• TIME TO 2024 UK RANKINGS

  • C++ Programming for Financial Engineering
    Highly recommended by thousands of MFE students. Covers essential C++ topics with applications to financial engineering. Learn more Join!
    Python for Finance with Intro to Data Science
    Gain practical understanding of Python to read, understand, and write professional Python code for your first day on the job. Learn more Join!
    An Intuition-Based Options Primer for FE
    Ideal for entry level positions interviews and graduate studies, specializing in options trading arbitrage and options valuation models. Learn more Join!

A beautiful coin game

Joined
4/14/12
Messages
90
Points
18
Let's say A keep tossing a fair coin, until he get 2 consecutive heads, define X to be the number of tosses for this process; B keep tossing another fair coin, until he get 3 consecutive heads, define Y to be the number of the tosses for this process. Calculate P(X>Y).
 
Here is my guess.
To have \(X=n\) we need a first set of \(n-2\) tails and \(2\) heads, so the probability is
\(P(X=n)=\frac{1}{2^n}\ ,\qquad n\geqslant 2 .\)
And analogously for\(Y\),we need \(n-3\) tails and \(3\) heads
\(P(Y=n)=\frac{1}{2^n}\ , \qquad n\geqslant 3 .\)
However we have always \(X\geqslant 2\) and \(Y\geqslant 3\) so actually we can say that
\(P(X \geqslant Y|X\geqslant 3) = \frac{1}{2} \qquad \text{and}\qquad P(X\geqslant Y|X=2)=0 .\)
Therefore
\(P(X\geqslant Y) = P(X\geqslant 3)P(X\geqslant Y|X\geqslant 3) = \frac{3}{4}\times\frac{1}{2}= \frac{3}{8}\)
Note that this is a solution for \(P(X \geqslant Y)\), the strict inequallity probably needs a little bit more thinking.
 
On Adrian's solution:
P(X>= 3)=P(X<3)=1-P(X=1)-P(X=2)=1-1/2-1/4=1-3/4=1/4 not the 3/4 computed.

As for P(X>Y|X>=3), it is 0 for X=3, (since we are taking X greater than Y and Y can only be at least 3) and 1/2 when X=4, but, for example, it is 3/4 for X=5.

I must go AFK now but I'll come back to the problem.
 
On Adrian's solution:
P(X>= 3)=P(X<3)=1-P(X=1)-P(X=2)=1-1/2-1/4=1-3/4=1/4 not the 3/4 computed.

As for P(X>Y|X>=3), it is 0 for X=3, (since we are taking X greater than Y and Y can only be at least 3) and 1/2 when X=4, but, for example, it is 3/4 for X=5.

I must go AFK now but I'll come back to the problem.
Well you are right except that I assumed that the tosses that give the result are also counted as number of tosses so (P(X=1)=0) in your notation.

In relation with the other comment, you are right. Without realizing I actually computed the probability of (P(X\geqslant Y)) not the strict inequallity. I will edit my solution.
 
Well you are right except that I assumed that the tosses that give the result are also counted as number of tosses so \(P(X=1)=0\) in your notation.

In relation with the other comment, you are right. Without realizing I actually computed the probability of \(P(X\geqslant Y)\) not the strict inequallity. I will edit my solution.

Adrian, you are right in the first part, it is indeed \(P(X\geq 3)=\frac{3}{4}\) since \(P(X=1)=0\), sorry about that.

However, I just see a total probability approach here.
\(P(X>Y)=P(\max(X,Y)=X)=\sum\limits_{x=3}^{\infty} P(\max(X,Y)=X|X=x)P(X=x)\)
Now, \(P(\max(X,Y)=X|X=x) = P(Y\leq x)\)

Therefore
\(P(\max(X,Y)=X|X=x)P(X=x)=P(Y\leq x)P(X=x)\)

So that
\(P(X>Y)=\sum\limits_{x=3}^{\infty} P(Y\leq x)P(X=x)\)

Which would certainly yield the probability you look for. Counting, however, is not my streght.

Cmon people, keep it up.
 
Kids,

I modelled the problem using Markov chains. I made a state space model consisting of 10 states, including the starting one (no toss). Three absorbing states were added (HH win, HH - HHH tie and HHH win, where winning means reaching the goal first and therefore with a smaller number of tosses). The fact that HH wins means that the number X in the statement is less than Y. Therefore, applying the absortion probability equations for state HHH win gets the result. It is a fairly laborious exercise for my sparte time. If anybody is interested I can tell you my state space model under the promise to post the solution.
 
Well I leave here the transition probability matrix

0.2500 0.2500 0.2500 0.2500 0 0 0 0 0 0
0.2500 0 0 0 0.5000 0.2500 0 0 0 0
0.2500 0 0 0.2500 0 0.2500 0.2500 0 0 0
0.2500 0 0.2500 0 0.5000 0 0 0 0 0
0 0 0 0 1.0000 0 0 0 0 0
0.2500 0 0 0 0.2500 0 0 0.2500 0.2500 0
0.2500 0 0 0.2500 0 0 0 0.5000 0 0
0 0 0 0 0 0 0 1.0000 0 0
0 0 0 0 0 0 0 0 1.0000 0
0.2500 0.2500 0.2500 0.2500 0 0 0 0 0 0

Row i contains the transition probability from i to j. The starting state is 10. HHH win is number 8. States 5 (HH win) and 9 (tie) are also absorbent.
 
Here's my shot,

Define \(X=X'+1, Y=Y'+2\)
Then \(X' \sim Geom(\frac{1}{4})\) and \(Y' \sim Geom(\frac{1}{8})\)
By a linear change of variable,
\(f_{X'} = (1-p)^{x'}p \)
\(f_{Y'} = (1-p)^{y'+1}p\)
\(P(X>Y) = P(X'>Y'+1) = \sum\limits_{x=1}^{\infty}P(X'=x)P(Y'<x-1) = \ldots = \frac{2}{11}\)
 
Back
Top