Neural Methods for Non-Standard Data (2004)
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| Venue: | proceedings of the 12 th European Symposium on Artificial Neural Networks (ESANN 2004), d-side pub |
| Citations: | 6 - 3 self |
BibTeX
@INPROCEEDINGS{Hammer04neuralmethods,
author = {Barbara Hammer and Brijnesh J. Jain},
title = {Neural Methods for Non-Standard Data},
booktitle = {proceedings of the 12 th European Symposium on Artificial Neural Networks (ESANN 2004), d-side pub},
year = {2004},
pages = {281--292},
publisher = {D-side publications}
}
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Abstract
Standard pattern recognition provides effective and noise-tolerant tools for machine learning tasks; however, most approaches only deal with real vectors of a finite and fixed dimensionality. In this tutorial paper, we give an overview about extensions of pattern recognition towards non-standard data which are not contained in a finite dimensional space, such as strings, sequences, trees, graphs, or functions. Two major directions can be distinguished in the neural networks literature: models can be based on a similarity measure adapted to non-standard data, including kernel methods for structures as a very prominent approach, but also alternative metric based algorithms and functional networks; alternatively, non-standard data can be processed recursively within supervised and unsupervised recurrent and recursive networks and fully recurrent systems.







