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An Analysis of $N!K$ Landscapes: Interaction Structure, Statistical Properties, and Expected Number of Local Optima

机译: $ N!K $ 景观的分析:交互结构,统计属性和局部最优值的预期数量

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Simulated landscapes have been used for decades to evaluate search strategies whose goal is to find the landscape location with maximum fitness. Understanding properties of landscapes is important for understanding search difficulty. This paper presents a novel and transparent characterization of NK landscapes and derives an analytic expression representing the expected number of local optima. We prove that NK landscapes can be represented by parametric linear interaction models where model coefficients have meaningful interpretations. We derive the statistical properties of the model coefficients, providing insight into how the NK algorithm parses importance to main effects and interactions. An important insight derived from the linear model representation is that the rank of the linear model defined by the NK algorithm is correlated with the number of local optima, a strong determinant of landscape complexity, and search difficulty. We show that the maximal rank for an NK landscape is achieved through epistatic interactions that form partially balanced incomplete block designs. Finally, an analytic expression representing the expected number of local optima on the landscape is derived, providing a way to quickly compute the expected number of local optima for very large landscapes.
机译:数十年来,模拟景观已用于评估搜索策略,其目标是找到适合度最高的景观位置。了解景观的属性对于理解搜索难度很重要。本文提出了一种新颖且透明的NK景观特征,并推导了一个表示预期局部最优数量的解析表达式。我们证明NK景观可以由参数线性交互模型表示,其中模型系数具有有意义的解释。我们推导出模型系数的统计属性,从而深入了解NK算法如何解析对主要影响和相互作用的重要性。从线性模型表示中得出的重要见解是,由NK算法定义的线性模型的等级与局部最优数,景观复杂性的强决定因素和搜索难度相关。我们表明,NK景观的最大等级是通过形成部分平衡的不完整区块设计的上位相互作用实现的。最后,导出表示景观上局部最优期望数量的解析表达式,为快速计算非常大景观的局部最优期望数量提供了一种方法。

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