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Activity Number: 319 - SLDS CSpeed 6
Type: Contributed
Date/Time: Wednesday, August 11, 2021 : 3:30 PM to 5:20 PM
Sponsor: Section on Statistical Learning and Data Science
Abstract #318542
Title: Deep Upper Confidence Bound Algorithm for Contextual Bandit Ranking of Information Selection
Author(s): Michael Rawson* and Jade Freeman
Companies: Department of Mathematics, University of Maryland at College Park and CCDC Army Research Laboratory
Keywords: contextual bandit; deep learning; neural networks; recommendation; ranking; machine learning
Abstract:

Contextual multi-armed bandits (CMAB) have been widely used for learning to filter and prioritize information according to a user’s interest. In this work, we analyze top-$K$ ranking under the CMAB framework where the top-$K$ arms are chosen iteratively to maximize a reward. The context, which represents a set of observable factors related to the user, is used to increase prediction accuracy compared to a standard multi-armed bandit. Contextual bandit methods have mostly been studied under strict linearity assumptions, but we drop that assumption and learn non-linear stochastic reward functions with deep neural networks. We introduce a novel algorithm called the Deep Upper Confidence Bound (UCB) algorithm. Deep UCB balances exploration and exploitation with a separate neural network to model the learning convergence. We compare the performance of many bandit algorithms varying K over real-world data sets with high-dimensional data and non-linear reward functions. Empirical results show that the performance of Deep UCB often outperforms though it is sensitive to the problem and reward setup. Additionally, we prove theoretical regret bounds on Deep UCB giving convergence to optimality for the weak class of CMAB problems.


Authors who are presenting talks have a * after their name.

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