A Theory of Synaptic Neural Balance: From Local to Global Order
Pierre Baldi, Antonios Alexos, Ian Domingo, Alireza, Rahmansetayesh

TL;DR
This paper develops a comprehensive theory of synaptic neural balance, demonstrating how local balancing operations lead to global order in various neural network architectures, and shows that balanced states can improve learning efficiency.
Contribution
The paper introduces a novel theoretical framework for neural balance, extending it to diverse architectures and regularizers, and proposes a stochastic balancing algorithm that guarantees convergence to a balanced state.
Findings
Balanced states emerge through stochastic local operations.
Balancing prior to or during learning enhances performance.
The theory applies to various architectures and regularizers.
Abstract
We develop a general theory of synaptic neural balance and how it can emerge or be enforced in neural networks. For a given regularizer, a neuron is said to be in balance if the total cost of its input weights is equal to the total cost of its output weights. The basic example is provided by feedforward networks of ReLU units trained with regularizers, which exhibit balance after proper training. The theory explains this phenomenon and extends it in several directions. The first direction is the extension to bilinear and other activation functions. The second direction is the extension to more general regularizers, including all regularizers. The third direction is the extension to non-layered architectures, recurrent architectures, convolutional architectures, as well as architectures with mixed activation functions. Gradient descent on the error function alone does not…
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Taxonomy
TopicsNeural Networks and Applications · Cognitive Science and Mapping · Cognitive Science and Education Research
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings · Sparse Evolutionary Training
