PS-TRUST: Provably Secure Solution for Truthful Double Spectrum Auctions
Zhili Chen, Liusheng Huang, Lu Li, Wei Yang, Haibo Miao, Miaomiao, Tian, Fei Wang

TL;DR
PS-TRUST is the first provably secure, truthful double spectrum auction solution that protects bidder privacy while maintaining auction properties, with practical efficiency demonstrated through experiments.
Contribution
It introduces PS-TRUST, a cryptographically secure auction protocol that ensures bid privacy and truthfulness, filling a gap in secure spectrum auction research.
Findings
Achieves provable security against semi-honest adversaries.
Maintains truthfulness and spectrum reuse properties.
Experimental results show practical efficiency.
Abstract
Truthful spectrum auctions have been extensively studied in recent years. Truthfulness makes bidders bid their true valuations, simplifying greatly the analysis of auctions. However, revealing one's true valuation causes severe privacy disclosure to the auctioneer and other bidders. To make things worse, previous work on secure spectrum auctions does not provide adequate security. In this paper, based on TRUST, we propose PS-TRUST, a provably secure solution for truthful double spectrum auctions. Besides maintaining the properties of truthfulness and special spectrum reuse of TRUST, PS-TRUST achieves provable security against semi-honest adversaries in the sense of cryptography. Specifically, PS-TRUST reveals nothing about the bids to anyone in the auction, except the auction result. To the best of our knowledge, PS-TRUST is the first provably secure solution for spectrum auctions.…
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Taxonomy
TopicsCryptography and Data Security · Blockchain Technology Applications and Security · Privacy-Preserving Technologies in Data
