自主学习系统的最佳任务序列

Radosław Rudek, Agnieszka Rudek, P. Skworcow
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引用次数: 4

摘要

在本文中,我们考虑了系统的最优任务序列,这些任务序列可以通过自主学习(边做边学)来提高系统的性能。特别是,我们关注的问题是确定自主学习系统执行任务的顺序,以最小化任务的总加权完成时间。提出的方法的基础是计划(任务序列)允许有效地利用系统的学习能力来优化其目标,但它不影响系统本身。为了解决这个问题,我们证明了一个用于构造分支定界算法的消去性质,并给出了一些快速启发式和元启发式方法。本文还对所提出算法的效率进行了广泛的分析。
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An optimal sequence of tasks for autonomous learning systems
In this paper, we consider an optimal sequence of tasks for systems that improve their performances due to autonomous learning (learning-by-doing). In particular, we focus on a problem of determining sequence of performed tasks for the autonomous learning systems to minimize the total weighted completion times of tasks. Fundamental for the presented approach is that schedule (a sequence of tasks) allows to efficiently utilize learning abilities of the system to optimize its objective, but it does not affect the system itself. To solve the problem, we prove an eliminating property that is used to construct a branch and bound algorithm and present some fast heuristic and metaheuristic methods. An extensive analysis of the efficiency of the proposed algorithms is also provided.
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