Adaptive regularization for Lasso models in the context of non-stationary data streams

نویسندگان

  • Ricardo Pio Monti
  • Christoforos Anagnostopoulos
  • Giovanni Montana
چکیده

Large scale, streaming datasets are ubiquitous in modern machine learning. Streaming algorithms must be scalable, amenable to incremental training and robust to the presence of non-stationarity. In this work consider the problem of learning `1 regularized linear models in the context of streaming data. In particular, the focus of this work revolves around how to select the regularization parameter when data arrives sequentially and the underlying distribution is non-stationary (implying the choice of optimal regularization parameter is itself time-varying). We propose a framework through which to infer an adaptive regularization parameter. Our approach employs an `1 penalty constraint where the corresponding sparsity parameter is iteratively updated via stochastic gradient descent. This serves to reformulate the choice of regularization parameter in a principled framework for online learning and allows for the derivation of convergence guarantees in a non-stochastic setting. We validate our approach using simulated and real datasets and present an application to a neuroimaging dataset.

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تاریخ انتشار 2016