Vidros de spin e redes neurais: diagramas de fase das máquinas de Boltzmann clássicas e semiclássicas
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Universidade Federal de São Carlos
Resumo
Classical and quantum Boltzmann machines have become useful models for complex systems
in statistical physics, but also learning algorithms on neural networks and optimization
problems outside of statistical physics. These stochastic neural networks embodying the
Boltzmann distribution, are capable of learning and representing probability distributions
over input data that enables them to capture the related correlations and dependencies
inherent in the systems they represent. In this project, through a theoretical analysis based
on the Replica and Suzuki Trotter methods, we study and compare the phase diagrams of
the classical (in both architectures) and quantum Boltzmann machine, highlighting the
fundamental similarities and differences between them. The two methods mentioned above
allow us to make the semi classical approximation in which the correlations between the
neurons are ignored, both classical and quantum. The phase diagrams of these machines
are studied in order to provide deep insights into its equilibrium behaviour, showing
how transitions between different network states depend on variations of some control
parameters like temperature, transverse field (just for the quantum case), interaction
energy (Synapses) or external field strength (bias), we focus in the effects of the bias
which is important in the context of neural networks. In the case of a classical Boltzmann
machine, these transitions are described by changes in terms of the temperature that is
directly related with the transition probabilities between microscopic states; while for
a quantum Boltzmann Machine, it is necessary consider additionally effects from the
transverse field that allows quantum tunneling, coherence and superposition.
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CARPIO, Nicolás Armando Cabrera. Vidros de spin e redes neurais: diagramas de fase das máquinas de Boltzmann clássicas e semiclássicas. 2024. Dissertação (Mestrado em Física) – Universidade Federal de São Carlos, São Carlos, 2024. Disponível em: https://repositorio.ufscar.br/handle/20.500.14289/20901.
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