# Genetic algorithm for a card game (Dominion)

I have a working F# program that runs Dominion, a card game. I would like to use a genetic algorithm to determine optimal strategies for playing. However, I don't know much about AI or genetic algorithms. Can you point me towards some good literature to get started?

A strategy for playing consists of a reaction to a given hand. In each turn, a bot is dealt a hand of cards. It can choose to play action cards, or buy new cards, based on what it has been dealt. The goal is to end the game with as many victory point cards as possible.

A hardcoded approach could look something like:

``````def play(hand, totalDeck):
if hand contains Smithy then use Smithy
if hand contains enough coins for Province then buy Province
if more than 30% of the totalDeck is Smithy, then buy coins
``````

I was thinking of describing a strategy in terms of a vector of target portions of the total deck for each card:

``````[Smithy, Province, Copper, ...]
[.3, .2, .1, ...]
``````

Then to mutate a bot, I could just change that vector around, and see if the mutated version does better. The fitness function would be the average score playing Dominion against a variety of other bots. (One bot's score is dependent on who it is playing against, but hopefully by playing many games against many bots this can even out.)

Does this make sense? Am I headed down the right path?

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Sorry, but IMO that's a really bad description of your problem. I don't even know why you want to "combine" two bots or what of the bots you want to combine. I assume action cards are a dynamic property that change during play. Please state the problem more clearly in terms of an objective function and your decision variables. I assume you want to train some parameters of a generic bot that you wrote. Maybe you can elaborate this a little more. What kind of programming language did you write the simulator of the card game? –  Andreas Jun 3 '12 at 8:01
I agree that I wasn't phrasing the problem very well. I've tried again; how does this look? –  Rosarch Jun 3 '12 at 15:09
definitely worthy to spend a little extra amount of time –  Andreas Jun 3 '12 at 20:26

Dominion's a great game, but it will be hard to optimize using a genetic algorithm, as the inputs of any given game differ between games (card-sets used), the optimal strategy changes over the course of the game, and the optimal play for any given situation is only slowly going to appear in a genetic search (intuitively, based on my pretty-good understanding of both GAs and the game).

A better approach to Dominion, I think, would be either a straight heuristic (rule-based) approach or, very interestingly, Monte Carlo Search (see, for instance, http://cacm.acm.org/magazines/2012/3/146245-the-grand-challenge-of-computer-go/fulltext). Monto Carlo Search is appealing precisely because:

• It's easy to generate a random-but-legal sequence of moves in Dominion.
• It's at least straight-forward to judge the "value" of such a sequence (increase in VP)
• A-priori building of "best play" rules is hard (that's what makes the game so good)

It's a very good challenge -- you should blog your experiences.

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Where do you draw the other bots from? Do you keep them static? If so, the trained bot won't become 'good' at the game per se, just good at exploiting the dummy bot. If not, then the other bots evolve too, and the win percentage will not be a good indicator of quality unless some other constraints apply. Always realize that with a population full of bots with perfect skill, their performance against each other will appear mediocre!

You could take a co-evolutionary approach:

• Mutate all bots in a sufficiently large populations.
• Let them compete against each other repeatedly in a round robin tournament, eg 100 times
• Eliminate some of the worst performing bots,
• Keep a few of the best bots unchanged (elitism)
• Refill the rest of the population with mutations and crossovers of good bots.

Or you could train against a fixed benchmark:

• Make a bot with a handcrafted policy that appears good, with your knowledge of the game
• Alternatively, have human players (yourself?) provide the moves. This might be a good source of training experience for your bot, but unless you have access to a large database of (expert) human moves, it is very slow.
• Select the best performers, mutate, etc
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