ABROSE : Multi Agent Systems for Adaptive Brokerage

نویسندگان

  • Marie Pierre Gleizes
  • Pierre Glize
چکیده

A market place is composed of an important amount of content providers and customers who have very dynamic offers and requests. ABROSE1 (Agent based BROkerage SErvices in electronic commerce) is an agent-based electronic commerce tool. The principal idea is to use an agent-based collective memory between content providers and customers which contains the users’ individual experiments results. ABROSE manages this collective memory to improve the exchanges quality. The principal functions offered by ABROSE are: for the customers, simplified interactions, a personalized assistant, spontaneous notification of new offers, a navigation and requests formalisation tool , a list of relevant content providers which answer to a request given by the customer. for the content providers, a target diffusion of the offers towards relevant customers, a collection of information about the customer’s interests and about market offers.

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تاریخ انتشار 2002