A Secure Mobile Crowdsensing Game With Deep Reinforcement Learning

被引:141
|
作者
Xiao, Liang [1 ]
Li, Yanda [2 ]
Han, Guoan [2 ]
Dai, Huaiyu [3 ]
Poor, H. Vincent [4 ]
机构
[1] Sun Yat Sen Univ, Sch Data & Comp Sci, Guangdong Key Lab Big Data Anal & Proc, Guangzhou 510006, Guangdong, Peoples R China
[2] Xiamen Univ, Dept Commun Engn, Xiamen 361005, Peoples R China
[3] North Carolina State Univ, Dept Elect & Comp Engn, Raleigh, NC 27616 USA
[4] Princeton Univ, Dept Elect Engn, Princeton, NJ 08544 USA
基金
中国国家自然科学基金; 美国国家科学基金会;
关键词
Mobile crowdsensing; game theory; deep reinforcement learning; faked sensing attacks; deep Q-networks; SMARTPHONES; INCENTIVES; REPUTATION; PRIVACY;
D O I
10.1109/TIFS.2017.2737968
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
Mobile crowdsensing (MCS) is vulnerable to faked sensing attacks, as selfish smartphone users sometimes provide faked sensing results to the MCS server to save their sensing costs and avoid privacy leakage. In this paper, the interactions between an MCS server and a number of smartphone users are formulated as a Stackelberg game, in which the server as the leader first determines and broadcasts its payment policy for each sensing accuracy. Each user as a follower chooses the sensing effort and thus the sensing accuracy afterward to receive the payment based on the payment policy and the sensing accuracy estimated by the server. The Stackelberg equilibria of the secure MCS game are presented, disclosing conditions to motivate accurate sensing. Without knowing the smartphone sensing models in a dynamic version of the MCS game, an MCS system can apply deep Q-network (DQN), which is a deep reinforcement learning technique combining reinforcement learning and deep learning techniques, to derive the optimal MCS policy against faked sensing attacks. The DQN-based MCS system uses a deep convolutional neural network to accelerate the learning process with a high-dimensional state space and action set, and thus improve the MCS performance against selfish users. Simulation results show that the proposed MCS system stimulates high-quality sensing services and suppresses faked sensing attacks, compared with a Q-learning-based MCS system.
引用
收藏
页码:35 / 47
页数:13
相关论文
共 50 条
  • [1] Secure Mobile Crowdsensing Based on Deep Learning
    Liang Xiao
    Donghua Jiang
    Dongjin Xu
    Wei Su
    Ning An
    Dongming Wang
    China Communications, 2018, 15 (10) : 1 - 11
  • [2] Secure Mobile Crowdsensing Based on Deep Learning
    Xiao, Liang
    Jiang, Donghua
    Xu, Dongjin
    Su, Wei
    An, Ning
    Wang, Dongming
    CHINA COMMUNICATIONS, 2018, 15 (10) : 1 - 11
  • [3] Secure Mobile Crowdsensing Game
    Xiao, Liang
    Liu, Jinliang
    Li, Qiangda
    Poor, H. Vincent
    2015 IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS (ICC), 2015, : 7157 - 7162
  • [4] Task Allocation for Mobile Crowdsensing with Deep Reinforcement Learning
    Tao, Xi
    Song, Wei
    2020 IEEE WIRELESS COMMUNICATIONS AND NETWORKING CONFERENCE (WCNC), 2020,
  • [5] Federated Deep Reinforcement Learning for Task Participation in Mobile Crowdsensing
    Dongare, Sumedh
    Ortiz, Andrea
    Klein, Anja
    IEEE CONFERENCE ON GLOBAL COMMUNICATIONS, GLOBECOM, 2023, : 4436 - 4441
  • [6] Cell Selection with Deep Reinforcement Learning in Sparse Mobile Crowdsensing
    Wang, Leye
    Liu, Wenbin
    Zhang, Daqing
    Wang, Yasha
    Wang, En
    Yang, Yongjian
    2018 IEEE 38TH INTERNATIONAL CONFERENCE ON DISTRIBUTED COMPUTING SYSTEMS (ICDCS), 2018, : 1543 - 1546
  • [7] Mobile Crowdsensing for Data Freshness: A Deep Reinforcement Learning Approach
    Dai, Zipeng
    Wang, Hao
    Liu, Chi Harold
    Han, Rui
    Tang, Jian
    Wang, Guoren
    IEEE CONFERENCE ON COMPUTER COMMUNICATIONS (IEEE INFOCOM 2021), 2021,
  • [8] Deep Reinforcement Learning for Task Allocation in Energy Harvesting Mobile Crowdsensing
    Dongare, Sumedh
    Ortiz, Andrea
    Klein, Anja
    2022 IEEE GLOBAL COMMUNICATIONS CONFERENCE (GLOBECOM 2022), 2022, : 269 - 274
  • [9] Dynamic Task Assignment Framework for Mobile Crowdsensing with Deep Reinforcement Learning
    Fu Y.
    Qi K.
    Shi Y.
    Shen Y.
    Xu L.
    Zhang X.
    Wireless Communications and Mobile Computing, 2023, 2023
  • [10] Smart Mobile Crowdsensing With Urban Vehicles: A Deep Reinforcement Learning Perspective
    Wang, Chaowei
    Gaimu, Xiga
    Li, Chensheng
    Zou, He
    Wang, Weidong
    IEEE ACCESS, 2019, 7 : 37334 - 37341