Poster
Discriminative State Space Models
Vitaly Kuznetsov · Mehryar Mohri
Pacific Ballroom #210
Keywords: [ Learning Theory ] [ Time Series Analysis ]
In this paper, we introduce and analyze Discriminative State-Space Models for forecasting non-stationary time series. We provide data-dependent generalization guarantees for learning these models based on the recently introduced notion of discrepancy. We provide an in-depth analysis of the complexity of such models. Finally, we also study the generalization guarantees for several structural risk minimization approaches to this problem and provide an efficient implementation for one of them which is based on a convex objective.
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