论文标题
无线通道上远程分类的容量
Capacity of Remote Classification Over Wireless Channels
论文作者
论文摘要
无线连接创建了合并通信和推理的计算范式。此范式中的基本操作是设备将分类任务卸载到边缘服务器的操作。我们称此远程分类,有可能启用智能应用程序。远程分类受到无线通道的有限和可变数据速率的挑战,这会影响传递高维特征的能力,从而限制分类分辨率。我们以分类容量的名义介绍了一组指标,这些指标被定义为最大的类数,可以通过给定的通信渠道识别出目标分类误差概率。目的是从库中选择一部分类,以在给定的频道上提供令人满意的性能。我们处理两个子集选择的情况。首先,设备可以通过修剪类库来选择子集,直到到达符合目标误差概率的子集的同时最大化分类能力的子集。采用子空间数据模型,我们证明了分类能力最大化与格拉斯曼尼亚包装的等效性。结果表明,分类能力随瞬时通信速率呈指数增长,并在每个数据群集的尺寸上呈高指数。如果分别用平均速率和固定速率代替瞬时速率,则这也适用于沿阵行和中断容量,并且褪色。在第二种情况下,设备对每个通信率都具有类子子集的偏好,该设备被建模为均匀采样库的实例。如果没有班级选择,则证明,分类能力及其偏执和中断对应物可以与相应的通信率线性扩展,而不是在最后一个情况下的指数增长。
Wireless connectivity creates a computing paradigm that merges communication and inference. A basic operation in this paradigm is the one where a device offloads classification tasks to the edge servers. We term this remote classification, with a potential to enable intelligent applications. Remote classification is challenged by the finite and variable data rate of the wireless channel, which affects the capability to transfer high-dimensional features and thus limits the classification resolution. We introduce a set of metrics under the name of classification capacity that are defined as the maximum number of classes that can be discerned over a given communication channel while meeting a target classification error probability. The objective is to choose a subset of classes from a library that offers satisfactory performance over a given channel. We treat two cases of subset selection. First, a device can select the subset by pruning the class library until arriving at a subset that meets the targeted error probability while maximizing the classification capacity. Adopting a subspace data model, we prove the equivalence of classification capacity maximization to Grassmannian packing. The results show that the classification capacity grows exponentially with the instantaneous communication rate, and super-exponentially with the dimensions of each data cluster. This also holds for ergodic and outage capacities with fading if the instantaneous rate is replaced with an average rate and a fixed rate, respectively. In the second case, a device has a preference of class subset for every communication rate, which is modeled as an instance of uniformly sampling the library. Without class selection, the classification capacity and its ergodic and outage counterparts are proved to scale linearly with their corresponding communication rates instead of the exponential growth in the last case.