Cycling and Athletics Betting - The Sports Where Doping Is the Variable Nobody Prices

ThePuntingProf

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Cycling betting across thirty years has a specific historical arc that I think about differently than any other market I've engaged with.

The 1990s and 2000s: I bet the Tour de France with a model based on time trial performance, climbing data, and team strength.

What I now know in retrospect: a significant proportion of the riders I was modeling were using performance-enhancing substances at levels that fundamentally altered the variables I thought I was measuring.

The model wasn't measuring natural cycling ability adjusted for terrain and tactics.

It was measuring the combination of natural ability, tactics, terrain, and doping program effectiveness, without knowing the last variable existed in the equation.

The retrospective question I've never resolved: was my model actually identifying anything real, or was I successfully predicting which doping programs were most effective without realizing that's what I was doing.

The current question: is cycling clean enough now for the model to mean what it appears to mean.
 
The American sports doping context is different but instructive.

Baseball's steroid era: home run totals that seemed statistically impossible became normalized. Betting markets on home run props, season totals, and similar markets were pricing performances that were partly chemical.

The market didn't know this in real time. The market priced what it observed.

The retrospective recalibration: when the doping became known, the historical statistics required asterisks, but the bets that had been placed and settled were settled on the performances as they occurred.

The betting market doesn't require knowing why a performance happened. It requires correctly pricing the probability of the performance happening.

If doping is happening at a base rate across the field: it's part of the "true" probability distribution whether anyone acknowledges it or not.

The problem: doping isn't uniform. Some riders/athletes dope more effectively than others. The variable that the model can't see is unevenly distributed across the field it's trying to price.
 
The specific betting implication is about information asymmetry of an unusual kind.

In most markets we discuss: information asymmetry is about who knows more about legitimate factors. Injury status, tactical plans, weather.

In doping-affected sports: the information asymmetry is about who knows about an illegitimate factor that nonetheless affects the outcome.

The team doctor who knows their rider's program is more sophisticated than the field's: has information that affects the outcome and that no public data source will ever reveal.

This isn't analyzable. It's not findable through better data work. It's a category of information that exists outside any framework we've discussed in this entire forum.

The honest conclusion: betting on cycling during the most doping-affected eras involved an information asymmetry that no amount of analytical sophistication on the bettor's side could address.

Whether current cycling has eliminated this asymmetry: the testing has improved dramatically. Whether it's sufficient: genuinely contested within the sport itself.
 
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