Optimal Auction For Edge Computing Resource Management in Mobile Blockchain Networks: A Deep Learning Approach
Nguyen Cong Luong, Zehui Xiong, Ping Wang, and Dusit Niyato

TL;DR
This paper proposes a deep learning-based optimal auction mechanism for edge resource allocation in mobile blockchain networks, enhancing revenue while ensuring incentive compatibility.
Contribution
It introduces a neural network architecture that learns to implement the optimal auction for edge resource management in mobile blockchain environments.
Findings
Deep learning effectively derives optimal auction mechanisms.
The proposed method increases revenue for edge service providers.
Neural network-based auctions ensure incentive compatibility.
Abstract
Blockchain has recently been applied in many applications such as bitcoin, smart grid, and Internet of Things (IoT) as a public ledger of transactions. However, the use of blockchain in mobile environments is still limited because the mining process consumes too much computing and energy resources on mobile devices. Edge computing offered by the Edge Computing Service Provider can be adopted as a viable solution for offloading the mining tasks from the mobile devices, i.e., miners, in the mobile blockchain environment. However, a mechanism needs to be designed for edge resource allocation to maximize the revenue for the Edge Computing Service Provider and to ensure incentive compatibility and individual rationality is still open. In this paper, we develop an optimal auction based on deep learning for the edge resource allocation. Specifically, we construct a multi-layer neural network…
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