Compensatory Mechanisms in an Attractor Neural Network Model of Schizophrenia
Abstract
We investigate the effect of synaptic compensation on the dynamic behavior of an attractor neural network receiving its input stimuli as external fields projecting on the network. It is shown how, in the face of weakened inputs, memory performance may be preserved by strengthening internal synaptic connections and increasing the noise level. Yet, these compensatory changes necessarily have adverse side effects, leading to spontaneous, stimulus-independent retrieval of stored patterns. These results can support Stevens' recent hypothesis that the onset of schizophrenia is associated with frontal synaptic regeneration, occurring subsequent to the degeneration of temporal neurons projecting on these areas.
Cite
Text
Horn and Ruppin. "Compensatory Mechanisms in an Attractor Neural Network Model of Schizophrenia." Neural Computation, 1995. doi:10.1162/NECO.1995.7.1.182Markdown
[Horn and Ruppin. "Compensatory Mechanisms in an Attractor Neural Network Model of Schizophrenia." Neural Computation, 1995.](https://mlanthology.org/neco/1995/horn1995neco-compensatory/) doi:10.1162/NECO.1995.7.1.182BibTeX
@article{horn1995neco-compensatory,
title = {{Compensatory Mechanisms in an Attractor Neural Network Model of Schizophrenia}},
author = {Horn, David and Ruppin, Eytan},
journal = {Neural Computation},
year = {1995},
pages = {182-205},
doi = {10.1162/NECO.1995.7.1.182},
volume = {7},
url = {https://mlanthology.org/neco/1995/horn1995neco-compensatory/}
}