CROWDFL: Privacy-preserving mobile crowdsensing system via federated learning

As an emerging sensing data collection paradigm, mobile crowdsensing (MCS) enjoys good scalability and low deployment cost but raises privacy concerns. In this paper, we propose a privacy-preserving MCS system called CROWDFL by seamlessly integrating federated learning (FL) into MCS. At a high level...

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Main Authors: ZHAO, Bowen, LIU, Ximeng, CHEN, Wei-Neng, DENG, Robert H.
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Language:English
Published: Institutional Knowledge at Singapore Management University 2023
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Online Access:https://ink.library.smu.edu.sg/sis_research/8186
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spelling sg-smu-ink.sis_research-91892023-09-26T09:54:03Z CROWDFL: Privacy-preserving mobile crowdsensing system via federated learning ZHAO, Bowen LIU, Ximeng CHEN, Wei-Neng DENG, Robert H. As an emerging sensing data collection paradigm, mobile crowdsensing (MCS) enjoys good scalability and low deployment cost but raises privacy concerns. In this paper, we propose a privacy-preserving MCS system called CROWDFL by seamlessly integrating federated learning (FL) into MCS. At a high level, in order to protect participants' privacy and fully explore participants' computing power, participants in CROWDFL locally process sensing data via FL paradigm and only upload encrypted training models to the server. To this end, we design a secure aggregation algorithm (SecAgg) through the threshold Paillier cryptosystem to aggregate training models in an encrypted form. Also, to stimulate participation, we present a hybrid incentive mechanism combining the reverse Vickrey auction and posted pricing mechanism, which is proved to be truthful and fail. Results of theoretical analysis and experimental evaluation on a practical MCS scenario (human activity recognition) show that CROWDFL is effective in protecting participants' privacy and is efficient in operations. In contrast to existing solutions, CROWDFL is 3x faster in model decryption and improves an order of magnitude in model aggregation. 2023-08-01T07:00:00Z text https://ink.library.smu.edu.sg/sis_research/8186 info:doi/10.1109/TMC.2022.3157603 Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Crowdsensing federated learning homomorphic encryption incentive privacy protection Information Security Numerical Analysis and Scientific Computing
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Crowdsensing
federated learning
homomorphic encryption
incentive
privacy protection
Information Security
Numerical Analysis and Scientific Computing
spellingShingle Crowdsensing
federated learning
homomorphic encryption
incentive
privacy protection
Information Security
Numerical Analysis and Scientific Computing
ZHAO, Bowen
LIU, Ximeng
CHEN, Wei-Neng
DENG, Robert H.
CROWDFL: Privacy-preserving mobile crowdsensing system via federated learning
description As an emerging sensing data collection paradigm, mobile crowdsensing (MCS) enjoys good scalability and low deployment cost but raises privacy concerns. In this paper, we propose a privacy-preserving MCS system called CROWDFL by seamlessly integrating federated learning (FL) into MCS. At a high level, in order to protect participants' privacy and fully explore participants' computing power, participants in CROWDFL locally process sensing data via FL paradigm and only upload encrypted training models to the server. To this end, we design a secure aggregation algorithm (SecAgg) through the threshold Paillier cryptosystem to aggregate training models in an encrypted form. Also, to stimulate participation, we present a hybrid incentive mechanism combining the reverse Vickrey auction and posted pricing mechanism, which is proved to be truthful and fail. Results of theoretical analysis and experimental evaluation on a practical MCS scenario (human activity recognition) show that CROWDFL is effective in protecting participants' privacy and is efficient in operations. In contrast to existing solutions, CROWDFL is 3x faster in model decryption and improves an order of magnitude in model aggregation.
format text
author ZHAO, Bowen
LIU, Ximeng
CHEN, Wei-Neng
DENG, Robert H.
author_facet ZHAO, Bowen
LIU, Ximeng
CHEN, Wei-Neng
DENG, Robert H.
author_sort ZHAO, Bowen
title CROWDFL: Privacy-preserving mobile crowdsensing system via federated learning
title_short CROWDFL: Privacy-preserving mobile crowdsensing system via federated learning
title_full CROWDFL: Privacy-preserving mobile crowdsensing system via federated learning
title_fullStr CROWDFL: Privacy-preserving mobile crowdsensing system via federated learning
title_full_unstemmed CROWDFL: Privacy-preserving mobile crowdsensing system via federated learning
title_sort crowdfl: privacy-preserving mobile crowdsensing system via federated learning
publisher Institutional Knowledge at Singapore Management University
publishDate 2023
url https://ink.library.smu.edu.sg/sis_research/8186
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