the original on 26 April 2013. Retrieved 25 April 2015.
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  14. ^ Teller, Swizec (October 28, 2013). "Week 2: Level 1 of Super Mario Bros. is easy with lexicographic orderings and". A geek with a hat. Archived from the original on 30 April 2015. Retrieved 25 April 2015.
  15. ^ McMillen, Colin (2003). Toward the Development of an Intelligent Agent for the Supply Chain Management Game of the 2003 Trading Agent Competition [2003 Trading Agent Competition] (Thesis). Master's Thesis. Minneapolis, MN: University of Minnesota. S2CID 167336006.
  16. ^ Zhang, Dongmo (2009). From general game descriptions to a market specification language for general trading agents [Agent-mediated electronic commerce. Designing trading strategies and mechanisms for electronic markets.]. Berlin, Heidelberg: Springer. pp. 259–274. Bibcode:2010aecd.book..259T. CiteSeerX 10.1.1.467.4629.
  17. ^ "AGAPE - An Auction LanGuage for GenerAl Auction PlayErs". AGAPE (in French). 8 March 2019. Archived from the original on 2 August 2021. Retrieved 5 March 2020.
  18. ^ Michael, Friedrich; Ignatov, Dmitry (2019). "General Game Playing B-to-B Price Negotiations" (PDF). CEUR Workshop Proceedings. -2479: 89–99. Archived (PDF) from the original on 6 December 2019. Retrieved 5 March 2020.
  19. ^ a b Barney Pell's research on computer game playing Archived 2007-08-12 at the Wayback Machine.
  20. ^ "Metagame and General Game Playing". Metagame and General Game Playing. Archived from the original on 3 March 2001. Retrieved 27 March 2016.
  21. ^ Available: Universal Game Engine Archived 2012-11-03 at the Wayback Machine email to comp.ai.games by Jeff Mallett, 10-Dec-1998.
  22. ^ "UZH - z-Tree - Zurich Toolbox for Readymade Economic Experiments". www.ztree.uzh.ch. Archived from the original on 21 February 2016. Retrieved 17 February 2020.
  23. ^ Beckenkamp, Martin; Hennig-Schmidt, Heike; Maier-Rigaud, Frank P. (1 March 2007). "Cooperation in Symmetric and Asymmetric Prisoner's Dilemma Games". Social Science Research Network. SSRN 968942.
  24. ^ a b Schaul, Tom (7 February 2020). "schaul/py-vgdl". GitHub. Archived from the original on 11 June 2018. Retrieved 9 February 2020.
  25. ^ GGP Server Archived 2014-02-21 at the Wayback Machine, platform for competition of general game playing systems.
  26. ^ Dresden GGP Server Archived 2013-04-07 at the Wayback Machine, platform for competition of general game playing systems with automatic scheduling of matches.
  27. ^ "General Game Playing". www.general-game-playing.de. Archived from the original on 2008-12-26. Retrieved 2008-08-21.
  28. ^ Information about Fluxplayer Archived 2011-07-19 at the Wayback Machine, the winner of the 2nd International General Game Playing competition.
  29. ^ Information about CADIAPlayer Archived 2011-07-22 at the Wayback Machine, more information about the winner of the 3rd, 4th, and 8th International General Game Playing competitions.
  30. ^ Sancho is GGP Champion 2014! Archived 2015-12-22 at the Wayback Machine, winner of the 2014 International General Game Playing competition.
  31. ^ Tagiew, Rustam (2009). Filipe, Joaquim; Fred, Ana; Sharp, Bernadette (eds.). Towards a framework for management of strategic interaction [Proceedings of the International Conference on Agents and Artificial Intelligence] (PDF). Porto, Portugal. pp. 587–590. ISBN 978-989-8111-66-1. Archived (PDF) from the original on 2021-03-09. Retrieved 2021-06-02.{{cite book}}: CS1 maint: location missing publisher (link)
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  39. ^ "Ludii Portal | Home of the Ludii General Game System". www.ludii.games. Archived from the original on 2021-10-27. Retrieved 2021-10-27.
  40. ^ "Digital Ludeme Project | Modelling the Evolution of Traditional Games". www.ludeme.eu. Archived from the original on 2021-10-02. Retrieved 2021-10-27.
  41. ^ Piette, E.; Soemers, D. J. N. J.; Stephenson, M.; Sironi, C.; Stephenson, M.; Winands M. H. M.; Browne, C. (2020). "Ludii – The Ludemic General Game System" (PDF). European Conference on Artificial Intelligence (ECAI 2020), Santiago de Compestela. Archived (PDF) from the original on 2022-01-21. Retrieved 2021-10-27.
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  50. ^ "Changing the root node from a previous game step". Archived from the original on 2021-01-17. DBS: A Directed Breadth First Search (DBS) algorithm
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  52. ^ Jesper Juul. Half-Real: Video Games Between Real Rules and Fictional Worlds. MIT Press, 2005.
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