We consider the distributional connection between the lossy compressed representation of a high-dimensional signal $X$ using a random spherical code and the observation of $X$ under an additive white Gaussian noise (AWGN). We show that the Wasserstein distance between a bitrate-$R$ compressed version of $X$ and its observation under an AWGN-channel of signal-to-noise ratio $2^{2R}-1$ is sub-linear in the problem dimension. We utilize this fact to connect the risk of an estimator based on an AWGN-corrupted version of $X$ to the risk attained by the same estimator when fed with its bitrate-$R$ quantized version. We demonstrate the usefulness of this connection by deriving various novel results for inference problems under compression constraints, including minimax estimation, sparse regression, compressed sensing, and the universality of linear estimation in remote source coding.
翻译:我们认为,使用随机球码代表高维信号X美元的损失压缩表示与在添加的白色高斯噪音(AWGN)下观测X美元之间的分配联系。我们表明,瓦森斯坦在比特-R$压缩版X美元与AWGN信号-噪音比率2 ⁇ 2°2R}-1美元下观测的距离是问题层面的次线性关系。我们利用这一事实将基于AWGN破碎版本的X美元估算器的风险与同一估测器在以比特拉特-美元平价版本填充时所冒的风险联系起来。我们通过得出各种新结果,推断压缩限制下的推断问题,包括微轴估计、微缩回归、压缩感测以及远程源编码中线性估计的普遍性,证明了这一联系的效用。