Title :
Crowd-ML: A Privacy-Preserving Learning Framework for a Crowd of Smart Devices
Author :
Jihun Hamm ; Champion, Adam C. ; Guoxing Chen ; Belkin, Mikhail ; Dong Xuan
Author_Institution :
Dept. of Comput. Sci. & Eng., Ohio State Univ., Columbus, OH, USA
fDate :
June 29 2015-July 2 2015
Abstract :
Smart devices with built-in sensors, computational capabilities, and network connectivity have become increasingly pervasive. Crowds of smart devices offer opportunities to collectively sense and perform computing tasks at an unprecedented scale. This paper presents Crowd-ML, a privacy-preserving machine learning framework for a crowd of smart devices, which can solve a wide range of learning problems for crowd sensing data with differential privacy guarantees. Crowd-ML endows a crowd sensing system with the ability to learn classifiers or predictors online from crowd sensing data privately with minimal computational overhead on devices and servers, suitable for practical large-scale use of the framework. We analyze the performance and scalability of Crowd-ML and implement the system with off-the-shelf smartphones as a proof of concept. We demonstrate the advantages of Crowd-ML with real and simulated experiments under various conditions.
Keywords :
data privacy; learning (artificial intelligence); smart phones; Crowd-ML; built-in sensors; computational capabilities; crowdsensing data; minimal computational overhead; network connectivity; off-the-shelf smartphones; privacy-preserving machine learning framework; proof of concept; smart devices; Data privacy; Noise; Performance evaluation; Privacy; Scalability; Sensors; Servers;
Conference_Titel :
Distributed Computing Systems (ICDCS), 2015 IEEE 35th International Conference on
Conference_Location :
Columbus, OH
DOI :
10.1109/ICDCS.2015.10