Machine Learning Algorithms and Applications: A Survey
AUTHORS
Wei Liu,Harbin University of Commerce, Harbin, China
ABSTRACT
An extensive number of strategies have been created so far to tell the assorted variety of machine learning. Machine learning is classified into regulated, unsupervised and support adapting. Every case in given informational index utilized by Machine learning calculations is spoken to same arrangement of highlights. On premise of name of examples it is partitioned into classification. In this audit paper our primary spotlight is on Supervised, unsupervised learning strategies and its execution parameters.
KEYWORDS
IEEE Transactions, machine learning, supervised learning, unsupervised learning, reinforcement learning, LATEX, template.
REFERENCES
[1] Sunpreet Kaur et. al., “A Survey on Machine Learning Algorithms”, International Journal of Innovative Research in Advanced Engineering (IJIRAE), Vol.3, No.11, Pp.6-14.
[2] J. M. Kalyan Roy, “Image similarity measure using color histogram, color coherence vector, and sobel method,” vol. Volume2 Issue 1. International Journal of Science and Research (IJSR), India Online ISSN: 2319-7064, January (2013)
[3] A. Smola and S. Vishwanathan, Introduction to Machine Learning. United Kingdom at the University Press,
[4] Cambridge, October 1, (2010)
[5] [Online]. Available: www.analyticsvidhya.com
[6] W. Gerstner, Supervised learning for neural networks: a tutorial with JAAv exercises.
[7] P. breiman L, friedman J.H., “Classification and regression trees.” Belmont CA Wadsworth International group,
[8] 1984. B. C. . U. P.E.tgoff, “Multivariate decision trees:machine learning,” no. 19, (1995), pp. 45–47.
[9] 6. K. M. M. Y. Dietterich T.G., “Applying the weak learning framework to understand and improve c4.5,” no. pp 96-104, sanfrancisco:morgan
[10] Kufmann. Proceeding of the 13th international conference on Machine Learning, (1996)
[11] H. L. C. Chai, K.; H. T. Hn, “Bayesian online classifiers for text classification and filtering.” Proceedings of the 25th annual
[12] International ACM SIGIR conference on Research and Development in Information Retrieval,, August (2002), pp. 97–104.