Repository logo
Research Data
Publications
Projects
Persons
Organizations
English
Français
Log In(current)
  1. Home
  2. Publications
  3. Contribution à un congrès (conference paper)
  4. Thompson Sampling For Stochastic Bandits with Graph Feedback

Thompson Sampling For Stochastic Bandits with Graph Feedback

Author(s)
Aristide C. Y. Tossou
Dimitrakakis, Christos  
Chaire de science des données  
Devdatt Dubhashi
Date issued
January 16, 2017
Subjects
Machine Learning (cs.LG) Artificial Intelligence (cs.AI)
Abstract
We present a novel extension of Thompson Sampling for stochastic sequential decision problems with graph feedback, even when the graph structure itself is unknown and/or changing. We provide theoretical guarantees on the Bayesian regret of the algorithm, linking its performance to the underlying properties of the graph. Thompson Sampling has the advantage of being applicable without the need to construct complicated upper confidence bounds for different problems. We illustrate its performance through extensive experimental results on real and simulated networks with graph feedback. More specifically, we tested our algorithms on power law, planted partitions and Erdo's-Renyi graphs, as well as on graphs derived from Facebook and Flixster data. These all show that our algorithms clearly outperform related methods that employ upper confidence bounds, even if the latter use more information about the graph.
Publication type
conference paper
Identifiers
https://libra.unine.ch/handle/20.500.14713/21765
-
1701.04238v1
File(s)
Loading...
Thumbnail Image
Download
Name

1701.04238.pdf

Type

Main Article

Size

1.55 MB

Format

Adobe PDF

Université de Neuchâtel logo

Service information scientifique & bibliothèques

Rue Emile-Argand 11

2000 Neuchâtel

contact.libra@unine.ch

Service informatique et télématique

Rue Emile-Argand 11

Bâtiment B, rez-de-chaussée

Powered by DSpace-CRIS

libra v2.1.0

© 2025 Université de Neuchâtel

Portal overviewUser guideOpen Access strategyOpen Access directive Research at UniNE Open Access ORCIDWhat's new