Can Transfer Entropy Infer Causality in Neuronal Circuits for Cognitive Processing?

01/22/2019
by   Ali Tehrani-Saleh, et al.
12

Finding the causes to observed effects and establishing causal relationships between events is (and has been) an essential element of science and philosophy. Automated methods that can detect causal relationships would be very welcome, but practical methods that can infer causality are difficult to find, and the subject of ongoing research. While Shannon information only detects correlation, there are several information-theoretic notions of "directed information" that have successfully detected causality in some systems, in particular in the neuroscience community. However, recent work has shown that some directed information measures can sometimes inadequately estimate the extent of causal relations, or even fail to identify existing cause-effect relations between components of systems, especially if neurons contribute in a cryptographic manner to influence the effector neuron. Here, we test how often cryptographic logic emerges in an evolutionary process that generates artificial neural circuits for two fundamental cognitive tasks: motion detection and sound localization. Our results suggest that whether or not transfer entropy measures of causality are misleading depends strongly on the cognitive task considered. These results emphasize the importance of understanding the fundamental logic processes that contribute to cognitive processing, and quantifying their relevance in any given nervous system.

READ FULL TEXT
research
10/26/2020

Local Granger Causality

Granger causality is a statistical notion of causal influence based on p...
research
12/22/2019

Direct and Indirect Effects – An Information Theoretic Perspective

Information theoretic (IT) approaches to quantifying causal influences h...
research
10/19/2019

Measuring Causality: The Science of Cause and Effect

Determining and measuring cause-effect relationships is fundamental to m...
research
11/24/2020

Fuzzy Stochastic Timed Petri Nets for Causal properties representation

Imagery is frequently used to model, represent and communicate knowledge...
research
06/05/2020

From Checking to Inference: Actual Causality Computations as Optimization Problems

Actual causality is increasingly well understood. Recent formal approach...
research
10/13/2021

Fourier-domain transfer entropy spectrum

We propose the Fourier-domain transfer entropy spectrum, a novel general...
research
04/29/2021

Learning in Feedforward Neural Networks Accelerated by Transfer Entropy

Current neural networks architectures are many times harder to train bec...

Please sign up or login with your details

Forgot password? Click here to reset