Gaussian mixture models are widely used to study clustering problems. These model-based clustering methods require an accurate estimation of the unknown data density by Gaussian mixtures. In Maugis and Michel (2009), a penalized maximum likelihood estimator is proposed for automatically selecting the number of mixture components. In the present paper, a collection of univariate densities whose logarithm is locally β-Hölder with moment and tail conditions are considered. We show that this penalized estimator is minimax adaptive to the β regularity of such densities in the Hellinger sense.
Mots clés : rate adaptive density estimation, gaussian mixture clustering, hellinger risk, non asymptotic model selection
@article{PS_2013__17__698_0, author = {Maugis-Rabusseau, C. and Michel, B.}, title = {Adaptive density estimation for clustering with gaussian mixtures}, journal = {ESAIM: Probability and Statistics}, pages = {698--724}, publisher = {EDP-Sciences}, volume = {17}, year = {2013}, doi = {10.1051/ps/2012018}, mrnumber = {3126158}, language = {en}, url = {http://www.numdam.org/articles/10.1051/ps/2012018/} }
TY - JOUR AU - Maugis-Rabusseau, C. AU - Michel, B. TI - Adaptive density estimation for clustering with gaussian mixtures JO - ESAIM: Probability and Statistics PY - 2013 SP - 698 EP - 724 VL - 17 PB - EDP-Sciences UR - http://www.numdam.org/articles/10.1051/ps/2012018/ DO - 10.1051/ps/2012018 LA - en ID - PS_2013__17__698_0 ER -
%0 Journal Article %A Maugis-Rabusseau, C. %A Michel, B. %T Adaptive density estimation for clustering with gaussian mixtures %J ESAIM: Probability and Statistics %D 2013 %P 698-724 %V 17 %I EDP-Sciences %U http://www.numdam.org/articles/10.1051/ps/2012018/ %R 10.1051/ps/2012018 %G en %F PS_2013__17__698_0
Maugis-Rabusseau, C.; Michel, B. Adaptive density estimation for clustering with gaussian mixtures. ESAIM: Probability and Statistics, Tome 17 (2013), pp. 698-724. doi : 10.1051/ps/2012018. http://www.numdam.org/articles/10.1051/ps/2012018/
[1] Slope heuristics: overview and implementation. Stat. Comput. 22 (2011) 455-470. | MR
, and ,[2] A new lower bound for multiple hypothesis testing. IEEE Trans. Inform. Theory. 51 (2005) 1611-1615. | MR | Zbl
,[3] A course in approximation theory, Graduate Studies in Mathematics, vol. 101 of Amer. Math. Soc. Providence, RI (2009). | MR | Zbl
and ,[4] Posterior consistency of Dirichlet mixtures in density estimation. Ann. Stat. 27 (1999) 143-158. | MR | Zbl
, and ,[5] Entropy and rates of convergence for maximum likelihood and Bayes estimation for mixtures of normal densities. Ann. Stat. 29 (2001) 1233-1263,. | MR | Zbl
and ,[6] Posterior convergence rates of Dirichlet mixtures at smooth densities. Ann. Stat. 35 (2007) 697-723. | MR | Zbl
and ,[7] Abstract inference. John Wiley and Sons Inc., New York (1981). | MR | Zbl
,[8] Nonlinear approximation using Gaussian kernels. J. Functional Anal. 259 (2010) 203-219. | MR | Zbl
and ,[9] Clustering algorithms, Probab. Math. Stat. John Wiley and Sons, New York-London-Sydney (1975). | MR | Zbl
,[10] The elements of statistical learning, Data mining, inference, and prediction. Statistics. Springer, New York, 2nd edition (2009). | MR | Zbl
, and ,[11] W. Kruijer, J. Rousseau and A van der Vaart, Adaptive Bayesian Density Estimation with Location-Scale Mixtures. Electron. J. Statist. 4 (2010) 1225-1257. | MR
[12] Mixtures Models: Theory, Geometry and Applications. IMS, Hayward, CA (1995). | Zbl
,[13] Concentration Inequalities and Model Selection. École d'été de Probabilités de Saint-Flour, 2003. Lect. Notes Math. Springer (2007). | MR | Zbl
,[14] Adaptive density estimation for clustering with Gaussian mixtures (2011). arXiv:1103.4253v2.
and ,[15] Data-driven penalty calibration: a case study for Gaussian mixture model selection. ESAIM: PS 15 (2011) 320-339. | Numdam | MR
and ,[16] A non asymptotic penalized criterion for Gaussian mixture model selection. ESAIM: PS 15 (2011) 41-68. | Numdam | MR
and ,[17] Finite Mixture Models. Wiley (2000). | MR | Zbl
and ,[18] Introduction to nonparametric estimation. Statistics. Springer, New York (2009). | MR | Zbl
,[19] Minimax estimation of the mean of a normal distribution with known variance. Ann. Math. Stat. 21 (1950) 218-230. | MR | Zbl
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