Litcius/Paper detail

An Efficient Architecture for Imputing Distributed Data Sets of IoT Networks

Liying Li, Yinghui Wang, Haizhou Wang, Shiyan Hu, Tongquan Wei

2023IEEE Internet of Things Journal16 citationsDOI

Abstract

In the era of the Internet of Things (IoT), spatially distributed IoT devices collect and store data in a distributed fashion for computational efficiency. However, in IoT networks, due to the fragile device, harsh deployment environment, and unreliable transmission, the possibility of missing data is increasing, which may significantly affect subsequent data processing. Traditional approaches to impute missing data in IoT distributed data sets bring huge communication overheads. In this article, we develop an efficient architecture for distributed IoT data imputation based on a designed multidiscriminator conditional generative adversarial network. The architecture intelligently learns the characteristics of the distributed data sets to accurately impute missing values. Our experiments are performed using three data sets under two different data missing mechanisms. The experimental results demonstrate that using three data sets, the proposed imputation technique can drastically reduce the imputation error by up to 88.66%, 94.27%, and 95.53% at the premise of low transmission cost, respectively, compared to five state-of-the-art methods.

Topics & Concepts

Computer scienceMissing dataImputation (statistics)Data miningDistributed computingDistributed databaseInternet of ThingsSoftware deploymentData transmissionArchitectureData modelingComputer networkMachine learningDatabaseEmbedded systemVisual artsArtOperating systemGenerative Adversarial Networks and Image SynthesisFace recognition and analysisVideo Surveillance and Tracking Methods
An Efficient Architecture for Imputing Distributed Data Sets of IoT Networks | Litcius