References
[1]. Saduf, and Mohd Arif Wani, (2013). “Comparative
Study of Back Propagation Learning Algorithms for Neural Networks”. International Journal of Advanced Research in
Computer Science and Software Engineering, Vol. 3, No.
12, pp. 1151–1156.
[2]. Shao, H., and Zheng, H., (2009). “A new BP algorithm
with adaptive momentum for FNNs training”. In: GCIS,
Xiamen, China, pp. 16–20.
[3]. Rehman, M.Z., Nawi, N.M., and Ghazali, M.I, (2011).
“Noise-Induced Hearing Loss (NIHL) prediction in humans
using a modified back propagation neural network”.
International Journal on Advanced Science, Engineering
and Information Technology, Vol. 1, No. 2, pp. 185–189.
[4]. Swanston, D.J., Bishop, J.M., and Mitchell, R.J, (1994).
“Simple adaptive momentum: New algorithm for training
multilayer perceptions”. J. Electronic Letters, Vol. 30, No.
18, pp. 1498–1500.
[5]. Mitchell, R.J., (2008). “On simple adaptive
momentum”. In: CIS 2008, London, United Kingdom, pp.
1–06.
[6]. Xindong Wu, Vipin Kumar, J. Ross Quinlan, Joydeep
Ghosh, Qiang Yang, Hiroshi Motoda, Geoffrey J.
McLachlan, Angus Ng, Bing Liu, Philip S. Yu, Zhi-Hua Zhou,
Michael Steinbach, David J. Hand, and Dan Steinberg,
(2008). “Top 10 algorithms in data mining”. Knowledge
Information System, Vol. 14, No. 1, pp. 1–37.
[7]. Zhang J, Kang D.K, Silvescu A, and Honavar V. (2006).
“Learning accurate and concise Naïve Bayes classifiers
from attribute value taxonomies and data”. Knowledge
Information System, Vol. 9, No. 2, pp. 157–179.
[8]. Dr. Yusuf Perwej, (2015). “An Evaluation of Deep
Learning Miniature Concerning in Soft Computing”.
International Journal of Advanced Research in
Computer and Communication Engineering, Vol. 4, No.
2, pp. 10-16.
[9]. X. Glorot, A. Bordes, and Y. Bengio, (2011). “Domain
adaptation for large-scale sentiment classification: A
Deep Learning approach”. International Conference on
Machine Learning (ICML), pp. 513-520.
[10]. Li Deng, (2013). “Three Classes of Deep Learning
Architectures and their applications: A Tutorial Survey”.
APSIPA Transactions on Signal and Information
Processing.
[11]. J. Sharmila, and A. Subramani, (2016). “A Comparative
Analysis of Web Information Extraction Techniques Deep
Learning vs. Naïve Bayes vs. Back Propagation Neural
Networks in Web Document Extraction”. ICTACT Journal on
Soft Computing, ISSN 0976-6561,Vol. 6, No. 2, pp. 1123-
1129.