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research article

On the choice of metric in gradient-based theories of brain function

Surace, Simone Carlo
•
Pfister, Jean-Pascal
•
Gerstner, Wulfram  
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April 1, 2020
Plos Computational Biology

The idea that the brain functions so as to minimize certain costs pervades theoretical neuroscience. Because a cost function by itself does not predict how the brain finds its minima, additional assumptions about the optimization method need to be made to predict the dynamics of physiological quantities. In this context, steepest descent (also called gradient descent) is often suggested as an algorithmic principle of optimization potentially implemented by the brain. In practice, researchers often consider the vector of partial derivatives as the gradient. However, the definition of the gradient and the notion of a steepest direction depend on the choice of a metric. Because the choice of the metric involves a large number of degrees of freedom, the predictive power of models that are based on gradient descent must be called into question, unless there are strong constraints on the choice of the metric. Here, we provide a didactic review of the mathematics of gradient descent, illustrate common pitfalls of using gradient descent as a principle of brain function with examples from the literature, and propose ways forward to constrain the metric.

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Type
research article
DOI
10.1371/journal.pcbi.1007640
Web of Science ID

WOS:000531366700002

Author(s)
Surace, Simone Carlo
Pfister, Jean-Pascal
Gerstner, Wulfram  
Brea, Johanni  
Date Issued

2020-04-01

Published in
Plos Computational Biology
Volume

16

Issue

4

Article Number

e1007640

Subjects

Biochemical Research Methods

•

Mathematical & Computational Biology

•

Biochemistry & Molecular Biology

•

Mathematical & Computational Biology

•

timing-dependent plasticity

•

riemannian metrics

•

descent

•

networks

•

prediction

•

storage

•

recall

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LCN  
Available on Infoscience
May 27, 2020
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/168955
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