Interestingness Indices for Building Neural Networks Based on Concept Lattices

The difficulty of interpreting performance of neural networks is a well-known problem, which is attracting a lot of attention. In particular, neural networks based on concept lattices present a promising direction in this area. Selection of formal concepts for building a neural network has a key eff...

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Veröffentlicht in:Automation and remote control 2024-03, Vol.85 (3), p.272-278
Hauptverfasser: Zueva, M. M., Kuznetsov, S. O.
Format: Artikel
Sprache:eng
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Zusammenfassung:The difficulty of interpreting performance of neural networks is a well-known problem, which is attracting a lot of attention. In particular, neural networks based on concept lattices present a promising direction in this area. Selection of formal concepts for building a neural network has a key effect on the quality of its performance. Criteria for selecting formal concepts can be based on interestingness indices, when concepts with the highest values of a certain index are used to build a neural network. This article studies the influence of the choice of an interestingness index on the neural network performance.
ISSN:0005-1179
1608-3032
DOI:10.1134/S000511792403010X