Blackjack odds are percentage figures which represent your probability of losing or winning a hand. They can also represent the house edge or their profit.

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The permutations and statistical calculations forming the basis of the basic blackjack strategy table won't be included in this article. The table is.

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Of course, in reality there is no winning strategy for Blackjack β the rules The tall table on the left is for hard hands, the table in the upper right is for and then pass in a certain percentage of the best candidates directly into.

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Blackjack is actually the casino table game where the House has its least statistical advantage, but in order to take advantage of this fully, you.

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The most important thing to learn about playing blackjack, and I can not stress this The above chart assumes the casino doesn't allow doubling down after pair.

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Rules of the game of Blackjack can vary from casino to casino or even table , the American Journal of Statistical Association published a paper by Rogerβ.

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Rules of the game of Blackjack can vary from casino to casino or even table , the American Journal of Statistical Association published a paper by Rogerβ.

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There are two charts depending on whether the dealer hits or stands on soft Other basic strategy rules. Never take insurance or "even.

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Blackjack odds are percentage figures which represent your probability of losing or winning a hand. They can also represent the house edge or their profit.

Enjoy!

Rules of the game of Blackjack can vary from casino to casino or even table , the American Journal of Statistical Association published a paper by Rogerβ.

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A cell in the child is populated by choosing the corresponding cell from one of the two parents. Here are two other approaches:. Back in the s, a mathematician named Edward O. By measuring the standard deviation of the set of scores we get a sense of how much variability we have across the set for a test of N hands. Once this fitness score adjustment is complete, Roulette Wheel selection is used.{/INSERTKEYS}{/PARAGRAPH} There are a number of different selection techniques to control how much a selection is driven by fitness score vs. Genetic algorithms are essentially driven by fitness functions. In fact, the coefficient of variation for , hands is 0. The more hands played, the smaller the variations will be. The best way to settle on values for these settings is simply to experiment. This works just like regular sexual reproduction β genetic material from both parents are combined. The other hints of quality in the strategy are the hard 11 and hard 10 holdings. The pairs and soft hand tables develop last because those hands happen so infrequently. The idea of a fitness function is simple. Of course, in reality there is no winning strategy for Blackjack β the rules are set up so the house always has an edge. Comparing the results from a GA to the known solution will demonstrate how effective the technique is. First, testing with only 5, or 10, hands is not sufficient. Knowing the optimal solution to a problem like this is actually very helpful. As impressive as the resulting strategy is, we need to put it into context by thinking about the scope of the problem. Tournament selection has already been covered. That evolutionary process is driven by comparing candidate solutions. A genetic algorithm GA uses principles from evolution to solve problems. Running on a standard desktop computer, it took about 75 minutes. There are a couple of observations from the chart. Finally, the best solution found over generations:. The goal is to find a strategy that is the very best possible, resulting in maximized winnings over time. The first thing to notice is that the two smallest populations having only and candidates respectively, shown in blue and orange performed the worst of all sizes. Varying each of these gives different results. Clearly, having a large enough population to ensure genetic diversity is important. Basic concepts get developed first with GAs, with the details coming in later generations. But how many hands is enough? There will be large swings in fitness scores reported for the same strategy at these levels. Each candidate has a fitness score that indicates how good it is. The variations from run to run for the same strategy will reveal how much variability there is, which is driven in part by the number of hands tested. A pair is self-explanatory, and a hard hand is basically everything else, reduced to a total hand value. The lack of genetic diversity in those small populations results in poor final fitness scores, along with a slower process of finding a solution. As you might imagine, Blackjack has been studied by mathematicians and computer scientists for a long, long time. The soft hand and pairs tables are getting more refined:. The fitness function reflects the relative fitness levels of the candidates passed to it, so the scores can effectively be used for selection. Knowing that, the best possible strategy is the one that minimizes losses. Imagine a pie chart with three wedges of size 1, 2, and 5. The three tables represent a complete strategy for playing Blackjack. By generation 12, some things are starting to take shape:. By generation 33, things are starting to become clear:. That score is calculated once per generation for all candidates, and can be used to compare them to each other. Even though we may not know the optimal solution to a problem, we do have a way to measure potential solutions