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Paradox Lost: The Evils of Coins and Dice. George Gilbert October 6, 2010. What’s Best? Arthur T. Benjamin and Matthew T. Fluet , American Mathematical Monthly 107:6 (2000), 560-562. Definition: The qth percentile is the number k for which
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Paradox Lost:The Evils of Coins and Dice George Gilbert October 6, 2010
What’s Best? Arthur T. Benjamin and Matthew T. Fluet, American Mathematical Monthly 107:6 (2000), 560-562.
Definition: The qth percentile is the number k for which P (X<k)<q/100 and P(X≤k)>q/100. The 50th percentile is also called the median. Theorem (Benjamin,Fluet) Flipping a coin with probability of heads p, the configuration of n coins which has minimal expected time to remove all n is the pth percentile of the binomial distribution with parameters n and p. Proof. Flip the coin n times and let X be the number of heads.
Theorem (Benjamin,Fluet) Flipping a coin with probability of heads p, the configuration of n coins that wins over half the time against any other configuration is the median of the binomial distribution with parameters n and p. Illustration of proof (our case). Flip the coin n times. From the binomial distribution,
The Best Way to Knock ’m Down, Art Benjamin and Matthew Fluet, UMAP Journal 20:1 (1999), 11-20.
The River Crossing Game, David Goering and Dan Canada, Mathematics Magazine 80:1 (2007), 3-15.
2 3 4 5 6 7 8 9 10 11 12 Probability Relative Probability Expected # Rolls Wins Race Wins Race 19.8 0.247 0.499 21.2 0.248 0.501
Relative probability (and probability) wins race is 0.293. 2 3 4 5 6 7 8 9 10 11 12
Relative probability down to 0.278 from 0.293. 2 3 4 5 6 7 8 9 10 11 12
Relative probability increases to 0.517 by the time 28 ships are on 5 and ultimately to 1. 2 3 4 5 6 7 8 9 10 11 12
Relative probability is small and decreases at first, but ultimately increases to 1. 2 3 4 5 6 7 8 9 10 11 12
Waiting Times for Patterns and a Method of Gambling Teams, Vladimir Pozdnyakov and Martin Kulldorff, American Mathematical Monthly 133:2 (2006), 134-143. • A Martingale Approach to the Study of Occurrence of Sequence Patterns in Repeated Experiments, Shuo-Yen Robert Li, The Annals of Probability 8:6 (1980), 1171-1176.
HTHH vs HHTT • Which happens fastest on average? • Which is more likely to win a race?
The expected duration for sequences with more than two outcomes and not necessarily equal probabilities, e.g. a loaded die, is still • For different sequences R and S, not necessarily of the same length, still makes computational sense. S is the one sliding; order matters!
The expected time to hit a sequence S given a head start R (not necessarily all useful) is
Racing sequences S1,…,Sn • Probabilities of winning p1,…,pn • Expected number of flips E
Probabilities of Winning Races Yet the expected number of flips to get HTHH is 18, versus 16 to get HHTT.