A State of Art Techniques on Machine Learning Algorithms: A Perspective of Supervised Learning Approaches in Data Classification

Machine Learning (ML) is a kind of Artificial Intelligence (AI) technique which allows the system to obtain knowledge with no explicit programming. The main intention of ML technique is to enable the computers to learn with no human assistance. ML is mainly divided into three categories namely supervised, unsupervised and semi-supervised learning approaches. Supervised algorithms need humans to give input and required output, in addition to providing feedback about the prediction accuracy in the training process. Unsupervised learning approaches are contrast to supervised learning approaches where it does not require any training process. But, supervised learning approaches are simpler than unsupervised learning approaches. This paper reviews the supervised learning approaches which are widely used in data classification process. The techniques are reviewed on the basis of aim, methodology, advantages and disadvantages. Finally, the readers can get an overview of supervised ML approaches in terms of data classification.

[1]  Simon Haykin,et al.  Neural Networks and Learning Machines , 2010 .

[2]  P. Verlinde,et al.  Decision fusion using a multi-linear classifier , 1998 .

[3]  Lakhmi C. Jain,et al.  Introduction to Bayesian Networks , 2008 .

[4]  Max Kaufmann JMaxAlign: A Maximum Entropy Parallel Sentence Alignment Tool , 2012, COLING.

[5]  Ian H. Witten,et al.  Data mining: practical machine learning tools and techniques, 3rd Edition , 1999 .

[6]  Zhi-Hua Zhou,et al.  Ensemble Methods: Foundations and Algorithms , 2012 .

[7]  Pariwat Ongsulee,et al.  Artificial intelligence, machine learning and deep learning , 2017, 2017 15th International Conference on ICT and Knowledge Engineering (ICT&KE).

[8]  Charu C. Aggarwal,et al.  A Survey of Text Clustering Algorithms , 2012, Mining Text Data.

[9]  J. Ross Quinlan,et al.  Induction of Decision Trees , 1986, Machine Learning.

[10]  Leo Lebanov,et al.  Random Forests machine learning applied to gas chromatography - Mass spectrometry derived average mass spectrum data sets for classification and characterisation of essential oils. , 2020, Talanta.

[11]  Andreu Català,et al.  Rapid and brief communication: Unified dual for bi-class SVM approaches , 2005 .

[12]  Agnar Aamodt,et al.  Case-Based Reasoning: Foundational Issues, Methodological Variations, and System Approaches , 1994, AI Commun..

[13]  H. Mannila,et al.  Data mining: machine learning, statistics, and databases , 1996, Proceedings of 8th International Conference on Scientific and Statistical Data Base Management.

[14]  Padmini Srinivasan,et al.  Hierarchical neural networks for text categorization , 1999, SIGIR 1999.

[15]  Nir Friedman,et al.  Bayesian Network Classifiers , 1997, Machine Learning.

[16]  Kaisa Sere,et al.  Neural networks and genetic algorithms for bankruptcy predictions , 1996 .

[17]  Leslie G. Valiant,et al.  Cryptographic Limitations on Learning Boolean Formulae and Finite Automata , 1993, Machine Learning: From Theory to Applications.

[18]  Anil K. Jain,et al.  Data clustering: a review , 1999, CSUR.

[19]  Trevor Hastie,et al.  The Elements of Statistical Learning , 2001 .

[20]  Wynne Hsu,et al.  Integrating Classification and Association Rule Mining , 1998, KDD.

[21]  Jerome H. Friedman,et al.  DATA MINING AND STATISTICS: WHAT''S THE CONNECTION , 1997 .

[22]  John Moody,et al.  Fast Learning in Networks of Locally-Tuned Processing Units , 1989, Neural Computation.

[23]  อนิรุธ สืบสิงห์,et al.  Data Mining Practical Machine Learning Tools and Techniques , 2014 .

[24]  David M. Dutton,et al.  A review of machine learning , 1997, The Knowledge Engineering Review.

[25]  Irina Rish,et al.  An empirical study of the naive Bayes classifier , 2001 .

[26]  Daniela Giovanna Calò,et al.  Data Mining and Statistics: what's the connection? , 2009 .

[27]  Walaa Medhat,et al.  Combined Algorithm for Data Mining using Association rules , 2014, ArXiv.

[28]  A. Bachelor GLOSSARY OF TERMS GLOSSARY OF TERMS , 2010 .

[29]  Thomas M. Cover,et al.  Geometrical and Statistical Properties of Systems of Linear Inequalities with Applications in Pattern Recognition , 1965, IEEE Trans. Electron. Comput..

[30]  Camelia-Mihaela Pintea,et al.  A glass-box interactive machine learning approach for solving NP-hard problems with the human-in-the-loop , 2017, Creative Mathematics and Informatics.

[31]  Eric R. Ziegel,et al.  The Elements of Statistical Learning , 2003, Technometrics.