Inproceedings: An article in a conference proceedings.
Robust Structural Modeling and Outlier Detection with GMDH-Type Polynomial Neural Networks
Title of the conference
Artificial Neural Networks: Formal Models and Their Applications – ICANN 2005: 15th International Conference, Warsaw, Poland, September 11-15, 2005. Proceedings, Part II
Duch W., Kacprzyk J., Oja E., Zadrożny S.
Lecture Notes in Computer Science
The paper presents a new version of a GMDH type algorithm able to perform an automatic model structure synthesis, robust model parameter estimation and model validation in presence of outliers. This algorithm allows controlling the complexity – number and maximal power of terms – in the models and provides stable results and computational efficiency. The performance of this algorithm is demonstrated on artificial and real data sets. As an example we present an application to the study of the association between clinical symptoms of Parkinsons disease and temporal patterns of neuronal activity recorded in the subthalamic nucleus of human patients.
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