A Non-Parametric Variable Selection Algorithm for Allocatory Linear Discriminant Analysis

1990 ◽  
Vol 50 (4) ◽  
pp. 837-841 ◽  
Author(s):  
Samuel L. Seaman ◽  
Dean M. Young
2014 ◽  
Vol 6 (22) ◽  
pp. 9037-9044 ◽  
Author(s):  
Meilan Ouyang ◽  
Zhimin Zhang ◽  
Chen Chen ◽  
Xinbo Liu ◽  
Yizeng Liang

A new method performs classification and variable selection simultaneously to analyze complicated metabolomics datasets.


2007 ◽  
Vol 3 ◽  
pp. 117693510700300 ◽  
Author(s):  
Sreelatha Meleth ◽  
Chakrapani Chatla ◽  
Venkat R. Katkoori ◽  
Billie Anderson ◽  
James M. Hardin ◽  
...  

Background Although a majority of studies in cancer biomarker discovery claim to use proportional hazards regression (PHREG) to the study the ability of a biomarker to predict survival, few studies use the predicted probabilities obtained from the model to test the quality of the model. In this paper, we compared the quality of predictions by a PHREG model to that of a linear discriminant analysis (LDA) in both training and test set settings. Methods The PHREG and LDA models were built on a 491 colorectal cancer (CRC) patient dataset comprised of demographic and clinicopathologic variables, and phenotypic expression of p53 and Bcl-2. Two variable selection methods, stepwise discriminant analysis and the backward selection, were used to identify the final models. The endpoint of prediction in these models was five-year post-surgery survival. We also used linear regression model to examine the effect of bin size in the training set on the accuracy of prediction in the test set. Results The two variable selection techniques resulted in different models when stage was included in the list of variables available for selection. However, the proportion of survivors and non-survivors correctly identified was identical in both of these models. When stage was excluded from the variable list, the error rate for the LDA model was 42% as compared to an error rate of 34% for the PHREG model. Conclusions This study suggests that a PHREG model can perform as well or better than a traditional classifier such as LDA to classify patients into prognostic classes. Also, this study suggests that in the absence of the tumor stage as a variable, Bcl-2 expression is a strong prognostic molecular marker of CRC.


Author(s):  
S Kazemi ◽  
P Katibeh

Background: Migraine headache without aura is the most common type of migraine especially among pediatric patients. It has always been a great challenge of migraine diagnosis using quantitative electroencephalography measurements through feature classification. It has been proven that different feature extraction and classification methods vary in terms of performance regarding detection and diagnostic accuracy. Previous work on the subject was controversial, hence a comparison of these methods seems necessary.Objectives: The aim of this research is to compare two parametric and non-parametric feature extraction methods and also two classification methods in order to obtain optimal combinations of diagnostic accuracy.Materials and Methods: Having recorded background EEG from 24 pediatric migraineurs and 19 control subjects, data was processed by Welch’s and Yule-Walker’s methods. Features were selected using genetic algorithm, and then given to a support vector machine and the linear discriminant analysis for the classification. Accuracy was calculated for all combinations having the dominant frequency and the correlated absolute power of each EEG wave band (theta, alpha, and beta) and for all wave bands combined.Results: The highest migraine detection accuracy of 93% was obtained utilizing Welch’s method for EEG feature extraction alongside support vector machine for a classifier. Besides, Yule-Walker autoregressive method showed better performance than Welch’s, when only power bands (and not the dominant frequency) were used as classification input.Conclusion: The superiority of Welch’s method over Yule-Walker’s and the support vector machine over linear discriminant analysis can be great help for further researches on computer aided EEG-based diagnosis of migraine


2015 ◽  
Vol 7 (5) ◽  
pp. 1890-1895 ◽  
Author(s):  
Anna Luiza Bizerra Brito ◽  
Dimitri Albuquerque Araújo ◽  
Márcio José Coelho Pontes ◽  
Liliana Fátima Bezerra Lira Pontes

This study proposes a methodology for lettuce classification employing near infrared reflectance spectrometry and variable selection.


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