The Theory of Probabilistic Hierarchical Learning for Classification

Author:

Ursani Ziauddin,Ursani Ahsan Ahmad

Abstract

Providing the ability of classification to computers has remained at the core of the faculty of artificial intelligence. Its application has now made inroads towards nearly every walk of life, spreading over healthcare, education, defence, economics, linguistics, sociology, literature, transportation, agriculture, and industry etc. To our understanding most of the problems faced by us can be formulated as classification problems. Therefore, any novel contribution in this area has a great potential of applications in the real world. This paper proposes a novel way of learning from classification datasets i.e., hierarchical learning through set partitioning. The theory of probabilistic hierarchical learning for classification has been evolved through several works while widening its scope with each instance. The theory demonstrates that the classification of any dataset can be learnt by generating a hierarchy of learnt models each capable of classifying a disjoint subset of the training set. The basic assertion behind the theory is that an accurate classification of complex datasets can be achieved through hierarchical application of low complexity models. In this paper, the theory is redefined and revised based on four mathematical principles namely, principle of successive bifurcation, principle of two-tier discrimination, principle of class membership and the principle of selective data normalization. The algorithmic implementation of each principle is also discussed. The scope of the approach is now further widened to include ten popular real-world datasets in its test base. This approach does not only produce their accurate models but also produced above 95% accuracy on average with regard to the generalising ability, which is competitive with the contemporary literature.

Publisher

International Association for Educators and Researchers (IAER)

Subject

Electrical and Electronic Engineering,General Computer Science

Reference37 articles.

1. Maria Pérez-Ortiz, Silvia Jiménez-Fernández, Pedro A. Gutiérrez, Enrique Alexandre, César Hervás-Martínez et al., “A Review of Classification Problems and Algorithms in Renewable Energy Applications”, Energies, ISSN: 1996-1073, pp. 1-27, Vol. 9, No. 8, 2 August 2016, Published by Multidisciplinary Digital Publishing Institute (MDPI), DOI: 10.3390/en9080607, Available: https://www.mdpi.com/1996-1073/9/8/607.

2. Jan Luts, Fabian Ojeda, Raf Van de Plas, Bart De Moor, Sabine Van Huffel et al., “A Tutorial on Support Vector Machine-based Methods for Classification Problems in Chemometrics”, Analytica Chimica Acta, Print ISSN: 0003-2670, Online ISSN: 1873-4324, pp. 129-145, Vol. 665, No. 2, 30 April 2010, Published by Elsevier, DOI: 10.1016/j.aca.2010.03.030, Available: https://www.sciencedirect.com/science/article/pii/S0003267010003132.

3. Shan Suthaharan, “Big Data Classification: Problems and Challenges in Network Intrusion Prediction with Machine Learning”, ACM SIGMETRICS Performance Evaluation Review, ISSN:0163-5999, pp. 70-73, Vol. 41, No. 4, March 2014, Published by ACM, DOI: 10.1145/2627534.2627557, Available: https://dl.acm.org/doi/10.1145/2627534.2627557.

4. Mahdieh Labani, Parham Moradi, Fardin Ahmadizar and Mahdi Jalili, “A Novel Multivariate Filter Method for Feature Selection in Text Classification Problems”, Engineering Applications of Artificial Intelligence, ISSN: 0952-1976, pp. 25-37, Vol. 70, 3 February 2018, Published by Elsevier, DOI: 10.1016/j.engappai.2017.12.014, Available: https://www.sciencedirect.com/science/article/pii/S0952197617303172.

5. Yi Peng, Guoxun Wang, Gang Kou and Yong Shi, “An Empirical Study of Classification Algorithm Evaluation for Financial Risk Prediction”, Applied Soft Computing, Print ISSN: 1055-6788, Online ISSN: 1029-4937, pp. 2906-2915, Vol. 11, No. 2, 1 January 2011, Published by Taylor & Francis, DOI: 10.1080/10556789808805680, Available: https://doi.org/10.1080/10556789808805680.

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