We study a class of $K$-encoder hypothesis testing against conditional independence problems. Under the criterion that stipulates minimization of the Type II error subject to a (constant) upper bound $\epsilon$ on the Type I error, we characterize the set of encoding rates and exponent for both discrete memoryless and memoryless vector Gaussian settings. For the DM setting, we provide a converse proof and show that it is achieved using the Quantize-Bin-Test scheme of Rahman and Wagner. For the memoryless vector Gaussian setting, we develop a tight outer bound by means of a technique that relies on the de Bruijn identity and the properties of Fisher information. In particular, the result shows that for memoryless vector Gaussian sources the rate-exponent region is exhausted using the Quantize-Bin-Test scheme with \textit{Gaussian} test channels; and there is \textit{no} loss in performance caused by restricting the sensors' encoders not to employ time sharing. Furthermore, we also study a variant of the problem in which the source, not necessarily Gaussian, has finite differential entropy and the sensors' observations noises under the null hypothesis are Gaussian. For this model, our main result is an upper bound on the exponent-rate function. The bound is shown to mirror a corresponding explicit lower bound, except that the lower bound involves the source power (variance) whereas the upper bound has the source entropy power. Part of the utility of the established bound is for investigating asymptotic exponent/rates and losses incurred by distributed detection as function of the number of sensors.
翻译:我们研究的是针对有条件独立问题的“ $K$- encoder 假设” 测试等级。 在规定将第二类错误在类型I 错误上( 默认) 上限 $\ epsilon$ 的标准下, 我们为离散无记忆和无记忆矢量高斯设置的编码率和亮度设定设定了一套编码率和亮度。 对于 DM 设置, 我们提供反向证明, 并显示它是使用 Rahman 和 Wagner 的 Quartizeize- Bin 测试方案实现的。 对于无记忆矢量高斯 设置而言, 我们通过一种基于 de Bruijn 身份和 Fishercher 信息属性的( 默认) 技术开发了一个紧凑的外框。 特别是, 结果显示对于无记忆矢量矢量的矢量率和亮度区域来说, 使用 Qautizizer- Ben- 测试方案, 我们的内置值源值损失了 。 此外, 我们的内置控源的内置值是 变数 。