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Recovering Communities in the General Stochastic Block Model Without Knowing the Parameters

机译:在不知道参数的情况下在常规随机块模型中恢复社区

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The stochastic block model (SBM) has recently gathered significant attention due to new threshold phenomena. However, most developments rely on the knowledge of the model parameters, or at least on the number of communities. This paper introduces efficient algorithms that do not require such knowledge and yet achieve the optimal information-theoretic tradeoffs identified in Abbe-Sandon FOCS15. In the constant degree regime, an algorithm is developed that requires only a lower-bound on the relative sizes of the communities and achieves the optimal accuracy scaling for large degrees. This lower-bound requirement is removed for the regime of arbitrarily slowly diverging degrees, and the model parameters are learned efficiently. For the logarithmic degree regime, this is further enhanced into a fully agnostic algorithm that achieves the CH-limit for exact recovery in quasi-linear time. These provide the first algorithms affording efficiency, universality and information-theoretic optimality for strong and weak consistency in the SBM.
机译:由于新的阈值现象,随机块模型(SBM)最近引起了广泛的关注。但是,大多数开发都依赖于模型参数的知识,或者至少依赖于社区的数量。本文介绍了不需要这些知识但仍能实现Abbe-Sandon FOCS15中确定的最佳信息理论折衷的高效算法。在恒定度状态下,开发了一种算法,该算法仅要求社区的相对大小的下限并在较大程度上实现最佳精度缩放。对于任意缓慢发散度的条件,都删除了此下限要求,并且有效地学习了模型参数。对于对数度状态,将其进一步增强为完全不可知论算法,该算法可在准线性时间内实现CH极限以实现精确恢复。这些为SBM中的强弱一致性提供了效率,通用性和信息理论最优性的首批算法。

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