Evaluating the effectiveness of Bayesian and Neural Networks for Adaptive Schedulling Systems

Bruno Cunha, A. Madureira, J. Pereira, I. Pereira
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引用次数: 4

Abstract

The ability to adjust itself to users' profile is imperative in modern system, given that many people interact with a lot of information in different ways. The creation of adaptive systems is a complex domain that requires very specific methods and the integration of several intelligent techniques, from an intelligent systems development perspective. Designing an adaptive system requires planning and training of user modelling techniques combined with existing system components. Based on the architecture for user modelling on Intelligent and Adaptive Scheduling Systems, this paper presents an analysis of using the mentioned architecture to characterize user's behaviours and a case study comparing the employment of different user classifiers. Bayesian and Artificial Neural Networks were selected as the elements of the computational study and this paper presents a description on how to prepare them to deal with user information.
评价贝叶斯和神经网络在自适应调度系统中的有效性
在现代系统中,考虑到许多人以不同的方式与大量信息交互,调整自身以适应用户配置文件的能力是必不可少的。从智能系统开发的角度来看,自适应系统的创建是一个复杂的领域,需要非常具体的方法和几种智能技术的集成。设计一个自适应系统需要结合现有系统组件的用户建模技术的规划和培训。基于智能自适应调度系统的用户建模体系结构,分析了使用该体系结构来描述用户行为的方法,并通过案例分析比较了不同用户分类器的使用情况。本文选择贝叶斯和人工神经网络作为计算研究的元素,并介绍了如何准备它们来处理用户信息。
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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