Online Optimization of Smoothed Piecewise Constant Functions

04/07/2016
by   Vincent Cohen-Addad, et al.
0

We study online optimization of smoothed piecewise constant functions over the domain [0, 1). This is motivated by the problem of adaptively picking parameters of learning algorithms as in the recently introduced framework by Gupta and Roughgarden (2016). Majority of the machine learning literature has focused on Lipschitz-continuous functions or functions with bounded gradients. 1 This is with good reason---any learning algorithm suffers linear regret even against piecewise constant functions that are chosen adversarially, arguably the simplest of non-Lipschitz continuous functions. The smoothed setting we consider is inspired by the seminal work of Spielman and Teng (2004) and the recent work of Gupta and Roughgarden---in this setting, the sequence of functions may be chosen by an adversary, however, with some uncertainty in the location of discontinuities. We give algorithms that achieve sublinear regret in the full information and bandit settings.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/22/2019

Online optimization of piecewise Lipschitz functions in changing environments

In an online optimization problem we are required to choose a sequence o...
research
08/19/2021

Learning-to-learn non-convex piecewise-Lipschitz functions

We analyze the meta-learning of the initialization and step-size of lear...
research
06/09/2020

Approximating Lipschitz continuous functions with GroupSort neural networks

Recent advances in adversarial attacks and Wasserstein GANs have advocat...
research
10/22/2020

Regret Bounds without Lipschitz Continuity: Online Learning with Relative-Lipschitz Losses

In online convex optimization (OCO), Lipschitz continuity of the functio...
research
11/23/2018

Note on universal algorithms for learning theory

We propose the general way of study the universal estimator for the regr...
research
12/27/2021

Sparsest Univariate Learning Models Under Lipschitz Constraint

Beside the minimization of the prediction error, two of the most desirab...
research
05/07/2014

A consistent deterministic regression tree for non-parametric prediction of time series

We study online prediction of bounded stationary ergodic processes. To d...

Please sign up or login with your details

Forgot password? Click here to reset