As the title said, for a given state space $\Theta$ and loss function $L(\theta,a)$, if a (randomized) decision rule $\delta$ is a minimax decision rule with respect to $L$, i.e. $$sup_{\theta}E^{X\mid\theta}L(\theta,\delta(X))=inf_{\delta\in\mathcal{D}}sup_{\theta}E^{X\mid\theta}L(\theta,\delta(X))$$ among a class of decision rules $\mathcal{D}=\{\delta:E^{X\mid\theta}L(\theta,\delta(X))<\infty\}$ and it is also admissible, i.e. for all $\delta\neq\delta_1\in\mathcal{D}$ $$E^{X\mid\theta}L(\theta,\delta(X))\leq E^{X\mid\theta}L(\theta,\delta_1(X)),\forall\theta \in \Theta$$ $$E^{X\mid\theta_0}L(\theta_0,\delta(X))\leq E^{X\mid\theta_0}L(\theta_0,\delta_1(X)),\exists\theta_0 \in \Theta$$ Then, must such a decision rule $\delta$ be unique as a function? If so, why; if not, is there any counter-example?
Moreover, what will the answer to the problem change if we assume that $\Theta$ is finite?