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An Information-theoretic On-line Learning Principle for Specialization in Hierarchical Decision-Making Systems (1907.11452v3)

Published 26 Jul 2019 in cs.LG, cs.IT, math.IT, and stat.ML

Abstract: 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.

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Authors (3)
  1. Heinke Hihn (7 papers)
  2. Sebastian Gottwald (16 papers)
  3. Daniel A. Braun (37 papers)
Citations (16)

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