Likelihood-Based Adaptive Learning in Stochastic State-Based Models
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Abstract
This paper presents an adaptive learning framework for estimating structural parameters in stochastic state-based models (SSMs). SSMs are a useful modeling tool in systems biology and medicine. While models in these disciplines are traditionally hand-crafted, an automated generation based on experimental data becomes a topic of research interest. In particular, our goal is to classify measured processes using the generated models. An innovative likelihood-based adaptive learning approach capable of learning the structural parameters, i.e., the arc weights of SSMs from data and exploiting the reliability of detected inputs is presented in this work. Its convergence behavior is analyzed and an expression for the error at steady state is derived. Simulations assess the performance of the proposed and existing algorithms for a gene regulatory network.
BibTEX Reference Entry
@article{ViLaMaDaSc19, author = {Peter Vieting and Rodrigo C. de Lamare and Lukas Martin and Guido Dartmann and Anke Schmeink}, title = "Likelihood-Based Adaptive Learning in Stochastic State-Based Models", pages = "1-5", journal = "{IEEE} Signal Processing Letters", doi = 10.1109/LSP.2019.2917495, month = May, year = 2019, hsb = RWTH-2019-04729, }
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