Learning more accurate metrics for self-organizing maps

Reference:

Jaakko Peltonen, Arto Klami, and Samuel Kaski. Learning more accurate metrics for self-organizing maps. In J. R. Dorronsoro, editor, Artificial Neural Networks—ICANN 2002, pages 999–1004, Berlin, 2002. Springer. Preprint postscript at http://www.cis.hut.fi/projects/mi/papers/icann02.ps.gz.

Abstract:

Improved methods are presented for learning metrics that measure only important distances. It is assumed that changes in primary data are relevant only to the extent that they cause changes in auxiliary data, available paired with the primary data. The metrics are here derived from estimators of the conditional density of the auxiliary data. More accurate estimators are compared, and a more accurate approximation to the distances is introduced. The new methods improved the quality of Self-Organizing Maps (SOMs) significantly for four of the five studied data sets.

Springer-Verlag.

Suggested BibTeX entry:

@inproceedings{Peltonen02icann,
    address = {Berlin},
    author = {Jaakko Peltonen and Arto Klami and Samuel Kaski},
    booktitle = {Artificial Neural Networks---ICANN 2002},
    editor = {J. R. Dorronsoro},
    note = {Preprint postscript at \url{http://www.cis.hut.fi/projects/mi/papers/icann02.ps.gz}},
    pages = {999-1004},
    publisher = {Springer},
    title = {Learning more accurate metrics for self-organizing maps},
    year = {2002},
}

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