Skip to main content

Probability and Cumulative Dice Sums

How Unfair are the NFL's Overtime Rules?

In 2010 the NFL amended its overtime rules, and in 2012 extended these to all regular season games. Previously, overtime was handled by sudden death - the first team to score won. The team winning a coin flip can elect to kick or receive (they invariably receive, as they should).

Assuming the game ends in the first overtime, the team with the first possession wins under the following scenarios:
  1. scores a touchdown on the first drive
  2. kicks a field goal on the first drive; other team fails to score on the second drive
  3. both teams kick a field goal on the first and second drives; win in sudden death
  4. doesn't score on the first drive; defensive score during second drive
  5. neither team scores on first or second drives; win in sudden death
Under this overtime procedure, roughly how often should be expect the team winning the coin flip to win the game?

For an average team the empirical probabilities of the above events per drive are:
  • \(\mathrm{defensiveTD} = \mathrm{Pr}(\text{defensive touchdown}) = 0.02\)
  • \(\mathrm{safety} = \mathrm{Pr}(\text{safety}) = 0.001\)
  • \(\mathrm{fieldGoal} = \mathrm{Pr}(\text{field goal}) = 0.118\)
  • \(\mathrm{offensiveTD} = \mathrm{Pr}(\text{offensive touchdown}) = 0.200\)
We'll also use the following:
  • \(\mathrm{defensiveScore} = \mathrm{Pr}(\text{any defensive score}) = \mathrm{defensiveTD} + \mathrm{safety}\)
  • \(\mathrm{offensiveScore} = \mathrm{Pr}(\text{any offensive score}) = \mathrm{fieldGoal} + \mathrm{offensiveTD}\)
  • \(\mathrm{noOFscore} = \mathrm{Pr}(\text{no offensive score}) = 1 - \mathrm{offensiveScore}\)
  • \(\mathrm{noScore} = \mathrm{Pr}(\text{no score}) = 1 - \mathrm{offensiveScore} - \mathrm{defensiveScore}\)
  • \(\mathrm{sdWin} = \mathrm{Pr}(\text{driving team winning under sudden death rules})\)
Then the probabilities of the above numbered outcomes is approximately:
  1. \(\mathrm{offensiveTD}\)
  2. \(\mathrm{fieldGoal}\times \mathrm{noOFscore}\)
  3. \(\mathrm{fieldGoal}\times \mathrm{fieldGoal}\times \mathrm{sdWin}\)
  4. \(\mathrm{noScore}\times \mathrm{defensiveScore}\)
  5. \(\mathrm{noScore}\times \mathrm{noScore}\times \mathrm{sdWin}\)
The last thing we need to work out is \(\text{sdWin}\). There are three ways for the team with possession to win:
  1. any offensive score on the first drive
  2. no offensive score; any defensive score on the second drive
  3. neither team scores on the first or second possessions; we're back to our original state
These three scenarios have values:
  1. \(\mathrm{offensiveScore}\)
  2. \(\mathrm{noOFscore}\times \mathrm{defensiveScore}\)
  3. \(\mathrm{noScore}\times \mathrm{noScore}\times \mathrm{sdWin}\)
Doing the math, we get that \begin{align*}
\mathrm{sdWin} &= \mathrm{offensiveScore} + \mathrm{noOFscore}\times \mathrm{defensiveScore} + {\mathrm{noScore}}^2\times\mathrm{sdWin};\\
\mathrm{sdWin} &=\frac{(\mathrm{offensiveScore} + \mathrm{noOFscore}\times \mathrm{defensiveScore})}{(1-{\mathrm{noScore}}^2)}.
\end{align*}
Putting it all together we get \[
\text{win} = \mathrm{offensiveTD} + \mathrm{fieldGoal}\times \mathrm{noOFscore} + \mathrm{noScore}\times \mathrm{defensiveScore}\\
+ (\mathrm{fieldGoal}^2+ \mathrm{noScore}^2)\times \mathrm{sdWin}.\]
Plugging in our empirical values, we finally arrive at \[\mathrm{Pr}(\text{win coin flip, win game}) = 0.560.\] For comparison, under the original sudden death rules, \[\mathrm{Pr}(\text{win coin flip, win game}) = 0.589.\] So the NFL overtime rules are still ridiculously unfair in favor of the winner of the coin flip, but not as ridiculously unfair as they were under the original sudden death rules.

How do these numerical results compare to actual outcomes? Under the current overtime rules, there have been 51 overtime games. In 27 of these the team winning the coin toss won the game, in 21 the team losing the coin toss won the game and there have been 3 ties. That puts \(\mathrm{win} = \frac{27}{48} = 0.5625\) for games not ending in ties. Close enough!

If you'd like to tweak the probabilities for each event to see how the resulting probability for the winner of the coin flip changes, I have a simple Python script here.

Comments

Popular posts from this blog

Notes on Setting up a Titan V under Ubuntu 17.04

I recently purchased a Titan V GPU to use for machine and deep learning, and in the process of installing the latest Nvidia driver's hosed my Ubuntu 16.04 install. I was overdue for a fresh install of Linux, anyway, so I decided to upgrade some of my drives at the same time. Here are some of my notes for the process I went through to get the Titan V working perfectly with TensorFlow 1.5 under Ubuntu 17.04. Old install: Ubuntu 16.04 EVGA GeForce GTX Titan SuperClocked 6GB 2TB Seagate NAS HDD + additional drives New install: Ubuntu 17.04 Titan V 12GB / partition on a 250GB Samsung 840 Pro SSD (had an extra around) /home partition on a new 1TB Crucial MX500 SSD New WD Blue 4TB HDD + additional drives You'll need to install Linux in legacy mode, not UEFI, in order to use Nvidia's proprietary drivers for the Titan V. Note that Linux will cheerfully boot in UEFI mode, but will not load any proprietary drivers (including Nvidia's). You'll need proprietary d

Mixed Models in R - Bigger, Faster, Stronger

When you start doing more advanced sports analytics you'll eventually starting working with what are known as hierarchical, nested or mixed effects models . These are models that contain both fixed and random effects . There are multiple ways of defining fixed vs random random effects , but one way I find particularly useful is that random effects are being "predicted" rather than "estimated", and this in turn involves some "shrinkage" towards the mean. Here's some R code for NCAA ice hockey power rankings using a nested Poisson model (which can be found in my hockey GitHub repository ): model <- gs ~ year+field+d_div+o_div+game_length+(1|offense)+(1|defense)+(1|game_id) fit <- glmer(model, data=g, verbose=TRUE, family=poisson(link=log) ) The fixed effects are year , field (home/away/neutral), d_div (NCAA division of the defense), o_div (NCAA division of the offense) and game_length (number of overtime

A Bayes' Solution to Monty Hall

For any problem involving conditional probabilities one of your greatest allies is Bayes' Theorem . Bayes' Theorem says that for two events A and B, the probability of A given B is related to the probability of B given A in a specific way. Standard notation: probability of A given B is written \( \Pr(A \mid B) \) probability of B is written \( \Pr(B) \) Bayes' Theorem: Using the notation above, Bayes' Theorem can be written:  \[ \Pr(A \mid B) = \frac{\Pr(B \mid A)\times \Pr(A)}{\Pr(B)} \] Let's apply Bayes' Theorem to the Monty Hall problem . If you recall, we're told that behind three doors there are two goats and one car, all randomly placed. We initially choose a door, and then Monty, who knows what's behind the doors, always shows us a goat behind one of the remaining doors. He can always do this as there are two goats; if we chose the car initially, Monty picks one of the two doors with a goat behind it at random. Assume we pick Door 1 an