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 online and offline data


Adaptive Policy Learning for Offline-to-Online Reinforcement Learning

arXiv.org Artificial Intelligence

Conventional reinforcement learning (RL) needs an environment to collect fresh data, which is impractical when online interactions are costly. Offline RL provides an alternative solution by directly learning from the previously collected dataset. However, it will yield unsatisfactory performance if the quality of the offline datasets is poor. In this paper, we consider an offline-to-online setting where the agent is first learned from the offline dataset and then trained online, and propose a framework called Adaptive Policy Learning for effectively taking advantage of offline and online data. Specifically, we explicitly consider the difference between the online and offline data and apply an adaptive update scheme accordingly, that is, a pessimistic update strategy for the offline dataset and an optimistic/greedy update scheme for the online dataset. Such a simple and effective method provides a way to mix the offline and online RL and achieve the best of both worlds. We further provide two detailed algorithms for implementing the framework through embedding value or policy-based RL algorithms into it. Finally, we conduct extensive experiments on popular continuous control tasks, and results show that our algorithm can learn the expert policy with high sample efficiency even when the quality of offline dataset is poor, e.g., random dataset.


How Artificial Intelligence Is Helping Retailers Bridge The Gap Between Online And Offline Data

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Opinions expressed by Forbes Contributors are their own. The author is a Forbes contributor. The opinions expressed are those of the writer. As fewer shoppers choose to frequent stores, retailers are looking for new ways to rejuvenate the shopping experience, whether through a wholesale reinvention of the retail space or by doubling down on efforts to send consumers targeted ads. To that end, retailers are increasingly turning to technologies such as artificial intelligence algorithms, messenger bots, and even robots, to gather data and improve the in-store experience for shoppers.