Papers

O.H.M. Padilla , Alex Athey, Alex Reinhart, James G. Scott. Sequential nonparametric tests for a change in distribution: an application to detecting radiological anomalies. To appear in Journal of the American Statistical Association Arxiv.

O.H.M. Padilla , J. Sharpnack, J.G. Scott, and R.J Tibshirani. The DFS Fused Lasso: Linear-Time Denoising over General Graphs. Journal of Machine Learning Research, Vol. 18, No. 176, 1-36, 2018. Link.

O.H.M. Padilla, N.G. Polson and J.G. Scott. A deconvolution path to mixtures. Electronic Journal of Statistics Volume 12, Number 1 (2018), 1717-1751.

O.H.M. Padilla and J.G. Scott. Tensor decomposition with generalized lasso penalties. Journal of Computational and Graphical Statistics 2017, 26:3, 537-546. Link (See here for code.)

D. Hernandez-Hernandez* and O.H.M. Padilla*. Worst portfolios for dynamic monetary utility processes. Stochastics, Vol. 90, Number 1 (2018), 78-101.

M. Zhou, O. H. M. Padilla, and J. G. Scott, "Priors for random count matrices derived from a family of negative binomial processes," Journal of the American Statistical Association 2016, Vol. 111, No. 515, 1144-1156, Theory and Methods. PDF. (See here for code.)

W. Tansey, O.-H. Madrid-Padilla, A. Suggala, and P. Ravikumar. Vector-Space Markov Random Fields via Exponential Families. In International Conference on Machine Learning (ICML) 32, 2015. PDF. (See here for code.)

O.-H. Madrid-Padilla, James Sharpnack, Yanzhen Chen, and Daniela Witten. Adaptive Non-Parametric Regression With the K-NN Fused Lasso. Link.

Shitong Wei, O.-H. Madrid-Padilla, and James Sharpnack. Distributed Cartesian Power Graph Segmentation for Graphon Estimation. Link.

O.-H. Madrid-Padilla. Graphon estimation via nearest neighbor algorithm and 2D fused lasso denoising. Link.

O.H.M. Padilla and J.G. Scott. Nonparametric density estimation by histogram trend filtering. Link.

*Alphabetical order.