LGMLSep 9, 2020

A Generalized Online Algorithm for Translation and Scale Invariant Prediction with Expert Advice

arXiv:2009.04372v16 citations
Originality Incremental advance
AI Analysis

This provides a flexible algorithmic solution for sequential prediction tasks across various applications, though it is incremental as it builds on existing expert advice frameworks.

The authors tackled the problem of creating a translation- and scale-invariant online algorithm for prediction with expert advice, resulting in a generalized framework with second-order regret bounds that are stable under arbitrary scalings and translations of losses.

In this work, we aim to create a completely online algorithmic framework for prediction with expert advice that is translation-free and scale-free of the expert losses. Our goal is to create a generalized algorithm that is suitable for use in a wide variety of applications. For this purpose, we study the expected regret of our algorithm against a generic competition class in the sequential prediction by expert advice problem, where the expected regret measures the difference between the losses of our prediction algorithm and the losses of the 'best' expert selection strategy in the competition. We design our algorithm using the universal prediction perspective to compete against a specified class of expert selection strategies, which is not necessarily a fixed expert selection. The class of expert selection strategies that we want to compete against is purely determined by the specific application at hand and is left generic, which makes our generalized algorithm suitable for use in many different problems. We show that no preliminary knowledge about the loss sequence is required by our algorithm and its performance bounds, which are second order, expressed in terms of sums of squared losses. Our regret bounds are stable under arbitrary scalings and translations of the losses.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes