Asymptotic Performance of Thompson Sampling in the Batched Multi-Armed Bandits

10/01/2021
by   Cem Kalkanli, et al.
0

We study the asymptotic performance of the Thompson sampling algorithm in the batched multi-armed bandit setting where the time horizon T is divided into batches, and the agent is not able to observe the rewards of her actions until the end of each batch. We show that in this batched setting, Thompson sampling achieves the same asymptotic performance as in the case where instantaneous feedback is available after each action, provided that the batch sizes increase subexponentially. This result implies that Thompson sampling can maintain its performance even if it receives delayed feedback in ω(log T) batches. We further propose an adaptive batching scheme that reduces the number of batches to Θ(log T) while maintaining the same performance. Although the batched multi-armed bandit setting has been considered in several recent works, previous results rely on tailored algorithms for the batched setting, which optimize the batch structure and prioritize exploration in the beginning of the experiment to eliminate suboptimal actions. We show that Thompson sampling, on the other hand, is able to achieve a similar asymptotic performance in the batched setting without any modifications.

READ FULL TEXT
research
10/01/2021

Batched Thompson Sampling

We introduce a novel anytime Batched Thompson sampling policy for multi-...
research
02/07/2019

KLUCB Approach to Copeland Bandits

Multi-armed bandit(MAB) problem is a reinforcement learning framework wh...
research
10/24/2020

Adam with Bandit Sampling for Deep Learning

Adam is a widely used optimization method for training deep learning mod...
research
07/30/2021

Adaptively Optimize Content Recommendation Using Multi Armed Bandit Algorithms in E-commerce

E-commerce sites strive to provide users the most timely relevant inform...
research
03/04/2020

Odds-Ratio Thompson Sampling to Control for Time-Varying Effect

Multi-armed bandit methods have been used for dynamic experiments partic...
research
03/23/2023

Adaptive Endpointing with Deep Contextual Multi-armed Bandits

Current endpointing (EP) solutions learn in a supervised framework, whic...
research
02/10/2021

Regression Oracles and Exploration Strategies for Short-Horizon Multi-Armed Bandits

This paper explores multi-armed bandit (MAB) strategies in very short ho...

Please sign up or login with your details

Forgot password? Click here to reset