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Specialization versus Re-Specialization: Effects of Hebbian Learning in a Dynamic Environment

机译:专业化与重新专业化:Hebbian学习在动态环境中的影响

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Specializing on a subset of tasks available within a system allows agents to more efficiently fulfill system demands. When demands change, agents need to Re-Specialize. Since Re-Specialization inherently requires undoing some prior Specialization, the opposing effort often results in agents settling on a worse task allocation than after Specialization, even when presented with similar demands. In this work, we demonstrate these task allocation differences by looking at how well demands are fulfilled, as well as how much task switching is happening within the system. We analyze what causes the observed differences and discuss potential approaches to improving Re-Specialization in the future.
机译:专业从系统内提供的任务子集允许代理更有效地满足系统需求。当需求发生变化时,代理需要重新专业化。由于重新专业化本身需要撤消一些先验的专业化,因此相反的努力通常会导致代理人在较差的任务分配上稳定,即使在专业化之后也是如此,即使在提出类似的需求之后也是如此。在这项工作中,我们通过查看需求的满足方式以及系统内发生了多少任务切换,展示了这些任务分配差异。我们分析了观察到的差异,并讨论将来改善重新专业化的潜在方法。

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