Home > CSC-OpenAccess Library > Manuscript Information
EXPLORE PUBLICATIONS BY COUNTRIES |
EUROPE | |
MIDDLE EAST | |
ASIA | |
AFRICA | |
............................. | |
United States of America | |
United Kingdom | |
Canada | |
Australia | |
Italy | |
France | |
Brazil | |
Germany | |
Malaysia | |
Turkey | |
China | |
Taiwan | |
Japan | |
Saudi Arabia | |
Jordan | |
Egypt | |
United Arab Emirates | |
India | |
Nigeria |
A Review of Studies On Machine Learning Techniques.
Yogesh Singh, Pradeep Kumar Bhatia, Omprakash Sangwan
Pages - 70 - 84 | Revised - 15-06-2007 | Published - 30-06-2007
MORE INFORMATION
KEYWORDS
Machine Learning Techniques (MLT), Neural Networks (NN), Case Based Reasoning (CBR), Classification and Regression Trees (CART), Rule Induction, Genetic Algorithms and Genetic Programming
ABSTRACT
This paper provides an extensive review of studies related to expert estimation of
software development using Machine-Learning Techniques (MLT). Machine
learning in this new era, is demonstrating the promise of producing consistently
accurate estimates. Machine learning system effectively “learns†how to estimate
from training set of completed projects. The main goal and contribution of the
review is to support the research on expert estimation, i.e. to ease other
researchers for relevant expert estimation studies using machine-learning
techniques. This paper presents the most commonly used machine learning
techniques such as neural networks, case based reasoning, classification and
regression trees, rule induction, genetic algorithm & genetic programming for
expert estimation in the field of software development. In each of our study we
found that the results of various machine-learning techniques depends on
application areas on which they are applied. Our review of study not only
suggests that these techniques are competitive with traditional estimators on one
data set, but also illustrate that these methods are sensitive to the data on which
they are trained.
1 | Tripathya, A., Agrawalb, A., & Rathc, S. K. Classification of Sentimental Reviews Using Machine Learning Techniques. |
2 | Bhatia, S., & Attri, V. K. Estimation of Software Development Effort with Machine Learning Approaches: A Review. |
3 | Tripathy, A., Agrawal, A., & Rath, S. K. (2015). Classi?cation of Sentimental Reviews Using Machine Learning Techniques. Procedia Computer Science, 57, 821-829. |
4 | Nayebi, F., Abran, A., & Desharnais, J. M. (2015). Automated selection of a software effort estimation model based on accuracy and uncertainty. Artificial Intelligence Research, 4(2), p45. |
5 | Spamers, A. J., & Grobler, H. Real-time Face Detection and Tracking from a Non-static Video Camera. |
6 | Khan, R. A. (2014). Machine Learning: Techniques and Application. Artificial Intelligent Systems and Machine Learning, 6(5), 169-175. |
7 | Suresh Joseph, K. (2014). Genetic algorithm based hybrid imputation model for software effort estimation. |
8 | Gautam, G., & Yadav, D. (2014, August). Sentiment analysis of twitter data using machine learning approaches and semantic analysis. In Contemporary Computing (IC3), 2014 Seventh International Conference on (pp. 437-442). IEEE. |
9 | Selvakumar, L., Vivekanandan, K., & Amilan, S. (2014). New Linkage Learning Technique in Genetic Algorithm for Stock Selection Problem. International Journal of Advanced Research in Computer Science, 5(3). |
10 | Hussien, N. S., Sulaiman, S., & Shamsuddin, S. M. (2014). A Review of Intelligent Methods for Pre-fetching in Cloud Computing Environment. In Recent Advances on Soft Computing and Data Mining (pp. 647-656). Springer International Publishing. |
