Jordan Jakob, Schmidt Maximilian, Senn Walter, Petrovici Mihai A
Department of Physiology, University of Bern, Bern, Switzerland.
Ascent Robotics, Tokyo, Japan.
Elife. 2021 Oct 28;10:e66273. doi: 10.7554/eLife.66273.
Continuous adaptation allows survival in an ever-changing world. Adjustments in the synaptic coupling strength between neurons are essential for this capability, setting us apart from simpler, hard-wired organisms. How these changes can be mathematically described at the phenomenological level, as so-called 'plasticity rules', is essential both for understanding biological information processing and for developing cognitively performant artificial systems. We suggest an automated approach for discovering biophysically plausible plasticity rules based on the definition of task families, associated performance measures and biophysical constraints. By evolving compact symbolic expressions, we ensure the discovered plasticity rules are amenable to intuitive understanding, fundamental for successful communication and human-guided generalization. We successfully apply our approach to typical learning scenarios and discover previously unknown mechanisms for learning efficiently from rewards, recover efficient gradient-descent methods for learning from target signals, and uncover various functionally equivalent STDP-like rules with tuned homeostatic mechanisms.
持续适应使生物体能够在不断变化的世界中生存。神经元之间突触耦合强度的调整对于这种能力至关重要,这使我们有别于更简单的、硬连线的生物体。如何在现象学层面将这些变化用数学方法描述为所谓的“可塑性规则”,对于理解生物信息处理以及开发具有认知性能的人工系统都至关重要。我们提出了一种自动化方法,用于基于任务族的定义、相关性能度量和生物物理约束来发现具有生物物理合理性的可塑性规则。通过演化紧凑的符号表达式,我们确保所发现的可塑性规则易于直观理解,这对于成功交流和人类引导的泛化至关重要。我们成功地将我们的方法应用于典型的学习场景,发现了以前未知的从奖励中高效学习的机制,恢复了从目标信号中学习的高效梯度下降方法,并揭示了各种具有调整后的稳态机制的功能等效的类STDP规则。