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Let $X,Y\in\{0,1\}$ be two dependent binary random variables such that $\Pr[X=0]=\frac{1}{2}+\alpha$ and $\Pr[Y=0]=\frac{1}{2}+\beta$ for $\alpha,\beta\geq 0$. My question is how to get a lower bound of $\Pr[X\oplus Y=0]$. Here $X\oplus Y$ is the xor of two binary variables $X,Y$.

In the case that they are independent, $\Pr[X\oplus Y=0]=(1/2+\alpha)(1/2+\beta)+(1/2-\alpha)(1/2-\beta)=1/2+2\alpha\beta$.

When they are dependent, I have $\Pr[X\oplus Y=0]\geq \Pr[X=0,Y=0]\geq 1-(1/2-\alpha)-(1/2-\beta)=\alpha+\beta$. However, the bound seems weak. I suspect one can get a lower bound greater than $1/2$ as in the independent case, but a counterexample would also be appreciated.

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    $\begingroup$ If $Y = 1 - X$ then the xor is always 1, so $P[X\oplus Y=0] = 0$ you won't be able to get any lower bound with a constant. $\endgroup$
    – Quimey
    Sep 27, 2021 at 6:56
  • $\begingroup$ @Quimey That setting doesn't satisfy the requirement about the marginal distributions. $\endgroup$
    – Clement C.
    Sep 27, 2021 at 8:17
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    $\begingroup$ ... except in the limit case $\alpha=\beta=0$. $\endgroup$ Sep 27, 2021 at 8:52

2 Answers 2

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No, your lower bound is tight. To see this, you should try to construct $X$ and $Y$ that are "very" dependent, in a way that $X \ne Y$ is as probable as you can make it.

To construct such an example, let $U$ be uniformly distributed on $(0,1)$, and let $X$ be $1$ in the left end, and $Y$ in the right end.

Even more concretely: let $X = [U < 1/2+\alpha]$ and $Y = [U > 1/2-\beta]$, using the Iverson bracket. You should be able to see that here $\text{Pr}(X \oplus Y = 0) = \alpha+\beta$. If $\alpha$ and $\beta$ are small, this can be much smaller than $1/2$.

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You can try to put, in your probability mass function, the maximum probability on the combination of $(X,Y)$ counted in your xor

If you put the maximal weight on (T,F) or on (F,T), all other probabilities can be determined and you find, in both cases :

$$\begin{array}{lll} X \text{\\} Y & F & T \\ F & \beta+\alpha & \frac{1}{2}-\beta \\ T & \frac{1}{2}-\alpha & 0 \\ \end{array}$$

You have min($Pr[X \text{ xor } Y]=0)=\alpha+\beta$

A proof could be built by expressing $Pr[X \text{ xor } Y=0]$ as a function of $P(X=T, Y=F)$ for instance and shows that the minimum is reached on the limit of the interval.

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    $\begingroup$ But note that the original question is about lower bounding $\Pr[X\oplus Y=0]$. It seems that you are lower bounding $\Pr[X\oplus Y=1]$. $\endgroup$ Sep 27, 2021 at 7:50
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    $\begingroup$ true. Thanks. I was very confused with those probabilities of False instead of True... Now I get the same result as you. I hope my answer is OK ;-) $\endgroup$ Sep 27, 2021 at 8:33

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