Contrasting information theoretic decompositions of modulatory and arithmetic interactions in neural information processing systems

03/15/2018
by   Jim W. Kay, et al.
0

Biological and artificial neural systems are composed of many local processors, and their capabilities depend upon the transfer function that relates each local processor's outputs to its inputs. This paper uses a recent advance in the foundations of information theory to study the properties of local processors that use contextual input to amplify or attenuate transmission of information about their driving inputs. This advance enables the information transmitted by processors with two distinct inputs to be decomposed into those components unique to each input, that shared between the two inputs, and that which depends on both though it is in neither, i.e. synergy. The decompositions that we report here show that contextual modulation has information processing properties that contrast with those of all four simple arithmetic operators, that it can take various forms, and that the form used in our previous studies of artificial neural nets composed of local processors with both driving and contextual inputs is particularly well-suited to provide the distinctive capabilities of contextual modulation under a wide range of conditions. We argue that the decompositions reported here could be compared with those obtained from empirical neurobiological and psychophysical data under conditions thought to reflect contextual modulation. That would then shed new light on the underlying processes involved. Finally, we suggest that such decompositions could aid the design of context-sensitive machine learning algorithms.

READ FULL TEXT

page 2

page 11

page 12

page 15

page 16

research
07/15/2022

Context-sensitive neocortical neurons transform the effectiveness and efficiency of neural information processing

There is ample neurobiological evidence that context-sensitive neocortic...
research
06/13/2022

A comparison of partial information decompositions using data from real and simulated layer 5b pyramidal cells

Partial information decomposition allows the joint mutual information be...
research
03/18/2020

Thermodynamic Cost of Edge Detection in Artificial Neural Network(ANN)-Based Processors

Architecture-based heat dissipation analyses allows us to reveal fundame...
research
01/16/2018

The Role of Conditional Independence in the Evolution of Intelligent Systems

Systems are typically made from simple components regardless of their co...
research
11/27/2017

Context-modulation of hippocampal dynamics and deep convolutional networks

Complex architectures of biological neural circuits, such as parallel pr...
research
07/29/2019

Modulation of early visual processing alleviates capacity limits in solving multiple tasks

In daily life situations, we have to perform multiple tasks given a visu...
research
12/05/2022

B-Spline Quarklets and Biorthogonal Multiwavelets

We show that B-spline quarks and the associated quarklets fit into the t...

Please sign up or login with your details

Forgot password? Click here to reset