against each other. To avoid that problem, genetic algorithms sometimes use mutation the introduction of completely new genetic material to boost genetic diversity, although larger initial populations also help. The following items can be configured for a run:. Given those findings, the fitness function for a strategy will need to play at least , hands of Blackjack, using the following rules common in real-world casinos :. Since the parents were selected with an eye to fitness, the goal is to pass on the successful elements from both parents. As it turns out, you need to play a lot of hands with a strategy to determine its quality. Populations that are too small or too homogenous always perform worse than bigger and more diverse populations. {PARAGRAPH}{INSERTKEYS}One of the great things about machine learning is that there are so many different approaches to solving problems. Due to the house edge, all strategies will lose money, which means all fitness scores will be negative. The flat white line along the top of the chart is the fitness score for the known, optimal baseline strategy. And then the final generations are used to refine the strategies. Using a single strategy, multiple tests are run, resulting in a set of fitness scores. Once an effective fitness function is created, the next decision when using a GA is how to do selection. It reduces variability and increases the accuracy of the fitness function. A higher fitness score for a strategy merely means it lost less money than others might have. But that improvement is definitely a case of diminishing returns: the number of tests had to be increased 5x just to get half the variability. If, by luck, there are a couple of candidates that have fitness scores far higher than the others, they may be disproportionately selected, which reduces genetic diversity. Oftentimes, crossover is done proportional to the relative fitness scores, so one parent could end up contributing many more table cells than the other if they had a significantly better fitness score. The source code for the software that produced these images is open source. Standard deviation is scaled to the underlying data. One simple approach is called Tournament Selection , and it works by picking N random candidates from the population and using the one with the best fitness score. The hard hands in particular the table on the left are almost exactly correct. With only 12 generations experience, the most successful strategies are those that Stand with a hard 20, 19, 18, and possibly That part of the strategy develops first because it happens so often and it has a fairly unambiguous result. We solve this by dividing the standard deviation by the average fitness score for each of the test values the number of hands played, that is. Using such a strategy allows a player to stretch a bankroll as far as possible while hoping for a run of short-term good luck. The process of finding good candidates for crossover is called selection, and there are a number of ways to do it. That optimal strategy looks something like this:. This is the very best solution based on fitness score from candidates in generation 0 the first, random generation :. Because of the innate randomness of a deck of cards, many hands need to be played so the randomness evens out across the candidates. The columns along the tops of the three tables are for the dealer upcard, which influences strategy. To use the tables, a player would first determine if they have a pair, soft hand or hard hand, then look in the appropriate table using the row corresponding to their hand holding, and the column corresponding to the dealer upcard. Neural networks are great for finding patterns in data, resulting in predictive capabilities that are truly impressive. Once two parents are selected, they are crossed over to form a child. The chart here that demonstrates how the variability shrinks as we play more hands:. That means that if the same GA code is run twice in a row, two different results will be returned. The X axis of this chart is the generation number with a maximum of , and the Y axis is the average fitness score per generation. Roulette Wheel Selection selects candidates proportionate to their fitness scores. In fact, it looks like a minimum of , hands is probably reasonable, because that is the point at which the variability starts to flatten out. That gives us something called the coefficient of variation , which can be compared to other test values, regardless of the number of hands played. The solution is to use Ranked Selection , which works by sorting the candidates by fitness, then giving the worst candidate a score of 1, the next worse a score of 2, and so forth, all the way up to the best candidate, which receives a score equal to the population size. It works by using a population of potential solutions to a problem, repeatedly selecting and breeding the most successful candidates until the ultimate solution emerges after a number of generations. Could we run with , or more hands per test? The first generation is populated with completely random solutions. If you play long enough, you will lose money. One of the cool things about GAs is simply watching them evolve a solution. Population Size. Of course. The tall table on the left is for hard hands , the table in the upper right is for soft hands , and the table in the lower right is for pairs. In the case of a Blackjack strategy, the fitness score is pretty straightforward: if you play N hands of Blackjack using the strategy, how much money do you have when done? Reinforcement learning uses rewards-based concepts, improving over time. One of the unusual aspects to working with a GA is that it has so many settings that need to be configured. During that run, about , strategies were evaluated. One of the problems with that selection method is that sometimes certain candidates will have such a small fitness score that they never get selected.