Towards Privacy-Preserving Multi-party Bartering
نویسندگان
چکیده
Both B2B bartering as well as bartering between individuals is increasingly facilitated through online platforms. However, typically these platforms lack automation and tend to neglect the privacy of their users by leaking crucial information about trades. It is in this context that we devise the first privacypreserving protocol for automatically determining an actual trade between multiple parties without involving a trusted third party.
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