Monday, October 03, 2011

Algorithms for training large-scale linear programming support vector regression and classification

Abstract

The main contribution of this dissertation is the development of a method to train a Support Vector Regression (SVR) model for the large-scale case where the number of training samples supersedes the computational resources. The proposed scheme consists of posing the SVR problem entirely as a Linear Programming (LP) problem and on the development of a sequential optimization method based on variables decomposition, constraints decomposition, and the use of primal-dual interior point methods. Experimental results demonstrate that the proposed approach has comparable performance with other SV-based classifiers. Particularly, experiments demonstrate that as the problem size increases, the sparser the solution becomes, and more computational efficiency can be gained in comparison with other methods. To reduce the LP-SVR training time, a method is developed that takes advantage of the fact that the support vectors (SVs) are likely to lie on the convex hull of each class. The algorithm uses the Mahalanobis distance from the class sample mean in order to rank each sample in the training set; then the samples with the largest distances are used as part of the initial working set. Experimental results show a reduction in the total training time as well as a significant decrease in the total iterations percentage. Results also suggest that using the speedup strategy, the SVs are found earlier in the learning process. Also, this research introduces a method to find the set of LP-SVR hyper-parameters; experimental results show that the algorithm provides hyper-parameters that minimize an estimate of the true test generalization error. Finally, the SVR scheme shows state-of-the-art performance in various applications such as power load prediction forecasting, texture-based image segmentation, and classification of remotely sensed imagery. This demonstrates that the proposed learning scheme and the LP-SVR model are robust and efficient when compared with other methodologies for large-scale problems.

Buy my dissertation here


But if it seems too expensive for you ($37 the PDF and $59 the soft-cover) you may contact me for a free copy, i.e., if you want to torture yourself in 335 pages, just let me know.

Wednesday, August 31, 2011

"A Signal Processing Love Letter

I want you to love me like the impulse response of an unstable recursive filter.
I want a sampling interval that will be enough just for you.
I want a new sampling theorem that will sample only you without losses and aliases all the others.
I want a quantizer that will quantize only you without any losses.
I want you to be a single tone signal so that I can filter out all the others and keep you.
I want a non-linear filter that will select you and reject the others.
I want you to be the pitch of my voice so that each time I speak people will recognize you.
I want you to be pixels in my eyes so that each time someone looks me in the eye will see you.
I want to discover a new FFT that will transform any image into yours.
I want a new JPEG technique that will compress only you without losses.
I want a special decoder that will produce you out of any coded signal.
I want you to be my cepstrum.
I want a fast processor that can decode you in zero time.
I want you to keep me in your ROM memory.
I want a data bus that will only transfer your bits."

by Hussian Al-Ahmad
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This quote was taken from an IEEE magazine check the last page of the following article:
Farrell, D.; Oakley, A.; Lyons, R.; , "Discrete-time quadrature FM detection," Signal Processing Magazine, IEEE, vol.22, no.5, pp. 145- 149, Sept. 2005
doi: 10.1109/MSP.2005.1511836
URL: http://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=1511836&isnumber=32367

Monday, January 25, 2010

Best bass player in the world

Can you guess the name.
This picture was taken at the mall in Ontario california.
He looks taller in person.



- Pablo Rivas Perea
The University of Texas El Paso

Thursday, December 17, 2009

Car crash in front of my house


The responsible ran away!!!


- Pablo Rivas Perea
The University of Texas El Paso

Friday, December 11, 2009

Class notes for Math-5346

Can you see the question mark? It's funny!



- Pablo Rivas Perea
The University of Texas El Paso