{"title":"基于学习自动机的分式背包问题的最优轮询频率确定","authors":"O-C. Granmo, B. Oommen, S. A. Myrer, M. G. Olsen","doi":"10.1109/ICCIS.2006.252228","DOIUrl":null,"url":null,"abstract":"Previous approaches to resource allocation in Web monitoring target optimal performance under restricted capacity constraints (Pandey et al., 2003; Wolf et al., 2002). The resource allocation problem is generally modelled as a knapsack problem with known deterministic properties. However, for practical purposes the Web must often be treated as stochastic and unknown. Unfortunately, estimating unknown knapsack properties (e.g., based on an estimation phase (Pandey et al., 2003; Wolf et al., 2002)) delays finding an optimal or near-optimal solution. Dynamic environments aggravate this problem further when the optimal solution changes with time. In this paper, we present a novel solution for the nonlinear fractional knapsack problem with a separable and concave criterion function (Bretthauer and Shetty, 2002). To render the problem realistic, we consider the criterion function to be stochastic with an unknown distribution. At every time instant, our scheme utilizes a series of informed guesses to move, in an online manner, from a \"current\" solution, towards the optimal solution. At the heart of our scheme, a game of deterministic learning automata performs a controlled random walk on a discretized solution space. Comprehensive experimental results demonstrate that the discretization resolution determines the precision of our scheme. In order to yield a required precision, the current resource allocation solution is consistently improved, until a near-optimal solution is found. Furthermore, our proposed scheme quickly adapts to periodically switching environments. 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引用次数: 15
摘要
以前的Web监控资源分配方法的目标是在有限的容量约束下实现最佳性能(Pandey et al., 2003;Wolf et al., 2002)。资源分配问题通常被建模为具有已知确定性性质的背包问题。然而,出于实际目的,Web必须经常被视为随机和未知的。不幸的是,估计未知的背包属性(例如,基于估计阶段(Pandey et al., 2003;Wolf et al., 2002))延迟寻找最优或接近最优解。当最优解随时间变化时,动态环境进一步加剧了这一问题。在本文中,我们提出了一个新的解非线性分数阶背包问题具有可分离和凹准则函数(Bretthauer和Shetty, 2002)。为了使问题更现实,我们认为准则函数是随机的,具有未知的分布。在每一个瞬间,我们的方案利用一系列知情的猜测,以在线的方式,从“当前”的解决方案移动到最优的解决方案。在我们方案的核心,一个确定性学习自动机的游戏在一个离散的解空间上执行一个受控的随机漫步。综合实验结果表明,离散化分辨率决定了方案的精度。为了获得所需的精度,不断改进当前的资源分配解决方案,直到找到接近最优的解决方案。此外,我们提出的方案能够快速适应周期性切换的环境。因此,我们认为我们的方案在质量上优于基于估计的方案
Determining Optimal Polling Frequency Using a Learning Automata-based Solution to the Fractional Knapsack Problem
Previous approaches to resource allocation in Web monitoring target optimal performance under restricted capacity constraints (Pandey et al., 2003; Wolf et al., 2002). The resource allocation problem is generally modelled as a knapsack problem with known deterministic properties. However, for practical purposes the Web must often be treated as stochastic and unknown. Unfortunately, estimating unknown knapsack properties (e.g., based on an estimation phase (Pandey et al., 2003; Wolf et al., 2002)) delays finding an optimal or near-optimal solution. Dynamic environments aggravate this problem further when the optimal solution changes with time. In this paper, we present a novel solution for the nonlinear fractional knapsack problem with a separable and concave criterion function (Bretthauer and Shetty, 2002). To render the problem realistic, we consider the criterion function to be stochastic with an unknown distribution. At every time instant, our scheme utilizes a series of informed guesses to move, in an online manner, from a "current" solution, towards the optimal solution. At the heart of our scheme, a game of deterministic learning automata performs a controlled random walk on a discretized solution space. Comprehensive experimental results demonstrate that the discretization resolution determines the precision of our scheme. In order to yield a required precision, the current resource allocation solution is consistently improved, until a near-optimal solution is found. Furthermore, our proposed scheme quickly adapts to periodically switching environments. Thus, we believe that our scheme is qualitatively superior to the class of estimation-based schemes