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@PHDTHESIS{KorcsakGorzo:1050546,
author = {Korcsak-Gorzo, Agnes},
title = {{F}unctions of spiking neural networks constrained by
biology},
volume = {119},
school = {RWTH Aachen University},
type = {Dissertation},
address = {Jülich},
publisher = {Forschungszentrum Jülich GmbH Zentralbibliothek, Verlag},
reportid = {FZJ-2026-00306},
isbn = {978-3-95806-876-6},
series = {Schriften des Forschungszentrums Jülich Reihe Information
/ Information},
pages = {xvi, 145},
year = {2025},
note = {Dissertation, RWTH Aachen University, 2025},
abstract = {Artificial intelligence (AI) solutions are increasingly
taking on tasks traditionally performed by humans. However,
their rising computational demands and energy consumption
are unsustainable, highlighting the need for more efficient
designs. The human brain, evolved to function effectively
even when energy is scarce, offers inspiration. Since
learning is central to both artificial intelligence and the
brain, insights about its underlying principles can deepen
our understanding of human learning while informing the
development of algorithms that transcend purely
engineering-based methods. This thesis investigates
biological learning through two studies, examining it from
mechanistic and functional perspectives at an abstraction
level commonly employed in neurophysics and computational
neuroscience. These fields distill complex neural systems
and phenomena into tractable mathematical and computational
models, enabling insights beyond the reach of traditional
biological approaches. Recognizing that synapses — the
connections between neurons — are fundamental to learning,
the thesis begins with a review of state-of-the-art
computational neuroscience methods for modeling synaptic
organization. This review highlights critical aspects of
synaptic signaling, including connectivity, transmission,
plasticity, and heterogeneity. In the first study, a
synaptic plasticity model is integrated into a spiking
neural network simulator and extended with biologically
plausible features, for example, continuous dynamics and
increased locality. The effectiveness of this enhanced model
is demonstrated by training it on a standard neuromorphic
benchmark task, incorporating biologically realistic sparse
connectivity and weight constraints. The second study
demonstrates that the sampling efficiency of pre-trained
spiking neural networks can be enhanced by exposing them to
oscillating background spiking activity. Analogous to
simulated tempering, these rhythmic oscillations modulate
state space exploration, facilitating transitions between
high-probability states within the learned representation.
These findings establish a link between cortical
oscillations and sampling-based computations, offering new
insights into memory retrieval and consolidation from a
computational perspective. The research involves developing
mathematical and computational models, which are simulated
on high-performance computing systems, evaluating learning
and sampling performance using standard machine learning
metrics, and assessing computational efficiency by analyzing
runtime. This thesis shows how biologically inspired
mechanisms enhance the functional capabilities of spiking
neural networks and how they can guide the development of
scalable and efficient AI systems.},
cin = {IAS-6},
cid = {I:(DE-Juel1)IAS-6-20130828},
pnm = {5232 - Computational Principles (POF4-523) / 5234 -
Emerging NC Architectures (POF4-523) / HBP SGA1 - Human
Brain Project Specific Grant Agreement 1 (720270) / HBP SGA2
- Human Brain Project Specific Grant Agreement 2 (785907) /
HBP SGA3 - Human Brain Project Specific Grant Agreement 3
(945539) / ACA - Advanced Computing Architectures (SO-092) /
JL SMHB - Joint Lab Supercomputing and Modeling for the
Human Brain (JL SMHB-2021-2027) / $HiRSE_PS$ - Helmholtz
Platform for Research Software Engineering - Preparatory
Study $(HiRSE_PS-20220812)$ / BMBF 03ZU1106CB - NeuroSys:
Algorithm-Hardware Co-Design (Projekt C) - B
(BMBF-03ZU1106CB) / Brain-Scale Simulations
$(jinb33_20220812)$},
pid = {G:(DE-HGF)POF4-5232 / G:(DE-HGF)POF4-5234 /
G:(EU-Grant)720270 / G:(EU-Grant)785907 / G:(EU-Grant)945539
/ G:(DE-HGF)SO-092 / G:(DE-Juel1)JL SMHB-2021-2027 /
$G:(DE-Juel-1)HiRSE_PS-20220812$ /
G:(DE-Juel1)BMBF-03ZU1106CB / $G:(DE-Juel1)jinb33_20220812$},
typ = {PUB:(DE-HGF)3 / PUB:(DE-HGF)11},
urn = {urn:nbn:de:0001-2601271033499.327456697914},
doi = {10.34734/FZJ-2026-00306},
url = {https://juser.fz-juelich.de/record/1050546},
}