Enregistré dans:
Détails bibliographiques
Auteurs principaux: Banerjee, Siddhartha, Sinclair, Sean R., Tambe, Milind, Xu, Lily, Yu, Christina Lee
Format: Preprint
Publié: 2022
Sujets:
Accès en ligne:https://arxiv.org/abs/2210.00025
Tags: Ajouter un tag
Pas de tags, Soyez le premier à ajouter un tag!
_version_ 1866908273738776576
author Banerjee, Siddhartha
Sinclair, Sean R.
Tambe, Milind
Xu, Lily
Yu, Christina Lee
author_facet Banerjee, Siddhartha
Sinclair, Sean R.
Tambe, Milind
Xu, Lily
Yu, Christina Lee
contents Most real-world deployments of bandit algorithms exist somewhere in between the offline and online set-up, where some historical data is available upfront and additional data is collected dynamically online. How best to incorporate historical data to "warm start" bandit algorithms is an open question: naively initializing reward estimates using all historical samples can suffer from spurious data and imbalanced data coverage, leading to data inefficiency (amount of historical data used) - particularly for continuous action spaces. To address these challenges, we propose ArtificialReplay, a meta-algorithm for incorporating historical data into any arbitrary base bandit algorithm. We show that ArtificialReplay uses only a fraction of the historical data compared to a full warm-start approach, while still achieving identical regret for base algorithms that satisfy independence of irrelevant data (IIData), a novel and broadly applicable property that we introduce. We complement these theoretical results with experiments on K-armed bandits and continuous combinatorial bandits, on which we model green security domains using real poaching data. Our results show the practical benefits of ArtificialReplay for improving data efficiency, including for base algorithms that do not satisfy IIData.
format Preprint
id arxiv_https___arxiv_org_abs_2210_00025
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Artificial Replay: A Meta-Algorithm for Harnessing Historical Data in Bandits
Banerjee, Siddhartha
Sinclair, Sean R.
Tambe, Milind
Xu, Lily
Yu, Christina Lee
Machine Learning
Most real-world deployments of bandit algorithms exist somewhere in between the offline and online set-up, where some historical data is available upfront and additional data is collected dynamically online. How best to incorporate historical data to "warm start" bandit algorithms is an open question: naively initializing reward estimates using all historical samples can suffer from spurious data and imbalanced data coverage, leading to data inefficiency (amount of historical data used) - particularly for continuous action spaces. To address these challenges, we propose ArtificialReplay, a meta-algorithm for incorporating historical data into any arbitrary base bandit algorithm. We show that ArtificialReplay uses only a fraction of the historical data compared to a full warm-start approach, while still achieving identical regret for base algorithms that satisfy independence of irrelevant data (IIData), a novel and broadly applicable property that we introduce. We complement these theoretical results with experiments on K-armed bandits and continuous combinatorial bandits, on which we model green security domains using real poaching data. Our results show the practical benefits of ArtificialReplay for improving data efficiency, including for base algorithms that do not satisfy IIData.
title Artificial Replay: A Meta-Algorithm for Harnessing Historical Data in Bandits
topic Machine Learning
url https://arxiv.org/abs/2210.00025