摘要

In agent-based automated negotiation research area, a key problem is how to make software agent more adaptable to represent user preferences or suggestions, so that agent can take further proposals that reflect user requirements to implement ecommerce activities like automated transactions. The difficulty lies in the uncertainty of user preferences that include uncertain description and contents, non-linear and dynamic variability. In this paper, fuzzy language was used to describe the uncertainty and combine with multiple classified artificial neural networks (ANNs) for self-adaptive learning of user preferences. The refinement learning results of various negotiation contracts' satisfaction degrees in the extent of fuzzy classification can be achieved. Compared to unclassified computation, the experimental results illustrate that the learning ability and effectiveness of agents have been improved.

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