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arxiv: 1509.02438 · v1 · pith:NM2WCEJ2new · submitted 2015-09-08 · 📊 stat.ML

A Variational Bayesian State-Space Approach to Online Passive-Aggressive Regression

classification 📊 stat.ML
keywords onlineregressionapproachstate-spacealgorithmsbayesianhyperparameterlearning
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Online Passive-Aggressive (PA) learning is a class of online margin-based algorithms suitable for a wide range of real-time prediction tasks, including classification and regression. PA algorithms are formulated in terms of deterministic point-estimation problems governed by a set of user-defined hyperparameters: the approach fails to capture model/prediction uncertainty and makes their performance highly sensitive to hyperparameter configurations. In this paper, we introduce a novel PA learning framework for regression that overcomes the above limitations. We contribute a Bayesian state-space interpretation of PA regression, along with a novel online variational inference scheme, that not only produces probabilistic predictions, but also offers the benefit of automatic hyperparameter tuning. Experiments with various real-world data sets show that our approach performs significantly better than a more standard, linear Gaussian state-space model.

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