Scalable Estimator for Multi-task Gaussian Graphical Models Based in an IoT Network

Beilun Wang, Jiaqi Zhang, Yan Zhang, Meng Wang, Sen Wang
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引用次数: 2

Abstract

Recently, the Internet of Things (IoT) receives significant interest due to its rapid development. But IoT applications still face two challenges: heterogeneity and large scale of IoT data. Therefore, how to efficiently integrate and process these complicated data becomes an essential problem. In this article, we focus on the problem that analyzing variable dependencies of data collected from different edge devices in the IoT network. Because data from different devices are heterogeneous and the variable dependencies can be characterized into a graphical model, we can focus on the problem that jointly estimating multiple, high-dimensional, and sparse Gaussian Graphical Models for many related tasks (edge devices). This is an important goal in many fields. Many IoT networks have collected massive multi-task data and require the analysis of heterogeneous data in many scenarios. Past works on the joint estimation are non-distributed and involve computationally expensive and complex non-smooth optimizations. To address these problems, we propose a novel approach: Multi-FST. Multi-FST can be efficiently implemented on a cloud-server-based IoT network. The cloud server has a low computational load and IoT devices use asynchronous communication with the server, leading to efficiency. Multi-FST shows significant improvement, over baselines, when tested on various datasets.
基于物联网网络的多任务高斯图形模型的可扩展估计器
近年来,物联网(IoT)因其快速发展而引起了人们的极大兴趣。但物联网应用仍面临两大挑战:物联网数据的异构性和大规模。因此,如何对这些复杂的数据进行高效的整合和处理就成为一个必不可少的问题。在本文中,我们重点关注分析从物联网网络中不同边缘设备收集的数据的变量依赖关系的问题。由于来自不同设备的数据是异构的,并且变量依赖关系可以表征为图形模型,因此我们可以专注于为许多相关任务(边缘设备)联合估计多个高维稀疏高斯图形模型的问题。这是许多领域的一个重要目标。许多物联网网络收集了大量多任务数据,需要在许多场景下分析异构数据。过去关于联合估计的工作是非分布的,涉及计算昂贵和复杂的非光滑优化。为了解决这些问题,我们提出了一种新的方法:Multi-FST。Multi-FST可以在基于云服务器的物联网网络中高效实现。云服务器具有较低的计算负载,物联网设备与服务器使用异步通信,从而提高了效率。当在各种数据集上测试时,Multi-FST显示出显著的改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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