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- Title
IOTA Based Anomaly Detection Machine learning in Mobile Sensing.
- Authors
Akhtar, Muhammad Shoaib; Tao Feng
- Abstract
In this proposed method, iMCS can detect and prevent fake sensing activities of mobile users using machine learning techniques. Our iMCS solution uses behavioral analysis based on participants' reliability scores to detect variation in behavior of users and introduces a new role in a distributed system of MCS architecture to validate the collected data. To evaluate the incentive based on the participant's sensory data and data quality, to properly distribute profit among the participants, we employ the Shapley Value approach. The evaluation results demonstrate that our method is effective in both quality estimations and incentive sharing.
- Subjects
ANOMALY detection (Computer security); MACHINE learning; MOBILE learning; BEHAVIORAL assessment; DEEP learning
- Publication
EAI Endorsed Transactions on Creative Technologies, 2022, Vol 9, Issue 30, p1
- ISSN
2409-9708
- Publication type
Article
- DOI
10.4108/eai.11-1-2022.172814