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 Statistical Learning



AdaptiveOnlineEstimationofPiecewisePolynomial Trends

Neural Information Processing Systems

We consider the framework of non-stationary stochastic optimization [Besbes et al., 2015] with squared error losses and noisy gradient feedback where the dynamic regret ofanonline learner against atime varying comparator sequence isstudied.


AdaptiveOnlineEstimationofPiecewisePolynomial Trends

Neural Information Processing Systems

We consider the framework of non-stationary stochastic optimization [Besbes et al., 2015] with squared error losses and noisy gradient feedback where the dynamic regret ofanonline learner against atime varying comparator sequence isstudied.




SLAPS: Self-SupervisionImprovesStructure LearningforGraphNeuralNetworks

Neural Information Processing Systems

However, this structure may not always be available in real-world applications. One solution to this problem is to infer a task-specific latent structure and then apply a GNN to the inferred graph.