I don't know of any algorithm or technique off the top of my head that will let a computer learn a game on anything comparable to the same time scale as a human being. But we have to be careful when we talk about time scale.
There is, for instance, a technique developed by Fogel and Chellapilla, which plays a bunch of randomly generated neural networks against each other, and then uses a genetic algorithm to create new and better neural networks based on the results. This was originally done with checkers, but would be applicable to many games. That technique at least removes the burden of human training-- the networks are playing against themselves.
But how fast does that learn? Fogel and Chellapilla got good quality results (Class A performance, which is just under rated Expert) on checkers in only about 250 generations... but each generation's tournament included about 150 separate games, for about 37k games total. If you played a game a day, it would take you 100 years to play that many. Maybe people who play at that level have played ten games a day for ten years, but that seems... unlikely. So in that sense, slower than a human being. On the other hand, a good laptop can probably play that many games in a week, which no human could ever do.
So if you're looking for a training routine where a human being will be able to train and perceive the performance increase on a reasonable scale... I know of nothing that can do that, today. (Which stands to reason-- our best supercomputers still don't have the raw processing power of a human brain, and we have no algorithms designed to take advantage of that much power, yet.)
If you're just looking for an imperfect AI, though, you might try a technique like Fogel's and Chellapilla's, and instead of taking the ultimate, near-expert rated results, just take something from halfway through the run, or something from the last generation but not the best result.