In this article, we explain all you need to know about the Gamblerās Fallacy (also knošwn as the Monte Carlo Fallacy). We also include a breakdown of fixed odds, probability, house edge, law of averages, random outcoź©µmes and more.
What is the Gambler's Fallacy?
The Gamblerās Fallacy is essentially the mistaken belief that past results can or will influence future results. It is alšso known as the Monte Carlo Fallacy, the Finite Supply Fallacy and tšÆhe Fallacy of the Maturity of Chances.
The Fallacy can apply to all sorts of scenarios, but it most commonly arises with gambling. The teš«rm āMonte Carlo Fallacy' refers to one of the most famous examples (which we'll come to shortly).
Fixed Odds
Of course, past performance can often be a good indicator of future performance. This applies to many fields and real-lšife situations, and sports betting is no different.
For example, when wagering on a football match with football betting sites, it would be prudent to take into account recent form when considering the odds and likely outcome of the match. However, the šGamblerās Fallacy in the context we are discussing here won't be about football, or any sport, with all its inherent variables.
For illustrative purposes, we will use two far more straightforward examples. Firstly, a simple coin-toss, and secondly, a roulette wheel landing on red or black.
Why these examples? Well, with any given coin flip or spin of the roulette wheel, we have a fair and equal 50/50 chance of heads or tails or red or black coming up, right? Wrong. And therein lies our first potential error.
With a āfairā coin, then yes, the chances of any given flip landing on heads or tails is indeed 50/50. However, on a roulette wheel, as well as the numbers 1-36 – evenly split into 18 red and 18 black – you will also find a green ā0ā on a European table, and a further green ā00ā or double-zero on an American table. Both of these innocuous-looking additions are there to give a built-in āhouse edgeā. Weź§ will toāuch on this again later, but first, letās concentrate on a āfairā 50/50 coin flip.
Odds & Probability
If we were to bet on the outcome of a āfairā coin toss, we'd expect the betting odds to accurately reflect the statistical probability of either possible outcome. In this case, with a 50/50 chance of either heads or tails, true odds of even money (1/1 as a fraction and 2.0 as a decimal as per odds converter) should be offered. Betting Ā£1 on heads returns Ā£2, and therefore a Ā£1 profit, if does indeed land on heads. Tails wouāld result in the loss of your Ā£1 stake.
Not a single of the top UK bookmakers is ever likely to offer you odds against (better than even money) on either of these outcomes. If they did, they would quiš¦©ckly go bust. You may, however, see both eventualities offered at odds-on prices, i.e. worse than even money.
For example, odds of 10/11 may be offered on both heads and tails which has implied probability of 52.4% (note: this is more than the actual probability of 50%). Add the implied probability of either heads or tails occurring in this scenario and you get a total of 104.8% ā a statistical impossibility. The result of one coin toss will either be 100% hš“eads and 0% tails, or vice versa. Neither can ever be over 100%.
So, how do you account for that extra 4.8%?
House Edge
We mentioned house edge earlier, also known as the bookiesā overround. Essentially, this is when bookmakers literally round out to a point above 100% to ensure their edge.
On a single coin-toss, if you win, the houāse having an edge isn't šsuch a big deal. In this instance, you may well win at odds of 10/11 (1.91), and your pound would return you a 91p profit.
However, if you bet on heads and tails coming up, you lose your Ā£1 stake. If you bet again and this time you are correct, you would have staked a total of Ā£2 and seen a return of just Ā£1.91, meaning an overall loss of Ā£0.09. This, in very simple terms, is how a bookie or casino manufacturers its āedgeā. By doing this, they ensure that they will always make a profit in the long term, no matter the outcome.
Law Of Averages & Large Numbers
Ignoring the house edge for a moment, letās assume a āfairā coin toss with a 50/50 chance of either heads or tails landing. This is true for any single coin flip. However, when you begin to consider multiple coin flips, the picture can become skewed.
The bettšor begins to reāly on the law of averages and/or the law of large numbers to get close to the same 1:1 ratio (50/50 chance) of either outcome.
Flipping a coin one million times is unlikely to achieve an outcome of exactly 1:1. It is likely to be extremely close, though, meaning that the differāence would be negligibleą¶£ and in line with expected or standard deviation.
However, if you only flip the coin 100 times, you could easily see a 70:30 oš·utcome either way before the resultź¦s ānormaliseā, and get closer to 50:50 again if you continued to a very large number (the previous one million flips, for example).
