Abstract

This paper proposes two-stage hybrid feature selection algorithms to build the stable and efficient diagnostic models where a new accuracy measure is introduced to assess the models. The two-stage hybrid algorithms adopt Support Vector Machines (SVM) as a classification tool, and the extended Sequential Forward Search (SFS), Sequential Forward Floating Search (SFFS), and Sequential Backward Floating Search (SBFS), respectively, as search strategies, and the generalized F-score (GF) to evaluate the importance of each feature. The new accuracy measure is used as the criterion to evaluated the performance of a temporary SVM to direct the feature selection algorithms. These hybrid methods combine the advantages of filters and wrappers to select the optimal feature subset from the original feature set to build the stable and efficient classifiers. To get the stable, statistical and optimal classifiers, we conduct 10-fold cross validation experiments in the first stage; then we merge the 10 selected feature subsets of the 10-cross validation experiments, respectively, as the new full feature set to do feature selection in the second stage for each algorithm. We repeat the each hybrid feature selection algorithm in the second stage on the one fold that has got the best result in the first stage. Experimental results show that our proposed two-stage hybrid feature selection algorithms can construct efficient diagnostic models which have got better accuracy than that built by the corresponding hybrid feature selection algorithms without the second stage feature selection procedures. Furthermore our methods have got better classification accuracy when compared with the available algorithms for diagnosing erythemato-squamous diseases.

Highlights

  • The study of diagnosing erythemato-squamous diseases has become very popular since 1998 [1]

  • A new accuracy definition was proposed in this paper, and it was used to evaluate the performance of a classifier to avoid the skew of it and to establish the sound diagnostic models for diagnosing erythemato-squamous diseases

  • Several hybrid feature selection algorithms were proposed based on the generalized F-score and Support Vector Machines (SVM) with the new accuracy to value the performance of the temporary SVM to guide the feature selection procedures

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Summary

Introduction

The study of diagnosing erythemato-squamous diseases has become very popular since 1998 [1]. There are many experts including those in medicine and those in computer science, especially in artificial intelligence area, devote themselves to studying the diagnoses of erythemato-squamous diseases [2,3,4,5,6,7,8,9,10,11]. There are six groups of the diseases, including psoriasis, seboreic dermatitis, lichen planus, pityriasis rosea, chronic dermatitis and pityriasis rubra pilaris. These six groups often share many clinical features of erythema with very few differences, so it is very difficult to perform a differential diagnosis for erythemato-squamous diseases in dermatology. It is a common phenomenon that one disease may show features of another at the initial stage and display its own characteristic features at the following stages, which aggravate the difficulties for the differential diagnosis of erythemato-squamous disease according to its features, and attract more and more experts come from different areas focusing on the study of the diagnostic of erythemato-squamous diseases

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