Second order extended ensemble Kalman filter with stochastically perturbed innovation for initializing artificial neural network weights
Palavras-chave:
Bayesian method, Convergence time, Non-linaer filtering, Non-linear state space dynamic modelsResumo
Artificial neural networks are widely applied in solving non-linear state-space dynamic models, yet the challenge of inaccurate initial weights remains a critical bottleneck. Weight initialization methods significantly influence convergence speed and model efficiency. While conventional approaches such as random initialization and filtering techniques are commonly used, the Bayesian method—though highly accurate—suffers from the computational burden of inverting highdimensional matrices. This study has developed a novel solution: the Second Order Extended Ensemble Filter with Perturbed Innovation (SoEEFPI). Developed from a second-order Taylor expansion of the stochastically perturbed KushnerStratonovich equation, SoEEFPI provides a tractable numerical solution to the inverse covariance matrix problem. Validation is conducted using the Lorenz63 system, comparing SoEEFPI’s performance to that of the Kalman-Bucy Filter (SoEKBF) and the First Order Extended Ensemble Filter (FoEEF) in MATLAB. Furthermore, SoEEFPI is employed to initialize neural network weights, yielding a new model whose convergence time, RMSE, and epoch count are evaluated. Results demonstrate improved convergence efficiency and accuracy, positioning SoEEFPI as a robust alternative for neural network initialization.
Publicado
Como Citar
Edição
Secção
Direitos de Autor (c) 2025 Cavin Oyugi Ongere, David Angwenyi, Robert Oryiema

Este trabalho encontra-se publicado com a Creative Commons Atribuição-NãoComercial 4.0.
Artigos mais lidos do(s) mesmo(s) autor(es)
- Samuel Wesonga Usolo, Annette Okoth, David Angwenyi, Modeling the effect of devolution on youth unemployment rates in Kenya using autoregressive integrated moving average - intervention model , African Journal of Empirical Research: Vol. 6 N.º 3 (2025): Jul-Sep 2025
- Michael Musyoki, David Alilah, David Angwenyi, Application of the Vector Autoregressive Model Incorporating New Measurements Using the Bayesian Approach , African Journal of Empirical Research: Vol. 4 N.º 2 (2023): Jul-Dec 2023
- Owen Mulinya Kizito, David Angwenyi, Duncan Oganga, Solutions of navier stokes equations for dam break problem in two dimension using finite element method , African Journal of Empirical Research: Vol. 6 N.º 3 (2025): Jul-Sep 2025
- Lucian Talu Mayabi, David Angwenyi, Duncan Oganga, Stochastic modelling of predator–prey dynamics in a three-patch ecosystem , African Journal of Empirical Research: Vol. 6 N.º 3 (2025): Jul-Sep 2025
- Kevin Midenyo, David Angwenyi, Duncan Oganga, Second Order Extended Ensemble Filter for Non-linear Filtering , African Journal of Empirical Research: Vol. 5 N.º 4 (2024): Oct-Dec 2024