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An Information-theoretic On-line Learning Principle for Specialization in Hierarchical Decision-Making Systems

机译:分层决策系统专业化的信息 - 理论上的在线学习原理

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Information-theoretic bounded rationality describes utility-optimizing decision-makers whose limited information-processing capabilities are formalized by information constraints. One of the consequences of bounded rationality is that resource-limited decision-makers can join together to solve decision-making problems that are beyond the capabilities of each individual. Here, we study an information-theoretic principle that drives division of labor and specialization when decision-makers with information constraints are joined together. We devise an on-line learning rule of this principle that learns a partitioning of the problem space such that it can be solved by specialized linear policies. We demonstrate the approach for decision-making problems whose complexity exceeds the capabilities of individual decision-makers, but can be solved by combining the decision-makers optimally. The strength of the model is that it is abstract and principled, yet has direct applications in classification, regression, reinforcement learning and adaptive control.
机译:信息定理有界性的合理性描述了效用优化的决策者,其有限的信息处理能力通过信息约束正式化。有界合理性的后果是资源有限的决策者可以加入共同解决超出每个人能力的决策问题。在这里,我们研究了一种信息 - 理论原则,当具有信息限制的决策者联合在一起时,推动劳动和专业化的划分。我们设计了这一原则的在线学习规则,了解问题空间的分区,使得它可以通过专门的线性策略来解决。我们展示了决策问题的方法,其复杂性超出了个别决策者的能力,但可以通过最佳地结合决策者来解决。模型的实力是它是抽象和原则的,但在分类,回归,加强学习和自适应控制中具有直接应用。

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