Boosting privately: Federated extreme gradient boosting for mobile crowdsensing

Recently, Google and other 24 institutions proposed a series of open challenges towards federated learning (FL), which include application expansion and homomorphic encryption (HE). The former aims to expand the applicable machine learning models of FL. The latter focuses on who holds the secret key...

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Main Authors: LIU, Yang, MA, Zhuo, LIU, Ximeng, MA, Siqi, NEPAL, Surya, DENG, Robert H., REN, Kui
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Language:English
Published: Institutional Knowledge at Singapore Management University 2020
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Online Access:https://ink.library.smu.edu.sg/sis_research/5921
https://ink.library.smu.edu.sg/context/sis_research/article/6924/viewcontent/BoostingPrivately_av.pdf
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spelling sg-smu-ink.sis_research-69242021-05-11T02:57:20Z Boosting privately: Federated extreme gradient boosting for mobile crowdsensing LIU, Yang MA, Zhuo LIU, Ximeng MA, Siqi NEPAL, Surya DENG, Robert H. REN, Kui Recently, Google and other 24 institutions proposed a series of open challenges towards federated learning (FL), which include application expansion and homomorphic encryption (HE). The former aims to expand the applicable machine learning models of FL. The latter focuses on who holds the secret key when applying HE to FL. For the naive HE scheme, the server is set to master the secret key. Such a setting causes a serious problem that if the server does not conduct aggregation before decryption, a chance is left for the server to access the user’s update. Inspired by the two challenges, we propose FEDXGB, a federated extreme gradient boosting (XGBoost) scheme supporting forced aggregation. FEDXGB mainly achieves the following two breakthroughs. First, FEDXGB involves a new HE based secure aggregation scheme for FL. By combining the advantages of secret sharing and homomorphic encryption, the algorithm can solve the second challenge mentioned above, and is robust to the user dropout. Then, FEDXGB extends FL to a new machine learning model by applying the secure aggregation scheme to the classification and regression tree building of XGBoost. Moreover, we conduct a comprehensive theoretical analysis and extensive experiments to evaluate the security, effectiveness, and efficiency of FEDXGB. The results indicate that FEDXGB achieves less than 1% accuracy loss compared with the original XGBoost, and can provide about 23.9% runtime and 33.3% communication reduction for HE based model update aggregation of FL. 2020-11-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/5921 info:doi/10.1109/ICDCS47774.2020.00017 https://ink.library.smu.edu.sg/context/sis_research/article/6924/viewcontent/BoostingPrivately_av.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Privacy-Preserving Federated learning Extreme gradient boosting Mobile crowdsensing Information Security
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Privacy-Preserving
Federated learning
Extreme gradient boosting
Mobile crowdsensing
Information Security
spellingShingle Privacy-Preserving
Federated learning
Extreme gradient boosting
Mobile crowdsensing
Information Security
LIU, Yang
MA, Zhuo
LIU, Ximeng
MA, Siqi
NEPAL, Surya
DENG, Robert H.
REN, Kui
Boosting privately: Federated extreme gradient boosting for mobile crowdsensing
description Recently, Google and other 24 institutions proposed a series of open challenges towards federated learning (FL), which include application expansion and homomorphic encryption (HE). The former aims to expand the applicable machine learning models of FL. The latter focuses on who holds the secret key when applying HE to FL. For the naive HE scheme, the server is set to master the secret key. Such a setting causes a serious problem that if the server does not conduct aggregation before decryption, a chance is left for the server to access the user’s update. Inspired by the two challenges, we propose FEDXGB, a federated extreme gradient boosting (XGBoost) scheme supporting forced aggregation. FEDXGB mainly achieves the following two breakthroughs. First, FEDXGB involves a new HE based secure aggregation scheme for FL. By combining the advantages of secret sharing and homomorphic encryption, the algorithm can solve the second challenge mentioned above, and is robust to the user dropout. Then, FEDXGB extends FL to a new machine learning model by applying the secure aggregation scheme to the classification and regression tree building of XGBoost. Moreover, we conduct a comprehensive theoretical analysis and extensive experiments to evaluate the security, effectiveness, and efficiency of FEDXGB. The results indicate that FEDXGB achieves less than 1% accuracy loss compared with the original XGBoost, and can provide about 23.9% runtime and 33.3% communication reduction for HE based model update aggregation of FL.
format text
author LIU, Yang
MA, Zhuo
LIU, Ximeng
MA, Siqi
NEPAL, Surya
DENG, Robert H.
REN, Kui
author_facet LIU, Yang
MA, Zhuo
LIU, Ximeng
MA, Siqi
NEPAL, Surya
DENG, Robert H.
REN, Kui
author_sort LIU, Yang
title Boosting privately: Federated extreme gradient boosting for mobile crowdsensing
title_short Boosting privately: Federated extreme gradient boosting for mobile crowdsensing
title_full Boosting privately: Federated extreme gradient boosting for mobile crowdsensing
title_fullStr Boosting privately: Federated extreme gradient boosting for mobile crowdsensing
title_full_unstemmed Boosting privately: Federated extreme gradient boosting for mobile crowdsensing
title_sort boosting privately: federated extreme gradient boosting for mobile crowdsensing
publisher Institutional Knowledge at Singapore Management University
publishDate 2020
url https://ink.library.smu.edu.sg/sis_research/5921
https://ink.library.smu.edu.sg/context/sis_research/article/6924/viewcontent/BoostingPrivately_av.pdf
_version_ 1770575664914628608