Connectionists: book announcement

Johan Suykens Johan.Suykens at esat.kuleuven.be
Tue Nov 4 05:40:07 EST 2014


Regularization, Optimization, Kernels, and Support Vector Machines
Editors: Johan A.K. Suykens, Marco Signoretto, Andreas Argyriou

Chapman and Hall/CRC, Machine Learning & Pattern Recognition series, 
Boca Raton, USA, Oct 2014

http://www.crcpress.com/product/isbn/9781482241396

Chapter contributions:
1. An Equivalence between the Lasso and Support Vector Machines; Martin 
Jaggi
2. Regularized Dictionary Learning; Annalisa Barla, Saverio Salzo, and 
Alessandro Verri
3. Hybrid Conditional Gradient-Smoothing Algorithms with Applications to 
Sparse and Low Rank Regularization; Andreas Argyriou, Marco Signoretto, 
and Johan A.K. Suykens
4. Nonconvex Proximal Splitting with Computational Errors; Suvrit Sra
5. Learning Constrained Task Similarities in Graph-Regularized 
Multi-Task Learning; Remi Flamary, Alain Rakotomamonjy, and Gilles Gasso
6. The Graph-Guided Group Lasso for Genome-Wide Association Studies; Zi 
Wang and Giovanni Montana
7. On the Convergence Rate of Stochastic Gradient Descent for Strongly 
Convex Functions; Cheng Tang and Claire Monteleoni
8. Detecting Ineffective Features for Nonparametric Regression; Kris De 
Brabanter, Paola Gloria Ferrario, and Laszlo Gyorfi
9. Quadratic Basis Pursuit; Henrik Ohlsson, Allen Y. Yang, Roy Dong, 
Michel Verhaegen, and S. Shankar Sastry
10. Robust Compressive Sensing; Esa Ollila, Hyon-Jung Kim, and Visa Koivunen
11. Regularized Robust Portfolio Estimation; Theodoros Evgeniou, 
Massimiliano Pontil, Diomidis Spinellis, Rafal Swiderski, and Nick Nassuphis
12. The Why and How of Nonnegative Matrix Factorization; Nicolas Gillis
13. Rank Constrained Optimization Problems in Computer Vision; Ivan 
Markovsky
14. Low-Rank Tensor Denoising and Recovery via Convex Optimization; 
Ryota Tomioka, Taiji Suzuki, Kohei Hayashi, and Hisashi Kashima
15. Learning Sets and Subspaces; Alessandro Rudi, Guillermo D. Canas, 
Ernesto De Vito, and Lorenzo Rosasco
16. Output Kernel Learning Methods; Francesco Dinuzzo, Cheng Soon Ong, 
and Kenji Fukumizu
17. Kernel Based Identification of Systems with Multiple Outputs Using 
Nuclear Norm Regularization; Tillmann Falck, Bart De Moor, and Johan 
A.K. Suykens
18. Kernel Methods for Image Denoising; Pantelis Bouboulis and Sergios 
Theodoridis
19. Single-Source Domain Adaptation with Target and Conditional Shift; 
Kun Zhang, Bernhard Scholkopf, Krikamol Muandet, Zhikun Wang, Zhi-Hua 
Zhou, and Claudio Persello
20. Multi-Layer Support Vector Machines; Marco A. Wiering and Lambert 
R.B. Schomaker
21. Online Regression with Kernels; Steven Van Vaerenbergh and Ignacio 
Santamaria



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