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Lessons from Contextual Bandit Learning in a Customer Support Bot

6 May 2019
Nikos Karampatziakis
Sebastian Kochman
Jade Huang
Paul Mineiro
Kathy Osborne
Weizhu Chen
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Abstract

In this work, we describe practical lessons we have learned from successfully using contextual bandits (CBs) to improve key business metrics of the Microsoft Virtual Agent for customer support. While our current use cases focus on single step einforcement learning (RL) and mostly in the domain of natural language processing and information retrieval we believe many of our findings are generally applicable. Through this article, we highlight certain issues that RL practitioners may encounter in similar types of applications as well as offer practical solutions to these challenges.

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