Neural network for learning and analyzing preferences for Multi-Criteria services

Imane Haddar, B. Raouyane, M. Bellafkih
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Abstract

In the latest years, service selection is becoming more and more important due to the significant effect of internet based services in the telecom industry. When it comes to selecting the best service, different candidate services with similar settings are proposed by different service providers. The selection should take into consideration the respect of the constraints of consumers in terms of Service Level Agreement contracts, what makes the modelling of the preferences of decision-makers for choice problems the main focus of this work. In order to model these preferences, we propose contextual preference functions based on machine learning techniques from neural networks. It will therefore be possible to further explain and decode preferences in order to facilitate negotiation and thus decision-making, thereby improving the quality of service providers while being on customer preferences.
用于学习和分析多准则服务偏好的神经网络
近年来,由于基于互联网的服务在电信行业的显著影响,服务选择变得越来越重要。在选择最佳服务时,不同的服务提供者会提出具有相似设置的不同候选服务。选择应考虑到消费者在服务水平协议契约方面的约束,这使得决策者对选择问题的偏好建模成为本工作的主要焦点。为了对这些偏好进行建模,我们提出了基于神经网络机器学习技术的上下文偏好函数。因此,有可能进一步解释和解码偏好,以促进谈判和决策,从而提高服务提供商的质量,同时满足客户的偏好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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