Sub-Feature Selection for Novel Classification

Feature selection has emphasized in data mining research field on several data sets such as hospital data, text data, finance data etc. Most of the feature selection methods have been applied on traditional features for classification. The existing class can't solve the real world problem every day. Thus, it needs to generate the new class from existing class to solve several classification problems. With the help of tiny features value (especially sub-feature values), the new class has generated to find appropriate solution with reason from existing database using several statistical and optimization method like simple probability, Lagrangian function and feature selection method. This paper proposed the sub-feature selection framework to identify the distinguish class from traditional class with effectiveness. The experimental results of this work reveal the distinctness of novel class and identified the sub-feature data towards new class.

[1]  Huan Liu,et al.  Unsupervised feature selection for linked social media data , 2012, KDD.

[2]  Ron Kohavi,et al.  Wrappers for Feature Subset Selection , 1997, Artif. Intell..

[3]  Feiping Nie,et al.  Feature Selection via Global Redundancy Minimization , 2015, IEEE Transactions on Knowledge and Data Engineering.

[4]  Claudia Diamantini,et al.  Feature Ranking Based on Decision Border , 2010, 2010 20th International Conference on Pattern Recognition.

[5]  Igor Kononenko,et al.  Estimating Attributes: Analysis and Extensions of RELIEF , 1994, ECML.

[6]  Feiping Nie,et al.  Efficient and Robust Feature Selection via Joint ℓ2, 1-Norms Minimization , 2010, NIPS.

[7]  Kilian Stoffel,et al.  Theoretical Comparison between the Gini Index and Information Gain Criteria , 2004, Annals of Mathematics and Artificial Intelligence.

[8]  Chris H. Q. Ding,et al.  Minimum redundancy feature selection from microarray gene expression data , 2003, Computational Systems Bioinformatics. CSB2003. Proceedings of the 2003 IEEE Bioinformatics Conference. CSB2003.

[9]  Feiping Nie,et al.  Proceedings of the Twenty-Third International Joint Conference on Artificial Intelligence Exact Top-k Feature Selection via ℓ2,0-Norm Constraint , 2022 .

[10]  Inés Couso,et al.  Mutual information-based feature selection and partition design in fuzzy rule-based classifiers from vague data , 2008, Int. J. Approx. Reason..

[11]  Nikhil R. Pal,et al.  Unsupervised Feature Selection with Controlled Redundancy (UFeSCoR) , 2015, IEEE Transactions on Knowledge and Data Engineering.

[12]  Fuhui Long,et al.  Feature selection based on mutual information criteria of max-dependency, max-relevance, and min-redundancy , 2003, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[13]  Hemanta Kumar Bhuyan,et al.  Privacy preserving sub-feature selection in distributed data mining , 2015, Appl. Soft Comput..

[14]  Nicolaj Søndberg-Madsen,et al.  Unsupervised Feature Subset Selection , 2003 .

[15]  Jing Liu,et al.  Clustering-Guided Sparse Structural Learning for Unsupervised Feature Selection , 2014, IEEE Transactions on Knowledge and Data Engineering.

[16]  Peter Funk,et al.  Construction of fuzzy knowledge bases incorporating feature selection , 2006, Soft Comput..

[17]  Nikhil R. Pal,et al.  Feature selection with SVD entropy: Some modification and extension , 2014, Inf. Sci..

[18]  Yi Peng,et al.  Feature Selection via l p -Norm Support Vector Machines , 2011 .

[19]  R. Tibshirani Regression Shrinkage and Selection via the Lasso , 1996 .

[20]  Hemanta Kumar Bhuyan,et al.  Privacy preserving sub-feature selection based on fuzzy probabilities , 2014, Cluster Computing.

[21]  Hemanta Kumar Bhuyan,et al.  Pareto-based multi-objective optimization for classification in data mining , 2016, Cluster Computing.

[22]  C. A. Murthy,et al.  Unsupervised Feature Selection Using Feature Similarity , 2002, IEEE Trans. Pattern Anal. Mach. Intell..

[23]  Jugal K. Kalita,et al.  MIFS-ND: A mutual information-based feature selection method , 2014, Expert Syst. Appl..

[24]  Xin Jin,et al.  Machine Learning Techniques and Chi-Square Feature Selection for Cancer Classification Using SAGE Gene Expression Profiles , 2006, BioDM.