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Property testing and its connection to learning and approximation

机译:物业测试及其与学习和近似的连接

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The authors study the question of determining whether an unknown function has a particular property or is /spl epsiv/-far from any function with that property. A property testing algorithm is given a sample of the value of the function on instances drawn according to some distribution, and possibly may query the function on instances of its choice. First, they establish some connections between property testing and problems in learning theory. Next, they focus on testing graph properties, and devise algorithms to test whether a graph has properties such as being k-colorable or having a /spl rho/-clique (clique of density /spl rho/ w.r.t. the vertex set). The graph property testing algorithms are probabilistic and make assertions which are correct with high probability utilizing only poly(1//spl epsiv/) edge-queries into the graph, where /spl epsiv/ is the distance parameter. Moreover, the property testing algorithms can be used to efficiently (i.e., in time linear in the number of vertices) construct partitions of the graph which correspond to the property being tested, if it holds for the input graph.
机译:作者研究了确定未知函数是否具有特定属性的问题,也可以从该属性的任何函数中is / spl epsiv / -far。属性测试算法给出了根据某些分布绘制的实例上函数的值的样本,并且可能可以在其选择的实例上查询函数。首先,他们在学习理论中建立了物业测试与问题之间的一些联系。接下来,他们专注于测试图形属性,并设计图形是否具有诸如k可着色或具有a / spl rho / -clique(密度/ spl rho / w.r.t的Clique)的属性。曲线图属性测试算法是概率性和作出断言其是正确与仅利用聚高概率(1 // SPL epsiv /)边缘的查询到图,其中/ SPL epsiv /在距离参数。此外,属性测试算法可以用于有效地(即,在顶点的数量中,在时间线性中)构造对应于所测试的属性的图形的分区,如果它保持输入图。

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