作业问题的一般统计物理学框架

IF 1.8 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Algorithms Pub Date : 2024-05-14 DOI:10.3390/a17050212
P. Koehl, H. Orland
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引用次数: 0

摘要

线性赋值问题在组合优化中占有举足轻重的地位,在数据科学领域有着广泛的应用。线性赋值问题包括将 "代理 "分配给 "任务",从而使与赋值相关的总成本最小。当代理的数量等于任务的数量时,代理和任务之间是一一对应的,这种分配是平衡的,否则就是不平衡的。还可以施加其他选项和限制,如允许代理执行多项任务或允许任务由多个代理执行。在本文中,我们提出了一个新颖的框架,它能利用统计物理学领域的方法解决所有这些分配问题。我们详细描述了这一形式主义,并验证了其所有论断。该框架的一个主要部分是定义了一个凹形有效自由能函数,它在有限温度背景下封装了赋值问题的约束条件。我们证明,该自由能作为代表温度倒数的参数 β 的函数单调递减。随着 β 的增加,自由能趋近于最优分配成本。此外,我们还证明,当 β 值足够大时,通过将计算出的赋值矩阵元素舍入到最接近的整数,就能得出赋值问题的精确解。我们介绍了我们框架的计算机实现,并说明了它在匈牙利算法不适用的多任务分配问题中的应用。
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A General Statistical Physics Framework for Assignment Problems
Linear assignment problems hold a pivotal role in combinatorial optimization, offering a broad spectrum of applications within the field of data sciences. They consist of assigning “agents” to “tasks” in a way that leads to a minimum total cost associated with the assignment. The assignment is balanced when the number of agents equals the number of tasks, with a one-to-one correspondence between agents and tasks, and it is and unbalanced otherwise. Additional options and constraints may be imposed, such as allowing agents to perform multiple tasks or allowing tasks to be performed by multiple agents. In this paper, we propose a novel framework that can solve all these assignment problems employing methodologies derived from the field of statistical physics. We describe this formalism in detail and validate all its assertions. A major part of this framework is the definition of a concave effective free energy function that encapsulates the constraints of the assignment problem within a finite temperature context. We demonstrate that this free energy monotonically decreases as a function of a parameter β representing the inverse of temperature. As β increases, the free energy converges to the optimal assignment cost. Furthermore, we demonstrate that when β values are sufficiently large, the exact solution to the assignment problem can be derived by rounding off the elements of the computed assignment matrix to the nearest integer. We describe a computer implementation of our framework and illustrate its application to multi-task assignment problems for which the Hungarian algorithm is not applicable.
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来源期刊
Algorithms
Algorithms Mathematics-Numerical Analysis
CiteScore
4.10
自引率
4.30%
发文量
394
审稿时长
11 weeks
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