Adaptive Real-Time Filter for Partially-Observed Boolean Dynamical Systems

Published: 2021, Last Modified: 05 Feb 2025ICASSP 2021EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: Partially-Observed Boolean dynamical systems (POBDS) are a general class of nonlinear state-space models consisting of a hidden Boolean state process observed through an arbitrary noisy mapping to a measurement space. The huge uncertainty present in systems/processes, along with the time-limit constraints, necessitate real-time or online joint state and parameter estimation of POBDS. In this manuscript, we present a real-time joint state and parameter estimation framework for POBDS. The proposed framework relies on a complete-sufficient statistic of parameters, where a joint state and parameter estimation is achieved based on the combination of online expectation-maximization method and the optimal MMSE state estimator for POBDS, called Boolean Kalman filter. The proposed method’s performance is assessed through a POBDS model for Boolean gene regulatory networks observed through noisy measurements.
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