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Narrowing Reinforcement Learning: Overcoming the Cold Start Problem for Personalized Health Interventions

机译:缩小钢筋学习:克服个性化健康干预措施的冷启动问题

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Personalization of support in health and wellbeing settings is challenging. While personalization has shown to be highly beneficial to maximize the success of interventions, often only very limited experiences are available to personalize support strategies. Because of its focus on finding suitable actions/interventions that lead to long term rewards, reinforcement learning is very suitable for personalization but requires a substantial learning period. To overcome this so-called cold start problem, we propose a novel approach called narrowing reinforcement learning. The approach exploits experiences of the nearest neighbors around a user to generate a suitable policy, expressing which action to perform in what state. Using a narrowing function, the size of the neighborhood is reduced as more experiences are collected, allowing for the most personalized experience that is possible given the amount of collected experiences. An evaluation of the approach in a realistic simulator shows that it significantly outperforms the current state-of-the-art approaches for personalization in health and wellbeing using reinforcement learning.
机译:健康和福祉环境中支持的个性化是具有挑战性的。虽然个性化已经表明对最大化干预措施的成功非常有益,但通常只有非常有限的经验可以个性化支持策略。由于其专注于找到导致长期奖励的合适行动/干预,因此加固学习非常适合个性化,但需要大量的学习期。为了克服这种所谓的冷战问题,我们提出了一种新颖的方法,称为狭窄的加强学习。该方法利用用户周围的最近邻居的经验来生成适当的策略,表达在哪个状态下执行哪些操作。使用缩小函数,随着收集更多的经验,邻居的大小减少,允许给予收集的经验量可能的最个性化的体验。对逼真模拟器中的方法的评估表明,使用加强学习,它显着优于现有的最先进的人性化方法。

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