We present an approach to matchmaking in P2P e-marketplaces, which mixes in a formal and principled way Datalog, fuzzy sets and utility theory, in order to determine most promising matches between perspective counterparts. Use of Datalog ensures the scalability of our approach to large marketplaces, while Fuzzy Logic provides a neat connection with logical specifications and allows to model soft constraints and how well they could be satisfied by an agreement. Noteworthy is that our approach takes into account in the peer-to-peer matchmaking also preferences of each counterpart and their utilities. This allows to rule out of the match list those counteroffers that, although seemingly appealing for the buyer, would probably lead to failure due to contrasting preferences of the seller, and paves the way to the actual negotiation stage.
Extending datalog for matchmaking in P2P E-marketplaces
Ragone Azzurra;Di Noia T.;Di Sciascio E.;
2007-01-01
Abstract
We present an approach to matchmaking in P2P e-marketplaces, which mixes in a formal and principled way Datalog, fuzzy sets and utility theory, in order to determine most promising matches between perspective counterparts. Use of Datalog ensures the scalability of our approach to large marketplaces, while Fuzzy Logic provides a neat connection with logical specifications and allows to model soft constraints and how well they could be satisfied by an agreement. Noteworthy is that our approach takes into account in the peer-to-peer matchmaking also preferences of each counterpart and their utilities. This allows to rule out of the match list those counteroffers that, although seemingly appealing for the buyer, would probably lead to failure due to contrasting preferences of the seller, and paves the way to the actual negotiation stage.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.