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Multi-objectives TLBO hybrid method to select the related risk features with rheumatism disease

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Abstract

Features subset selection was commonly used in data mining and artificial intelligence techniques to produce a model with a minimal set of features that enhances the performance of the classifier. The essential motive for selecting features is to avoid the problem of a number of dimensions trap. This paper introduces a new technique of selection of features dependent on the modified of binary teaching–learning-based optimization and the suggested method called MBTLBO. This algorithm (teaching learning-based optimization TLBO) is one of the present metaheuristic that is been widely utilized to a several of intractable optimization issues in recent times. Such algorithm has been combined with supervised data mining technique (support vector machine) for the implementation of feature subset selection problem in binary identification. The collection of specific risk features with the rheumatic disease was implemented. The findings revealed that the new approach (MBTLBO) increases the accuracy of classification.

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References

  1. Agrawal V, Chandra S (2015) Feature selection using artificial bee colony algorithm for medical image classification, pp 2–7

  2. Akhlaghi M, Emami F, Nozhat N (2014) Binary TLBO algorithm assisted for designing plasmonic nano bi-pyramids-based absorption coefficient. J Mod Opt 61(13):1092–1096. https://doi.org/10.1080/09500340.2014.920537

    Article  Google Scholar 

  3. Aletaha D, Neogi T, Silman AJ, Funovits J, Felson DT, Bingham III CO, Birnbaum NS, Burmester GR, Bykerk VP, Cohen MD, Combe B et al (2010) 2010 Rheumatoid arthritis classification criteria: an American college of rheumatology/European league against rheumatism collaborative initiative. Arthritis Rheumatism 62(9):2569–2581

  4. Allam M, Nandhini M (2018) Optimal feature selection using binary teaching learning based optimization algorithm. J King Saud Univ Comput Inf Sci. https://doi.org/10.1016/j.jksuci.2018.12.001

    Article  Google Scholar 

  5. Babatunde OH, Armstrong L, Leng J, Diepeveen D (2014) A genetic algorithm-based feature selection. Int J Electron Commun Comput Eng 5(4):899–905

    Google Scholar 

  6. Cervantes J, Garcia-lamont F, Rodríguez-mazahua L, Lopez A (2019) Neurocomputing a comprehensive survey on support vector machine classification: applications, challenges and trends. Neurocomputing. https://doi.org/10.1016/j.neucom.2019.10.118

    Article  Google Scholar 

  7. Chen X (2015) A new clustering algorithm based on near neighbor influence. Expert systems with applications. Elsevier, Amsterdam

    Google Scholar 

  8. Covões TF, Hruschka ER, de Castro LN, Santos ÁM (2009) A Cluster-based feature selection approach. In: Corchado E, Wu X, Oja E, Herrero Á, Baruque B (eds) Hybrid artificial intelligence systems. HAIS 2009. Lecture notes in computer science, vol 5572. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-642-02319-4_20

  9. Deng X, Li Y, Weng J, et al. (2019) Feature selection for text classification: a review. Multimed Tools Appl 78:3797–3816. https://doi.org/10.1007/s11042-018-6083-5

    Article  Google Scholar 

  10. Forest O-P, Rodrigues D, Pereira LAM, Nakamura RYM, Costa KAP, Yang X-S, Souza AN, Paulo J, Forest O-P (2014) Expert systems with applications a wrapper approach for feature selection based on bat algorithm. Expert Syst Appl 41(5):2250–2258. https://doi.org/10.1016/j.eswa.2013.09.023

    Article  Google Scholar 

  11. Gunavathi C, Premalatha K (2015) Performance analysis of genetic algorithm with KNN and SVM for feature selection in tumor classification, no. June

  12. Hafez AI, Zawbaa HM, Emary E, Mahmoud HA, Hassanien AE (2015) An innovative approach for feature selection based on chicken swarm optimization. In: 2015 7th International conference of soft computing and pattern recognition (SoCPaR), Fukuoka, pp. 19–24. https://doi.org/10.1109/SOCPAR.2015.7492775

  13. Hou J, Ren Z, Lu P, Zhang K (2018) An improved teaching-learning-based optimization. Chinese control conference, CCC, vol 2018-July. https://doi.org/10.23919/ChiCC.2018.8483450

  14. Jain K, Bhadauria SS (2016) Enhanced content based image retrieval using feature selection using teacher learning based optimization. Int J Comput Sci Inf Security (IJCSIS) 14(11)

    Google Scholar 

  15. Kaboli M, Akhlaghi M (2016) Binary teaching-learning-based optimization algorithm is used to investigate the superscattering plasmonic nanodisk 1. Opt Spectrosc 120(6):958–963. https://doi.org/10.1134/S0030400X16060096

    Article  Google Scholar 

  16. Khuat TT, Le MH (2018) Binary teaching–learning-based optimization algorithm with a new update mechanism for sample subset optimization in software defect prediction. Soft Comput. https://doi.org/10.1007/s00500-018-3546-6

    Article  Google Scholar 

  17. Kiziloz HE, Deniz A, Dokeroglu T, Cosar A (2018) US CR. Neurocomputing. https://doi.org/10.1016/j.neucom.2018.04.020

    Article  Google Scholar 

  18. Lai Z, Mo D, Wong WK, Xu Y, Miao D, Zhang D (2018) Robust discriminant regression for feature extraction. In: IEEE transactions on cybernetics, vol. 48, no. 8, pp. 2472–2484. https://doi.org/10.1109/TCYB.2017.2740949

  19. Lewes GH (2015) Support vector machines for classification, no. January. https://doi.org/10.1007/978-1-4302-5990-9

  20. Mafarja M, Jaber I, Hammouri AI, Eleyan D (2017) Binary dragonfly algorithm for feature selection, no. November. https://doi.org/10.1109/ICTCS.2017.43

