Approach of hybrid soft computing for agricultural data classification
Abstract
Keywords: agricultural data, soft computing, rough set, support vector machine, ensemble learning, classification
DOI: 10.3965/j.ijabe.20150806.1312
Citation: Shi L, Duan Q G, Si H P, Qiao H B, Zhang J J, Ma X M. Approach of hybrid soft computing for agricultural data classification. Int J Agric & Biol Eng, 2015; 8(6): 54-61.
Keywords
Full Text:
PDFReferences
Zadeh L A. Role of soft computing and fuzzy logic in the conception, design and development of information/ intelligent systems. Lecture Notes in Computer Science, 1998: 1–9.
Zadeh L A. Fuzzy logic, neural networks, and soft computing. Communication of the ACM, 1994; 37(3): 77–84.
Fieldsend J, Singh S. Pareto evolutionary neural networks. IEEE Transaction Neural Networks, 2005; 16 (2): 338–354.
Pawlak Z. Rough sets. Int. Journal of Computer and Information Sciences, 1982; 11(5): 341–356.
Joachims T, Finley T, Yu C N. Cutting-plane training of structural SVMs. Machine Learning, 2009; 77(1): 27–59.
Srinivas M, Patnaik L. Adaptive probabilities of crossover and mutation in genetic algorithms. IEEE Transactions on System, Man and Cybernetics, 1994; 24(4): 656–667.
Kirkpatrick S, Gelatt C D, Vecchi M P. Optimization by simulated annealing. Science, 1983; 220 (4598): 671–680.
Huang Y, Lan Y, Thomson S J, Fang A, Hoffmann W C, Lacey R E. Development of soft computing and applications in agricultural and biological engineering. Computers and Electronics in Agriculture, 2010; 71(2): 107–127.
Huang Y. Advances in artificial neural networks- methodological development and application. Algorithms, 2009; 2(3): 973–1007.
Karimi Y, Prasher S O, Patel R M, Kim S H. Application of support vector machine technology for weed and nitrogen stress detection in corn. Computers and Electronics in Agriculture, 2006; 51(12): 99–109.
Chedad A, Moshou D, Aerts J M, Hirtum A V, Ramon H, Berckmans D. Recognition system for pig cough based on probabilistic neural networks. Journal of Agricultural Engineering Research, 2001; 79(4): 449–457.
Schatzki T F, Haff R P, Young R, Can I, Le L C, Toyofuku N. Defect detection in apples by means of X-ray imaging. Transactions of the ASAE, 1997; 40(5): 1407–1415.
Chen F L, Li F C. Combination of feature selection approaches with SVM in credit scoring. Expert Systems with Applications, 2010; 37(7): 4902–4909.
Zhou Q F, Zhou H, Zhou Q Q, Yang F, Luo L K, Li T. Structural damage detection based on posteriori probability support vector machine and Dempster–Shafer evidence theory. Applied Soft Computing, 2015; 36: 368–374.
Huang C L, Liao H C, Chen M C. Prediction model building and feature selection with support vector machines in breast cancer diagnosis. Expert Systems with Applications, 2008; 4(1): 578–587.
Shi L, Ma X M, Xi L, Duan Q G, Zhao J Y. Rough set and ensemble learning based semi-supervised algorithm for text classification. Expert Systems with Applications, 2011; 38(5): 6300–6306.
Shi L, Xi L, Ma X M, Weng M, Hu X H. A novel ensemble algorithm for biomedical classification based on ant colony optimization. Applied Soft Computing, 2011; 11(8): 5674–5683.
Jensen R, Shen Q. Semantics-preserving dimensionality reduction: rough and fuzzy-rough-based approaches. IEEE Transactions on Knowledge and Data Engineering, 2004; 16(12): 1457–1471.
Dietterich T G. Ensemble methods in machine learning. Springer Berlin Heidelberg, 2000; 1857(1): 1–15.
Peng Y H. A novel ensemble machine learning for robust microarray data classification. Computers in Biology and Medicine, 2006; 36(6): 553–573.
Raafat H M, Tolba A S, Aly A M. A novel training weighted ensemble (TWE) with application to face recognition. Applied Soft Computing, 2011; 11(4): 3608–3617.
Kim M J, Kang D K. Ensemble with neural networks for bankruptcy prediction. Expert Systems with Applications, 2010; 37(4): 3373–3379.
Wei C P, Chen H C, Cheng T H. Effective spam filtering: A single-class learning and ensemble approach. Decision Support Systems, 2008; 45(3): 491–503.
Melville P, Mooney R J. Creating diversity in ensembles using artificial data. Information Fusion, 2005; 6(1): 99–111.
Bazan J G, Nguyen H S, Nguyen S H, Synak P, Wróblewski J. Rough set algorithms in classification problems. Rough Set Methods and Applications: New Developments in Knowledge Discovery in Information Systems, 2000; 56: 49–88.
http://www.cs.waikato.ac.nz/ml/weka/index_datasets.html. Accessed on [2015-3-10].
Yang Y. An evaluation of statistical approaches to text categorization. Information Retrieval, 1999; 1(1-2): 69–90.
Bradley A. The use of the area under the ROC curve in the evaluation of machine learning algorithms. Pattern Recognition, 1997; 30(7): 1145–1159.
Chang C C, Lin C J. LIBSVM: a Library for Support Vector Machines. Acm Transactions on Intelligent Systems and Technology, 2006; 2(3): 389–396.
Copyright (c)