基于次优学习模型的智能分析新方法

Jiantong He, Ping He
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引用次数: 6

摘要

本文提出了一种基于资源约束的非最优精益启发式学习系统——次最优学习模型(SOLM)。SOLM是我们为提高应用问题解决者的智能性能而开发的基于遗传学的学习框架的实现。本文描述了SOLM提供的与应用程序无关的功能,以及与新问题解决器接口的与应用程序相关的功能。通过调整次优学习系统(SOLMS)中的各种全局参数,用户可以控制SOLMS中的众多选项和备选项。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Intelligence Analysis Method Based on Sub-optimum Learning Model
In this paper, we present sub-optimum learning model (SOLM), a system for learning non-optimum-lean heuristics under resource constraints. SOLM is an implementation of a genetics-based learning framework we have developed for improving the performance of intelligence in application problem solvers. Besides providing a flexible and modular framework for conducting experiments, SOLM provides (a) a optimum-non-optimum for experimenting with various resource scheduling, generalization, and non-optimum-lean strategies, (b) a sub-optimum learning guide system (SOLM) that can be easily interfaced to new applications and can be customized based on user requirements and target environments. This paper describes the application-independent functions provided by SOLM, and the application dependent functions for interfacing to new problem solvers. By adjusting various global parameters in sub-optimum learning system (SOLMS) users can control the numerous options and alternatives in SOLM.
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