Over fewer occurrences still, letās say 10, you might get 5 š„heads and 5 tails, but you could easily see 9 heads and 1 tails, or even 0 heads and 10 tails. (Who hasnāt tried best of 3, best of 5 and so on, until you get aź¦ŗ favourable outcome?)
Again, you would expect this to regress to the mean over time. The issue is that, in gambling, you donāt generally have unlimited time or, more importantly, funds to benefit from the law of averages or the law of large numbers. This is where the Gamblerās Fallš«acy can become extremely problematic, and can cause punters to lose large sums of money.
The Gamblerās Fallacy Explained
Tšhe Gamblerās Fallacy is rooted in pure applied mathematics. It deals with the law of averages and the law of large numbers.
If you're worried that this article might get a little too technical, fear not. The aim here is to try and explain, in practical terms, what the Gamblerās Fallacą¹y is, and how to avoid falling foul of it while betting.
Gamblerās Fallacy Example
Letās say you bet on heads for each of the first 10 coin flips. You see 5 heads and 5 tšails. At odds of Evens, you would have won as much as you have lost. Thus, you are exactly as you started ā at break-even point.
So, you continue for another ten flips. šThis time your heads comes up 6 times and tails just 4. The result is that your 6 heads have won you Ā£6 and your 4 tails have lost you Ā£4. This leaves you with a Ā£2 profit. So far, so good.
Now, what happens if you come up against a streak of tails? If the next 10 flips all land on tails, you are not only down Ā£10, but your own cognitive bias would likely tell you that by the law of averages, you must be due a heads. This is the Gamblerās Fallacy in action.
What You Are Actually Doing
You are attempting to load probabilities associated with the law of large numbers onto a singular event that carries no such bias. Furthermore, you are falsely assuming that all those preceding tails results will influence the next coin flip. In reality, they do no such thing.
The probability of the coin landing on heads or tails remains 50/50, just as šit was on the very first coin flip and just as it will be for every future coin flip, no matter what the past outcomes have been.
Think of it this way: if you have 10 coin flips and the first 5 have all been tails, if you were expecting a 50/5š0 split at the outset, you now require the next 5 to all be heads. You are therefore assigning heads a probability of 100% for each of the next šfive flips.
Of course, heads retains its original 50% chance for each individual coin flip. So you can see how you have then fallen into the trap of wildly overestimating your chances of seeing heads in any of the next 5 coin flips, based purely on past results that we haveā shown to be irrelevant.
The reverse šis also true. Attributing a run of 5 tails to a āhotā or lucky streak may see you win in the short term. However, thinking that future outcomes are more likely to be tails based on a past tš³rend would be wrong.
Random Outcomes
The event itself, unlike you, has no memory of any hot or cold streak that may have gone before. Each subsequent coin flip is just like the first. It is reset and can turn no better than that 50/50ź¦ binary outcome. It will either be heads or tails (1 or 0 in binary terms) and remains completely random.
By assigning any other parameters based on past events as potential influences for future coin flips, your own (understandable) cognitive bias has led you to fall into the trap known as the Gamblerās Fallacy. If itās any consolation, you wouldnāt be the first, and you most certainly wouldnāt be the last – but it's always best to be aware.
August 18th, 1913 ā Monte Carlo
The term āThe Monte Carlo Fallacy' was coined after a fateful night in a casino on the French Riviera. It was August 18th&nš bsp;1913, to be precise.
Upon noticing an ever-increasing number of black outcomes on the roulette wheel, people started pushing more and more chips onto red based on the mistaken notion that the probability of landing on a red was inācreasing after every black.
Of course, a red did evš”entually land, but only after 26 blacks. Anyone left standing and still betting on red obviously won on that last spin. Meanwhile, many unwitting bettors had already fallen foul of the Gamblerās Fallacy. They were left penniless and cursing their horrendous luck.
The Inverse Gamblerās Fallacy or āHot Hand Phenomenonā
The inverse Gamābšlerās Fallacy (also called the hot hand phenomenon) is closely linked to the Gamblerās Fallacy. This Fallacy makes us expect the same phenomenon to happen, based on a past string of events.
For example, in a game of roulette, the ball has just landed on red five times in a row. This leads you to believe that it will probably land on red again, so you increase your stake and bet on red. The false belief underlying this phenomenon is that past events are somehow influencing current events, even though, in the case of a roulette table, each spin is coź§mpletely independent of the previous.š„ Of course, the odds of getting red are exactly the same as black, just like in all of the previous spins.
We can sum up the two fallacies as follows:
-
In the Gamblerās Fallacy, we falsšely expect a reversal of outcomes, based on a previous š°streak.