  21. Mazini M, Shirazi B, Mahdavi I (2019) Anomaly network-based intrusion detection system using a reliable hybrid artificial bee colony and AdaBoost algorithms. J King Saud Univ Comput Inf Sci 31(4):541–553. https://doi.org/10.1016/j.jksuci.2018.03.011

    Article  Google Scholar 

  22. Mohan BSS, Shanthini KS (2014) Performance analysis of classifiers with feature selection and optimization in CBIR system for biological images. https://doi.org/10.12792/icisip2014.042

  23. Moradi P, Gholampour M (2016) A hybrid particle swarm optimization for feature subset selection by integrating a novel local search strategy. Appl Soft Comput J 43:117–130. https://doi.org/10.1016/j.asoc.2016.01.044

    Article  Google Scholar 

  24. Satapathy SC, Naik A (2013) Modified teaching–learning-based optimization algorithm for global numerical optimization—A comparative study. Swarm Evol Comput. https://doi.org/10.1016/j.swevo.2013.12.005

  25. Panda M (2017) elephant search optimization combined with deep neural network for microarray data analysis. J King Saud Univ Comput Inf Sci. https://doi.org/10.1016/j.jksuci.2017.12.002

    Article  Google Scholar 

  26. Rao RV, Savsani VJ, Balic J (2012) Teaching–learning-based optimization algorithm for unconstrained and constrained real-parameter optimization problems. Eng Optim 44(12):1447–1462. https://doi.org/10.1080/0305215X.2011.652103

    Article  Google Scholar 

  27. Sameer FO, Abu Bakar MR (2017) Modified Kohonen network algorithm for selection of the initial centres of Gustafson-Kessel algorithm in credit scoring. Pertanika J Sci Technol 25(1):77–90

    Google Scholar 

  28. Sameer FO, Abu Bakar MR, Zaidan AA, Zaidan BB (2017) A new algorithm of modified binary particle swarm optimization based on the Gustafson-Kessel for credit risk assessment. Neural Comput Appl 31:337–346. https://doi.org/10.1007/s00521-017-3018-4

    Article  Google Scholar 

  29. Sayed GI, Hassanien AE, Azar AT (2019) Feature selection via a novel chaotic crow search algorithm. Neural Comput Appl 31(1):171–188

    Article  Google Scholar 

  30. Sayed GI, Khoriba G, Haggag MH (2018) A novel chaotic salp swarm algorithm for global optimization and feature selection. Appl Intell 48(10):3462–3481

    Article  Google Scholar 

  31. Shahbeig S, Helfroush MS, Rahideh A (2016) A fuzzy multi-objective hybrid TLBO-PSO approach to select the associated genes with breast cancer. Signal Process. https://doi.org/10.1016/j.sigpro.2016.07.035

    Article  Google Scholar 

  32. Siddiqui MK, Menendez RM, Huang X, Hussain N (2020) A review of epileptic seizure detection using machine learning classifiers. Brain Inform. https://doi.org/10.1186/s40708-020-00105-1

    Article  Google Scholar 

  33. Sridevi T, Murugan A (2014) A novel feature selection method for effective breast cancer diagnosis and prognosis. Int J Comput Appl 88(11)

  34. Tan KC, Teoh EJ, Yu Q, Goh KC (2009) Expert systems with applications a hybrid evolutionary algorithm for attribute selection in data mining. Expert Syst Appl 36(4):8616–8630. https://doi.org/10.1016/j.eswa.2008.10.013

    Article  Google Scholar 

  35. Thawkar S, Ingolikar R (2018) Classification of masses in digital mammograms using biogeography-based optimization technique. J King Saud Univ Comput Inf Sci. https://doi.org/10.1016/j.jksuci.2018.01.004

    Article  Google Scholar 

  36. Ting G, Schneeweiss S, Scranton R, Katz JN, Weinblatt ME, Young M, Avorn J, Solomon DH (2008) Development of a health care utilisation data-based index for rheumatoid arthritis severity: a preliminary study. Arthritis Res Therapy 10(4):R95

  37. Tuo S, Yong L, Deng FA, Li Y, Lin Y, Lu Q (2017) HSTLBO: a hybrid algorithm based on harmony search and teaching-learning-based optimization for complex high-dimensional optimization problems, pp 1–23

  38. Wah YB, Ibrahim N, Hamid HA, Abdul-rahman S, Fong S (2018) Feature selection methods: case of filter and wrapper approaches for maximising classification accuracy. Pertanika J Sci Technol 26(1):329–340

    Google Scholar 

  39. Wells G, Becker JC, Teng J, Dougados M, Schiff M, Smolen J, Aletaha D, Van Riel PLCM (2009) Validation of the 28-joint disease activity score (DAS28) and European league against rheumatism response criteria based on C-reactive protein against disease progression in patients with rheumatoid arthritis, and comparison with the DAS28 based on erythrocyte sedimentation rate. Ann Rheum Dis 68(6):954–960

    Article  Google Scholar 

  40. Wen J, Lai Z, Zhan Y, Cui J (2016) The L 2, 1 -norm-based unsupervised optimal feature selection with applications to action recognition. Pattern Recognit 60:515–530. https://doi.org/10.1016/j.patcog.2016.06.006

    Article  MATH  Google Scholar 

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Correspondence to Fadhaa O. Sameer.

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Sameer, F.O., Al-obaidi, M.J., Al-bassam, W.W. et al. Multi-objectives TLBO hybrid method to select the related risk features with rheumatism disease. Neural Comput & Applic 33, 9025–9034 (2021). https://doi.org/10.1007/s00521-020-05665-1

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