The area of graph property testing seeks to understand the relation between the global properties of a graph and its local statistics. In the classical model, the local statistics of a graph is defined relative to a uniform distribution over the graph's vertex set. A graph property $\mathcal{P}$ is said to be testable if the local statistics of a graph can allow one to distinguish between graphs satisfying $\mathcal{P}$ and those that are far from satisfying it. Goldreich recently introduced a generalization of this model in which one endows the vertex set of the input graph with an arbitrary and unknown distribution, and asked which of the properties that can be tested in the classical model can also be tested in this more general setting. We completely resolve this problem by giving a (surprisingly "clean") characterization of these properties. To this end, we prove a removal lemma for vertex weighted graphs which is of independent interest.
翻译:图形属性测试区域试图理解图形的全球属性与其本地统计数据之间的关系。 在古典模型中, 图形的本地统计数据是相对于图形顶点集上的统一分布而定义的。 如果图形的本地统计数据允许区分满足 $\ mathcal{P} $ 和远不能满足此条件的图形。 Goldreich 最近引入了该模型的概括化, 该模型将输入图的顶点套带任意和未知的分布, 并询问在古典模型中测试的哪些属性也可以在这个更普通的环境下测试。 我们通过给这些属性提供一种( 令人惊讶的“ 清洁” ) 特征来完全解决这个问题。 为此, 我们证明具有独立利益的顶点加权图形的去除 emma 。