# The limit of a convergent Gaussian random variable sequence is still a Gaussian random variable

I'm trying to prove this conclusion but have some problems with one of the steps.

Assume $X_1,\ldots,X_n,\ldots$ is a sequence of Gaussian random variables, converging almost surely to $X$, prove that $X$ is Gaussian.

We use characteristics function here. Since $|\phi_{X_n}(t)|\leq 1$, by dominated convergent theorem, we have for any $t$

$$\lim_{n\rightarrow\infty}e^{it\mu_n-t^2\sigma_n^2/2}=\lim_{n\rightarrow \infty}\phi_{X_n}(t) = \lim_{n\rightarrow \infty}\mathbb{E}\left[e^{itX_n}\right] = \mathbb{E}\left[e^{itX}\right] = \phi_X(t)$$

this is the step that I cannot figure out: $e^{it\mu_n-t^2\sigma_n^2/2}$ converges for any $t$ if and only if $\mu_n$ and $\sigma_n$ converges.

Let $\mu=\lim_n \mu_n$, and $\sigma=\lim_n\sigma_n$, then $\phi_X(t)=e^{it\mu-t^2\sigma^2/2}$, which proves that $X$ is a Gaussian random variable.

Why can we get that $\mu_n$ and $\sigma_n$ converge? This looks intuitive for me, but I cannot make a rigorous prove.

-
try using the continuous mapping theorem which states that if $x_n \to x, g(x_n) \to g(x)$ –  jay-sun Nov 8 '12 at 0:44
@jay , Thanks for your reply. With the property of continuous mapping, I can get that if $\mu_n\rightarrow \mu$ and $\sigma_n\rightarrow \sigma$ then $\exp(it\mu_n-t^2\sigma_n^2/2)\rightarrow \exp(it\mu-t^2\sigma^2/2)$. But I don't know how to get the reverse statement. –  pluskid Nov 8 '12 at 0:56
Apply to all possible limits of subsequences. Also, try to heavily use that the exponent $it\mu_n-t^2\sigma_n^2/2$ converges for all $t$. –  Berci Nov 8 '12 at 0:58
@Berci, Can you give a little more hint here? I'm kind of stuck to infer that converge for all $t$ means what. –  pluskid Nov 8 '12 at 1:29

• First, we note that the sequence $\{\sigma_n\}$ and $\{\mu_n\}$ has to be bounded. It's a consequence of what was done in this thread, as we have in particular convergence in law. What we use is the following:

If $(X_n)_n$ is a sequence of random variables converging in distribution to $X$, then for each $\varepsilon$, there is $R$ such that for each $n$, $\mathbb P(|X_n|\geqslant R)\lt \varepsilon$ (tightness).

To see that, we assume that $X_n$ and $X$ are non-negative (considering their absolute values). Let $F_n$, $F$ the cumulative distribution function of $X_n$, $X$. Take $t$ such that $F(t)\gt 1-\varepsilon$ and $t$ is a continuity point of $F$. Then $F_n(t)\gt 1-\varepsilon$ for $n\geqslant N$ for some $N$. And a finite collection of random variables is tight.

• Now, fix an arbitrary strictly increasing sequence $\{n_k\}$. We extract further sub-sequences of $\{\sigma_{n_k}\}$ and $\{\mu_{n_k}\}$, which converge respectively to $\sigma$ and $\mu$. Taking the modulus, we can see that $e^{-\sigma^2/2}=|\varphi_X(1)|$, so $\sigma$ is uniquely determined.
• We have $e^{it\mu}=\varphi_X(t)e^{t\sigma^2/2}$ for all $t\in\Bbb R$, so $\mu$ is also completely determined.
-
Thanks Davide, that clarified all my puzzles! –  pluskid Nov 9 '12 at 3:59
why does convergence in law imply tightness??? –  Andy Teich Jan 15 at 19:17
@AndyTeich See edit. –  Davide Giraudo Jan 15 at 20:11