Dans cet article, nous présentons des résultats relatifs à deux extensions différentes de la quantification vectorielle et de la question liée de classification par la méthode des centres mobiles. La première partie de l’article concerne la performance théorique de la quantification et du clustering avec des divergences de Bregman ; la seconde est dédiée à des problèmes de sélection de modèle pour les courbes principales. Chaque partie est complétée par quelques illustrations numériques.
In this paper, we present results pertaining to two different extensions of vector quantization and the related question of means clustering. The first part of the paper is about the theoretical performance of quantization and clustering with Bregman divergences. The second one is dedicated to model selection issues for principal curves. Some numerical illustrations are provided in each case.
Mot clés : quantification, classification non supervisée, divergences de Bregman, courbes principales, sélection de modèle
@article{JSFS_2015__156_1_51_0, author = {Fischer, Aur\'elie}, title = {On two extensions of the vector quantization scheme}, journal = {Journal de la soci\'et\'e fran\c{c}aise de statistique}, pages = {51--75}, publisher = {Soci\'et\'e fran\c{c}aise de statistique}, volume = {156}, number = {1}, year = {2015}, mrnumber = {3338240}, zbl = {1316.62087}, language = {en}, url = {http://archive.numdam.org/item/JSFS_2015__156_1_51_0/} }
TY - JOUR AU - Fischer, Aurélie TI - On two extensions of the vector quantization scheme JO - Journal de la société française de statistique PY - 2015 SP - 51 EP - 75 VL - 156 IS - 1 PB - Société française de statistique UR - http://archive.numdam.org/item/JSFS_2015__156_1_51_0/ LA - en ID - JSFS_2015__156_1_51_0 ER -
Fischer, Aurélie. On two extensions of the vector quantization scheme. Journal de la société française de statistique, Tome 156 (2015) no. 1, pp. 51-75. http://archive.numdam.org/item/JSFS_2015__156_1_51_0/
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