Among the Web opportunities, e-Commerce processes have increased in relevance requiring the development of complex tools to support all the parties involved therein. This paper proposes a neural network hybrid recommender system able to provide customers, associated with XML-based personal agents within a multi-agent system called MARF, with suggestions about flights purchases. MARF agents continuously monitor customers’ interests and preferences in their commercial Web activities, by constructing and automatically maintaining their profiles. In order to highlight the benefits provided by the proposed flight recommender, some experimental results carried out by exploiting a MARF prototype are presented.

Postorino, M., Sarne', G. (2011). A Neural Network Hybrid Recommender System. In Neural Nets WIRN10 (pp.180-187). Amsterdam : IOS Press [10.3233/978-1-60750-692-8-180].

A Neural Network Hybrid Recommender System

SARNE' G
2011

Abstract

Among the Web opportunities, e-Commerce processes have increased in relevance requiring the development of complex tools to support all the parties involved therein. This paper proposes a neural network hybrid recommender system able to provide customers, associated with XML-based personal agents within a multi-agent system called MARF, with suggestions about flights purchases. MARF agents continuously monitor customers’ interests and preferences in their commercial Web activities, by constructing and automatically maintaining their profiles. In order to highlight the benefits provided by the proposed flight recommender, some experimental results carried out by exploiting a MARF prototype are presented.
paper
Multi-agent system; Neural network; Recommender system;
English
Neural Nets WIRN '10
27-29 MAY 2010
APOLLONI B BASSIS S MORABITO CF
Neural Nets WIRN10
978-1-60750-691-1
2011
226
180
187
http://ebooks.iospress.nl/publication/6381
open
Postorino, M., Sarne', G. (2011). A Neural Network Hybrid Recommender System. In Neural Nets WIRN10 (pp.180-187). Amsterdam : IOS Press [10.3233/978-1-60750-692-8-180].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/299432
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