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Representing Fitness Landscapes by Valued Constraints to Understand the Complexity of Local Search

机译:用有价值的约束表示健身景观以了解本地搜索的复杂性

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Local search is widely used to solve combinatorial optimisation problems and to model biological evolution, but the performance of local search algorithms on different kinds of fitness landscapes is poorly understood. Here we introduce a natural approach to modelling fitness landscapes using valued constraints. This allows us to investigate minimal representations (normal forms) and to consider the effects of the structure of the constraint graph on the tractability of local search. First, we show that for fitness landscapes representable by binary Boolean valued constraints there is a minimal necessary constraint graph that can be easily computed. Second, we consider landscapes as equivalent if they allow the same (improving) local search moves; we show that a minimal normal form still exists, but is NP-hard to compute. Next we consider the complexity of local search on fitness landscapes modelled by valued constraints with restricted forms of constraint graph. In the binary Boolean case, we prove that a tree-structured constraint graph gives a tight quadratic bound on the number of improving moves made by any local search; hence, any landscape that can be represented by such a model will be tractable for local search. We build two families of examples to show that both the conditions in our tractability result are essential. With domain size three, even just a path of binary constraints can model a landscape with an exponentially long sequence of improving moves. With a treewidth two constraint graph, even with a maximum degree of three, binary Boolean constraints can model a landscape with an exponentially long sequence of improving moves.
机译:局部搜索被广泛用于解决组合优化问题并为生物学进化建模,但是对于不同类型的适应性景观,局部搜索算法的性能知之甚少。在这里,我们介绍了一种使用有价值的约束对健身景观进行建模的自然方法。这使我们能够研究最小表示形式(标准形式),并考虑约束图的结构对局部搜索的可处理性的影响。首先,我们表明对于可以用二进制布尔值约束表示的适应度景观,存在一个可以轻松计算的最小必要约束图。其次,如果景观允许相同(改善)的本地搜索动作,我们认为景观是等同的。我们显示出最小范式仍然存在,但是NP难以计算。接下来,我们考虑通过具有约束形式的约束图的有价约束对健身景观进行局部搜索的复杂性。在二元布尔情况下,我们证明了树形约束图对任何局部搜索做出的改进动作的数量给出了严格的二次边界;因此,可以用这种模型表示的任何景观都将易于本地搜索。我们建立了两个例子系列,以证明我们的可处理性结果中的两个条件都是必不可少的。在域大小为3的情况下,即使仅是二元约束路径,也可以以指数级长的改进动作序列来模拟景观。使用树宽为2的约束图,即使最大程度为3,二进制布尔约束也可以以指数级长的改进动作序列模拟景观。

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