Suppose I have a continuous random variable $X$ on $\mathcal{R}^1$, with CDF $F(\cdot)$ and pdf $f(\cdot)$. My understanding is that there are three equivalent definitions of the support of the random variable. 1) $S=\{x :\Pr(X\in B(x,r))>0$ for all $r>0\}$, where $B(x,r)$ is the interval $(x-r,x+r)$. 2) The smallest closed set $S$ such that $\Pr(X\in S)=1$. 3) The closure of $\{x:f(x)>0\}$. I have two questions about this. Question 1: Is it true that these three definitions are indeed equivalent? Question 2: Consider the following, $S_0\equiv S\cap\{x:f(x)=0\}$. That is, $S_0$ is the subset of the support at which $f(x)=0$. Is it true that $S_0$ has Lebesgue measure 0?