-
In the reverse Gamblerās Fš§allacy, we falsely expect an outcomeš¦ to continue, based on a previous streak.
The Gamblerās Fallacy Applied to Betting
We know that the Gamblerās Fallacy applies to pure gambling. Bš§øut how does it apply to sports betting? While each spin on a roulette wheel has no recollection of the previous spins, and is not influenced by it in any way, sports do not follow the same pattern of statistical independence.
Game outcomes
Each player and team has specific characteristics that make them more or less likely to perform well in a variety of circumstances. They have individual talents, feelings and emotions that govern the way they generally behave. When looking at the career of a football player, over the course of a season, certain statistics seem to stick out. A player is likely to make the same mistake more than once, or have the same success more often.
This is where statistics come in. Punters, as well as bookies, rely on data such as current form, home and away records, and dozens of other metrics to predict the most likely outcome of a game. While each spin is independent of the previous one in a game of roulette, football gašmes are not completely independent from previous games.
A coin toss has no memory of the previous toss, leading to a consistent probability of 50%. As any punter knows, odds in football or any otherš sport are rarely, if ever, 50%. Even in a closź¦°e matchup, the bookies will slightly favour one over the other.
Betting Success
The Gamblerās Fallacy does not apply to the outcomes of sports events. However, does it apply to your success as a sports punter? Of course, if you have no predictive model of your own for the sport you are betting on, and are just following blind luck, the Gamblerās Fallacy does apply to you, at least for the success of your bets.
-
You may assume that because you have lost a few bets in a row, it will be more likely š·for you to win again.
-
You may assume that because you have won a few bets in a row, it will be more lą¼ikely for you to lose again.
-
You may equally assume that because you have won a few bets in a šrow, you are more likely to win again.
The first two are an example of the Gamblerās Fallacy in action. The fact that you have lost bets will not make it more likely for you to win other bets.
The third is slightly more complex. Oā f course, choosing the right bets is the job of any intelligent punter, but it is important to look at the causation between the events. Did you win a few bets simply because of luck? Or do you have the right skills to predict game outcomes slightly better than the bookies do? In any case, it is important to be wary of the hot hand fallacy.
The Gamblerās Fallacy Can Actually Create Hot Hands
Psychology plays a huge role in the way we bet. How we perceive win or loss streak probability is largely determined by past outcomes. This also affects our choices of bets. A of 565,915 sports bets made by 776 bettoš°rs demonstrated the following:
-
Sports bettors on a loss streak were more likely to bet on riskier odds after a loss. This often led to an even longer losingāØ streak.
-
Sports bettors on a win streak were more likely to choose safer odds than before. This š often led to an even lošÆnger winning streak.
The researchers interpret win streaks as fāollows:
Players on a win streak are afraid their luck will not conā¦tinue (the Gamblerās Fallacy in action), which causes them to choose safer odds than they did before. By doing this, they actually create win streaks, since safer odds make it more likely to win. By š°believing the Gamblerās Fallacy, they actually manage to create their own hot hands.
ThePuntersPage Final Say
The Gamblerās Fallacy is also commonly referred to as the Monte Carlo Fallacy. It is a logically incorrect belief that a sequence of past outcomes can or will influence the probabilityą¶£ of future outcomes.
If only those in French Riviera casino on August 18th 1913 had understood that with each subsequent spin, the red that they were banking on in fact retained the same 50/50 chance that it had always had. Had they done so, perhaps they wouldnāt have been so quick to risk it all. However, hindsight is everything, as the saying goes, and their (monetary) loss is our gain, allowing us to learn from their mistakes and avoid the pitfalls of the Gamblerās Fallą¼acy.
Knowing what the Gamblerās Fallacy is helps us look more critically at our betting strategy. Are our beāts just lucky, or is our chosen methodology (if any) a succeš ŗssful one?
FAQs
The Gamblerās Fallacy is the false belief that something tš„hat has a fixed probability will be have a different probability based on the past outcomes. In this case, people falsely believe that past events are affecting the future.
The Gamblerās Fallš ·acy iš s incorrect because, in specific circumstances, such as roulette or a coin toss, each event should be considered independent from past occurrences.
The Gamblerās Fallacy is real and true when applied to games of purš¼e chance, where each game is independent of the previous. It is false to believe that an outcome of a die toss will affect the next toss.
In šorder to stop the Gamblerās Fallacy, you first need to recognise that you are applying it. You need to understand that simply because an event happened before another, in a game of chance, it will not affect it.