dc.contributor.author
Sikorski, Alexander
dc.date.accessioned
2026-01-22T13:58:10Z
dc.date.available
2026-01-22T13:58:10Z
dc.identifier.uri
https://refubium.fu-berlin.de/handle/fub188/50274
dc.identifier.uri
http://dx.doi.org/10.17169/refubium-50000
dc.description.abstract
This dissertation is dedicated to developing new approaches for the discretization and analysis of high-dimensional Markov processes, particularly in molecular dynamics, with a focus on their interactions. The four included articles present methods for addressing associated challenges, such as efficient representation of transfer operators and understanding long-term dynamics.
The first two articles focus on representing and understanding the interactions of high- dimensional jump processes through their generators. The first article introduces the Augmented Jump Chain, a method to transform time-dependent Markov processes into time-independent Markov chains. The process description through individual space-time jumps allows for a more efficient numerical treatment of time-dependent processes. The second article develops the Ten- sor Square-Root Approximation, a tensor representation of the generator of diffusion processes that can be explicitly derived from the potential and potentially enables efficient calculations by reducing to low-rank tensors.
The final two articles offer new approaches for representing the invariant subspaces of stochas- tic processes using the so-called χ functions, which capture the slowest timescales of the process. These are learned through neural networks with ISOKANN, a method that combines traditional numerical methods and machine learning. The third article focuses on the methodological de- velopment of ISOKANN and the combination of optimal control and adaptive sampling, which allow data to be generated efficiently and iteratively improve the neural network training. The fourth article presents a fundamental interpretation of the χ functions as macro-states, which define a temporal structure for macroscopic transitions, thereby offering a new way to extract representative transition paths.
Overall, this dissertation provides new theoretical insights, as well as computation- and data- driven methods, for the analysis of high-dimensional Markov processes, opening perspectives for future applications in molecular dynamics.
en
dc.format.extent
90 Seiten
dc.rights.uri
http://www.fu-berlin.de/sites/refubium/rechtliches/Nutzungsbedingungen
dc.subject
High-dimensional Stochastic Dynamics
en
dc.subject
Transfer Operators
en
dc.subject
Eigenfunction Learning
en
dc.subject
Dimensionality Reduction
en
dc.subject
Tensor Methods
en
dc.subject.ddc
500 Natural sciences and mathematics::510 Mathematics::519 Probabilities and applied mathematics
dc.title
Transfer operator methods for Markov processes in high dimensions
dc.contributor.gender
male
dc.contributor.firstReferee
Weber, Marcus
dc.contributor.furtherReferee
Dellnitz, Michael
dc.contributor.furtherReferee
Schütte, Christof
dc.date.accepted
2025-09-11
dc.identifier.urn
urn:nbn:de:kobv:188-refubium-50274-0
dc.title.translated
Transferoperator Methoden für Markov Prozesse in hohen Dimensionen
refubium.affiliation
Mathematik und Informatik
dcterms.accessRights.dnb
free
dcterms.accessRights.openaire
open access
dcterms.accessRights.proquest
accept