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Universal Knowledge-Seeking Agents for Stochastic Environments

机译:随机环境的通用知识寻求代理

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We define an optimal Bayesian knowledge-seeking agent, KL-KSA, designed for countable hypothesis classes of stochastic environments and whose goal is to gather as much information about the unknown world as possible. Although this agent works for arbitrary countable classes and priors, we focus on the especially interesting case where all stochastic computable environments are considered and the prior is based on Solomonoff's universal prior. Among other properties, we show that KL-KSA learns the true environment in the sense that it learns to predict the consequences of actions it does not take. We show that it does not consider noise to be information and avoids taking actions leading to inescapable traps. We also present a variety of toy experiments demonstrating that KL-KSA behaves according to expectation.
机译:我们定义了一种最佳的贝叶斯知识寻求代理KL-KSA,其设计用于随机环境的可数假设类别,并且其目标是尽可能多地收集有关未知世界的信息。尽管此代理适用于任意可数的类和先验,但我们关注的是一种特别有趣的情况,其中考虑了所有随机可计算环境,并且先验基于Solomonoff的通用先验。在其他属性中,我们表明KL-KSA在学习预测不采取行动的后果的意义上学习了真实的环境。我们表明,它不将噪声视为信息,并且避免采取导致不可避免的陷阱的措施。我们还提供了各种玩具实验,证明KL-KSA的表现符合预期。

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