Using Support Vector Machines as a Binary Classifier


Цветков, Димитър (2005) Using Support Vector Machines as a Binary Classifier Internaional Conference on Computer Systems and Technlologies – CompSysTech'2005


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Природни науки, математика и информатика Математика
Природни науки, математика и информатика Информатика и компютърни науки

Natural sciences, mathematics and informatics Mathematics
Natural sciences, mathematics and informatics Informatics and Computer Science

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 Димитър Цветков

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9. Hosseinzadeh, A., & Edalatpanah, S. A. (2017). Classification Techniques in Data Mining: Classical and Fuzzy Classifiers. In Emerging Research on Applied Fuzzy Sets and Intuitionistic Fuzzy Matrices (pp. 153-188). IGI Global.

10. Hosseinzadeh, A., Edalatpanah, S.A. Classification techniques in data mining: Classical and fuzzy classifiers (2016) Emerging Research on Applied Fuzzy Sets and Intuitionistic Fuzzy Matrices, pp. 153-188.

8. Kravvaris, D., Kermanindis, K.L. An analysis of online educational videos in social media based on verbal content (2016) IISA 2015 - 6th International Conference on Information, Intelligence, Systems and Applications.

7. Jia, J.W., Mareboyana, M.: Undergraduate Student Retention Prediction Using Wavelet Decomposition, Transactions on Engineering Technologies, 2015 – Springer

5. Jia, J.W., Mareboyana, M.: Undergraduate Student Retention Using Wavelet Decomposition, Lecture Notes in Engineering and Computer Science: Proceedings of The World Congress on Engineering 2014, WCE 2014, pp. 562–566. London 2–4 July 2014.

6. Ji-Wu Jia, Manohar Mareboyana. Predictive Models for Undergraduate Student Retention Using Machine Learning Algorithms. Transactions on Engineering Technologies 2014, pp 315-329.

2. Bengalur, M.D. Human activity recognition using body pose features and support vector machine. Advances in Computing, Communications and Informatics (ICACCI), 2013 International Conference.

3. Bumbacher, E., Sandes, A., Deutsch, A. & Blikstein, P. (2013). Student Coding Styles as Predictors of Help-Seeking Behavior. In Lane, H.Chad and Yacef, Kalina and Mostow, Jack and Pavlik, Philip (Ed.), Artificial Intelligence in Education (Vol. 7926, pp. 856 – 859). Springer Berlin Heidelberg.

4. Jia, J.W., Mareboyana, M.: Machine Learning Algorithms and Predictive Models for Undergraduate Student Retention, Lecture Notes in Engineering and Computer Science: Proceedings of The World Congress on Engineering and Computer Science 2013, WCECS 2013, pp. 222–227. San Francisco 23–25 Oct 2013

1. L. Petterle. A computational analysis of optimization models for support vector machines. Master's thesis, University of Padova, Engineering School, 2012.

Научният архив поддържа инициативата за отворен достъп OAI 2.0 с начален адрес: http://da.uni-vt.bg/oai2/