Cover of Summary of the Doctoral Thesis "Development of Knowledge Extraction Methodology From Trained Artificial Neural Networks"

Development of Knowledge Extraction Methodology from Trained Artificial Neural Networks

Promocijas darba kopsavilkums

Andrejs Bondarenko, Rīgas Tehniskā universitāte, Latvija
ORCID iD http://orcid.org/0000-0002-4103-6814

Artificial neural networks (ANN) are widely used in machine learning. They are powerful non-linear models that can be trained in a supervised, semi-supervised, and unsupervised manner. There is no single best machine learning classifier that can be used in all scenarios, but ANNs are frequently outperforming other classifiers. On the downside, it is hard to explain how classification decision is made within ANN. Artificial neural networks are essentially black-boxes. Lack of understanding of how such classifiers work severely limits their applicability. The Thesis is devoted to the development of approaches allowing to extract knowledge in the form of rules from trained ANN classifier.

Papildus informācija

DOI

https://doi.org/10.7250/9789934221408

Izdevuma tips

Hipersaite

https://ortus.rtu.lv/science/lv/publications/30953

Aizstāvēšanas datums

18.06.2020.

ISBN (print)

978-9934-22-011-1

ISBN (pdf)

978-9934-22-140-8

Formāts

Lappušu skaits

44

Publicēts tiešsaistē

Izdevējs

RTU Izdevniecība

Publicēšanas valsts

Latvija

Valoda

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