Streaming kernel regression with provably adaptive mean, variance, and regularization
August 02, 2017 ยท Declared Dead ยท ๐ Journal of machine learning research
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Authors
Audrey Durand, Odalric-Ambrym Maillard, Joelle Pineau
arXiv ID
1708.00768
Category
stat.ML: Machine Learning (Stat)
Cross-listed
cs.LG
Citations
44
Venue
Journal of machine learning research
Last Checked
3 months ago
Abstract
We consider the problem of streaming kernel regression, when the observations arrive sequentially and the goal is to recover the underlying mean function, assumed to belong to an RKHS. The variance of the noise is not assumed to be known. In this context, we tackle the problem of tuning the regularization parameter adaptively at each time step, while maintaining tight confidence bounds estimates on the value of the mean function at each point. To this end, we first generalize existing results for finite-dimensional linear regression with fixed regularization and known variance to the kernel setup with a regularization parameter allowed to be a measurable function of past observations. Then, using appropriate self-normalized inequalities we build upper and lower bound estimates for the variance, leading to Bersntein-like concentration bounds. The later is used in order to define the adaptive regularization. The bounds resulting from our technique are valid uniformly over all observation points and all time steps, and are compared against the literature with numerical experiments. Finally, the potential of these tools is illustrated by an application to kernelized bandits, where we revisit the Kernel UCB and Kernel Thompson Sampling procedures, and show the benefits of the novel adaptive kernel tuning strategy.
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