I'm learning about Stein's phenomenon. This standard problem is considered:
Let $X_1, \dots, X_p$ be independent random variables with $X_i \sim N(\theta_i, 1)$ for $i = 1, \dots, p$. Let $\theta = (\theta_1, \dots, \theta_p)$ and $X = (X_1, \dots, X_p)$. We wish to estimate $\theta$ under quadratic loss.
As part of the justification for first considering the "obvious" estimator, $\hat{\theta} = X$, it is noted without proof that $\hat{\theta}$ is the UMVUE for estimating $\theta$.
To show this, I think we wish to use the Lehmann-Scheffé theorem. Immediately, the estimator $\hat{\theta}$ is unbiased, and the statistic $X$ is sufficient for $\theta$.
How can one prove $X$ is a complete statistic for the underlying distribution in order to invoke the Lehmann-Scheffé Theorem please?
Many thanks