Quick and Accurate False Data Detection in Mobile Crowd Sensing
Title | Quick and Accurate False Data Detection in Mobile Crowd Sensing |
Publication Type | Conference Paper |
Year of Publication | 2019 |
Authors | Xie, Kun, Li, Xiaocan, Wang, Xin, Xie, Gaogang, Xie, Dongliang, Li, Zhenyu, Wen, Jigang, Diao, Zulong |
Conference Name | IEEE INFOCOM 2019 - IEEE Conference on Computer Communications |
Date Published | apr |
Keywords | approximation theory, composability, cyber physical systems, direct robust matrix factorization, DRMF, False Data Detection, Human Behavior, iteration process, Iterative methods, light weight low rank and false matrix separation algorithm, LightLRFMS, low-rank matrix approximation, Matrix converters, Matrix decomposition, Matrix Separation, MCS, mobile computing, mobile crowd sensing, Monitoring, pubcrawl, resilience, Resiliency, Roads, sensor fusion, Sensors, singular value decomposition, smartphones, Sparse matrices, SVD, Wireless sensor networks |
Abstract | With the proliferation of smartphones, a novel sensing paradigm called Mobile Crowd Sensing (MCS) has emerged very recently. However, the attacks and faults in MCS cause a serious false data problem. Observing the intrinsic low dimensionality of general monitoring data and the sparsity of false data, false data detection can be performed based on the separation of normal data and anomalies. Although the existing separation algorithm based on Direct Robust Matrix Factorization (DRMF) is proven to be effective, requiring iteratively performing Singular Value Decomposition (SVD) for low-rank matrix approximation would result in a prohibitively high accumulated computation cost when the data matrix is large. In this work, we observe the quick false data location feature from our empirical study of DRMF, based on which we propose an intelligent Light weight Low Rank and False Matrix Separation algorithm (LightLRFMS) that can reuse the previous result of the matrix decomposition to deduce the one for the current iteration step. Our algorithm can largely speed up the whole iteration process. From a theoretical perspective, we validate that LightLRFMS only requires one round of SVD computation and thus has very low computation cost. We have done extensive experiments using a PM 2.5 air condition trace and a road traffic trace. Our results demonstrate that LightLRFMS can achieve very good false data detection performance with the same highest detection accuracy as DRMF but with up to 10 times faster speed thanks to its lower computation cost. |
DOI | 10.1109/INFOCOM.2019.8737644 |
Citation Key | xie_quick_2019 |
- MCS
- wireless sensor networks
- SVD
- Sparse matrices
- Smartphones
- singular value decomposition
- sensors
- sensor fusion
- Roads
- Resiliency
- resilience
- pubcrawl
- Monitoring
- mobile crowd sensing
- mobile computing
- approximation theory
- Matrix Separation
- Matrix decomposition
- Matrix converters
- low-rank matrix approximation
- LightLRFMS
- light weight low rank and false matrix separation algorithm
- Iterative methods
- iteration process
- Human behavior
- False Data Detection
- DRMF
- direct robust matrix factorization
- cyber physical systems
- composability