Poster
Online Forecasting of Total-Variation-bounded Sequences
Dheeraj Baby · Yu-Xiang Wang
East Exhibition Hall B, C #22
Keywords: [ Online Learning ] [ Algorithms ] [ Algorithms -> Regression; Applications -> Denoising; Applications -> Signal Processing; Applications ] [ Time Series Analysis; O ]
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Abstract
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Abstract:
We consider the problem of online forecasting of sequences of length with total-variation at most using observations contaminated by independent -subgaussian noise. We design an -time algorithm that achieves a cumulative square error of with high probability. We also prove a lower bound that matches the upper bound in all parameters (up to a factor). To the best of our knowledge, this is the first **polynomial-time** algorithm that achieves the optimal rate in forecasting total variation bounded sequences and the first algorithm that **adapts to unknown** .Our proof techniques leverage the special localized structure of Haar wavelet basis and the adaptivity to unknown smoothness parameters in the classical wavelet smoothing [Donoho et al., 1998]. We also compare our model to the rich literature of dynamic regret minimization and nonstationary stochastic optimization, where our problem can be treated as a special case. We show that the workhorse in those settings --- online gradient descent and its variants with a fixed restarting schedule --- are instances of a class of **linear forecasters** that require a suboptimal regret of . This implies that the use of more adaptive algorithms is necessary to obtain the optimal rate.
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