Category Archives: Gambling

Gambling – moving odds simulation

Ever thought about how bookies set the odds for events…?  The problem at hand for a bookie is to set the odds in such a way that he makes a profit, regardless of what outcome the event has. The way … Continue reading

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Scientific Gambling – Bayesian prediction & betting results from FIFA World Cup 2018

32 teams, 64 games.  3 different ranking models tested, FIFA’s official, a “wisdom-of-crowds” (static), and a dynamic version of the wisdom-of-crowds model. Prediction results: 67% of game outcomes correctly predicted. Betting results best strategy (max probability), with uniform betting on … Continue reading

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Making a living as a Professional Scientific Gambler using Bayesian Inference…?

As my readers know, over the past few weeks I’ve been conducting an experiment: Applying scientific betting on the just finished Ice Hockey World Championships.  By “scientific”, I’m referring to the exclusive use of statistical and mathematical models, simulation, and … Continue reading

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Scientific Gambling – Ice Hockey World Championships starting tomorrow

The tournament is starting tomorrow with four games. From now on, future posts on this topic on the public Facebook group Scientific Gambling on Ice Hockey World Championships 2018 only. So, I you want to continue following how my Bayesian Inference engine … Continue reading

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Scientific Gambling – “House Advantage”

In previous post we looked at how Betting Shops, Casinos etc make money, fundamentally by ‘salting’ the odds just a tiny bit in their favor. Let’s use two very simple games to illustrate how this works, tossing coins and throwing dice. … Continue reading

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Scientific Gambling – how do betting shops make money….?

Betting shops are commercial businesses, that is, they want to and must make money in order to survive. Like any other business. So take a casino as an example: they make money – in the long run – by having … Continue reading

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Scientific gambling – How to identify potentially profitable odds/plays ?

In all sports gambling, success or failure is determined by a number of factors, luck not being the least of them, since in any sport there are loads of “Unknown Unknowns“, which we could also call “Uncertainty”. And then there … Continue reading

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Scientific Gambling on Ice Hockey Worlds – identifying potentially exploitable games

One of the most difficult aspects of dealing with lots of data, is to present the information obtained from various computations in a clear and meaningful way. For instance, in order to identify games where there is a potentially exploitable … Continue reading

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Scientific Betting on Ice Hockey Worlds now on Facebook

Scientific Gambling on Ice Hockey World Championships 2018

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Scientific Gambling on Hockey Worlds – Expected profits from games of day 1 & 2

An Expected Value-calculation gives the expected gains from my bets on the games played during the first two days of the tournament as follows: OUTCOME U_ODDS U_P P P_DELTA EV_PER_UNIT HOME AWAY CZE SVK DRAW 5.20 0.192308 0.243738 0.051430 0.267438 … Continue reading

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