在有限环境中应用强化学习

Diogo Ferreira, M. Antunes, D. Gomes, R. Aguiar
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引用次数: 0

摘要

在过去的几年里,强化学习有了一些有趣的发展,这使得它在推荐场景中非常有吸引力。在这项工作中,我们扩展了之前开发的普及系统,该系统通过强化学习方法,通过会话上下文来建议可能对用户有用的文档,并能够使用用户的点击数据作为一种随时间推移执行更好建议的方式。此外,为了确保这些类型的方法在会话环境中的真正意义,我们还进行了一个关于上下文限制会话系统反馈准确性的案例研究。
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Applying Reinforcement Learning in Context Limited Environments
Reinforcement Learning has seen some interesting development over the last years, which made it very attractive to use on recommendation scenarios. In this work, we have extended the previously developed pervasive system, which is aware of the conversational context to suggest documents potentially useful to the users, with the ability to use users’ click data as a way to perform better suggestions over time, through a Reinforcement Learning approach. Furthermore, to assure the real significance of these types of approaches in conversational environments, we also conducted a case study regarding the accuracy of feedback on context limited conversational systems.
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