References
- T.E. Copeland, & J.F. Weston, Asset pricing, Finance, London, 1989.
- E.A. Ashley, A. Pyae Phyo, C.J. Woodrow, Malaria, Lancet. 391 (2018), 1608-1621. doi:10.1016/S0140-6736(18)30324-6
- R.N. Rabinovich, C. Drakeley, A.A. Djimde, B.F. Hall, S.I. Hay, J. Hemingway, D.C. Kaslow, A. Noor, F. Okumu, R. Steketee, M. Tanner, T.N.C. Wells, M.A. Whittaker, E.A. Winzeler, D.F. Wirth, K. Whitfield, P.L. Alonso, malERA: An updated research agenda for malaria elimination and eradication, PLoS. Med. 14 (2017), e1002456. doi: 10.1371/journal.pmed.1002456
- J.A. Garrido-Cardenas, L. Gonzalez-Ceron, F. Manzano-Agugliaro, C. Mesa-Valle, Plasmodium genomics: an approach for learning about and ending human malaria, Parasitol. Res. 118 (2018), 1-27. doi: 10.1007/s00436-018-6127-9.
- M. Bharati, & Ramageri, Bharati, Data mining techniques and applications, Indian Journal of Computer Science and Engineering 1 (2010), 301-305.
- Antonie, Maria-Luiza, and Osmar R. Zaiane, Mining positive and negative association rules: An approach for confined rules, University of Alberta, European Conference on Principles of Data Mining and Knowledge Discovery, Springer, Berlin, Heidelberg, 2004.
- Srinivas Konda, & B. Rani, & Govardhan, Applications of Data Mining Techniques in Healthcare and Prediction of Heart Attacks, International Journal on Computer Science and Engineering 02 (2010), 250-255.
- Irina Rish, An empirical study of the naive Bayes classifier, IJCAI 2001 workshop on empirical methods in artificial intelligence 3 (2001), 41-46
- Leon Bottou, Stochastic gradient descent tricks, Neural networks: Tricks of the trade, Springer, Berlin, Heidelberg, 2012.
- Sumner, Marc, Eibe Frank, and Mark Hall, Speeding up logistic model tree induction, European conference on principles of data mining and knowledge discovery, Springer, Berlin, Heidelberg, 2005.
- S.S. Nikam, A Comparative S tudy of Classification Techniques in Data Mining Algorithms, Oriental journal of computer science and technology 8 (2015), 13-19.
- Boris Mirkin, Mathematical classification and clustering, Springer Science & Business Media, Vol. 11, London, 1996.
- Suzan Wedyan, Review and Comparison of Associative Classification Data Mining Approaches, International journal of Industrial and Manufacturing Engineering 8 (2014), 34-45.
- Hussain, Sadiq, et al., Classification, clustering and association rule mining in educational datasets using data mining tools: A case study, Computer Science On-line Conference, Springer, Cham, 2018.
- Ma, Bing Liu Wynne Hsu Yiming, Bing Liu, and Yiming Hsu, Integrating classification and association rule mining, Proceedings of the fourth international conference on knowledge discovery and data mining, AAI Press, New york, 1998.
- Pearl, Judea, Bayesian networks, Handbook of Brain Theory and Neural Networks, MA: MIT Press, Campridge, 2011, 157-160.
- Zhang, Zhengyou, et al., Comparison between geometry-based and gabor-wavelets-based facial expression recognition using multi-layer perceptron, Proceedings Third IEEE International Conference on Automatic face and gesture recognition, 1998.
- Gastaut, Henri, and B. Zifkin, Classification of the epilepsies: Drugs for Control of Epilepsy: Actions on Neuronal Networks Involved in Seizure Disorders, T &F, CRC Press, Boca Raton, 2019.
- Mahmood, Y. Deeman, and Mohammed A. Hussein, Intrusion detection system based on K-star classifier and feature set reduction, International Organization of Scientific Research Journal of Computer Engineering 15 (2013), 107-112.