We explicitly quantify the empirically observed phenomenon that estimation under a stochastic block model (SBM) is hard if the model contains classes that are similar. More precisely, we consider estimation of certain functionals of random graphs generated by a SBM. The SBM may or may not be sparse, and the number of classes may be fixed or grow with the number of vertices. Minimax lower and upper bounds of estimation along specific submodels are derived. The results are nonasymptotic and imply that uniform estimation of a single connectivity parameter is much slower than the expected asymptotic pointwise rate. Specifically, the uniform quadratic rate does not scale as the number of edges, but only as the number of vertices. The lower bounds are local around any possible SBM. An analogous result is derived for functionals of a class of smooth graphons.
翻译:我们明确量化了根据经验观察到的现象,即如果模型包含相似的类别,那么在随机区块模型(SBM)下进行估算是困难的。更准确地说,我们考虑对由 SBM 生成的随机图形的某些功能进行估算。SBM 可能是或可能不是稀释的,而分类的数量可能随着脊椎的数量而固定或增长。在特定的子模型中,得出了最小值下限和上限的估算。结果不简单,意味着对单一连接参数的统一估算比预期的无光度点率要慢得多。具体地说,统一的二次曲线率不以边缘数量为尺度,而仅以顶点数量为尺度。在任何可能的 SBM 上下限是局部的。一个光滑的图形类别的功能也得出了类似的结果。