11 | Adly, F., Yoo, P. D., Muhaidat, S., & Al-Hammadi, Y. (2014, May). Machine-Learning-Based Identification of Defect Patterns in Semiconductor Wafer Maps: An Overview and Proposal. In Parallel & Distributed Processing Symposium Workshops (IPDPSW), 2014 IEEE International (pp. 420-429). IEEE. |
12 | Madhura, G. K., & Shivamurthy, R. C. twitter sentiment analysis for product reviews to gather information using mach ine learning. |
13 | Günüç, S. (2013). Internet Bagimliligini Yordayan Bazi Degiskenlerin Cart ve Chaid Analizleri ile Incelenmesi. Türk Psikoloji Dergisi, 28(71), 88. |
14 | Günüç, S. (2013). Internet Bagimliligini Yordayan Bazi Degiskenlerin Cart ve Chaid Analizleri ile Incelenmesi. Turk Psikoloji Dergisi, 28(71). |
15 | Priedniece, K., Nikitenko, A., Liekna, A., & Kulikovskis, G. (2013). Use of Learning Methods to Improve Kinematic Models. Applied Computer Systems, 14(1), 73-79. |
16 | Alanazi, H. O., Abdullah, A., & Al Jumah, M. (2013). A critical review for an accurate and dynamic prediction for the outcomes of traumatic brain injury based on Glasgow Outcome Scale. Journal of Medical Sciences, 13(4), 244. |
17 | Aziz, A. S., Azar, A. T., Salama, M., Hassanien, A. E., & Hanafy, S. E. O. (2013, September). Genetic algorithm with different feature selection techniques for anomaly detectors generation. In Computer Science and Information Systems (FedCSIS), 2013 Federated Conference on (pp. 769-774). IEEE. |
18 | Murtaza, M., Shah, J. H., Azeem, A., Nisar, W., & Masood, M. (2013). Structured Language Requirement Elicitation Using Case Base Reasoning. Research Journal of Applied Sciences, Engineering and Technology, 6, 23. |
19 | GETACHEW, W. application of case-based reasoning for anxiety disorder diagnosis. |
20 | Bahaidara, A. S. (2012). Algorithem and Programme for Computation of Forces Acting on Line Supports. International Journal of Computer Science and Security (IJCSS), 6(1), 53. |
21 | Chaudhary, A., Kolhe, S., & Kamal, R. (2012, September). Machine learning techniques for Mobile Intelligent Systems: A study. In 2012 Ninth International Conference on Wireless and Optical Communications Networks (WOCN). |
22 | Ingle, V. A. (2012, December). Processing of unstructured data for information extraction. In Engineering (NUiCONE), 2012 Nirma University International Conference on (pp. 1-4). IEEE. |
23 | Singh, Y., Kaur, A., Bhatia, P. K., & Sangwan, O. (2010). Predicting software development effort using artificial neural network. International Journal of Software Engineering and Knowledge Engineering, 20(03), 367-375. |
24 | Y. Singh, A. Kaur, P. K. Bhatia and O. Sangwan, “Predicting Software Development Effort Using Artificial Neural Network”, International Journal of Software Engineering and Knowledge Engineering (IJSEKE), 20(3), pp. 367-375, 2010. |
Aggarwal K.K., Yogesh Singh, A.Kaur, O.P.Sangwan "A Neural Net Based Approach to Test Oracle" ACM SIGSOFT Vol. 29 No. 4, May 2004. | |
Agnar Aamodt, Enric Plaza. "Foundational Issues, Methodological Variations, System approaches." AlCom -Artificial Intelligence Communications, IOS Press Vol. 7: 1, pp. 39-59. | |
Al Globus. "Towards 100,000 CPU Cycle-Scavenging by Genetic Algorithms." CSC at NASA Ames Research Center, September 2001. | |
Chris Bozzuto. "Machine Learning: Genetic Programming." February 2002. | |
Dr. Bonnie Morris, West Virginia University "Case Based Reasoning" AI/ES Update vol. 5 no. 1 Fall 1995. | |
Eleazar Eskin and Eric Siegel. "Genetic Programming Applied to Othello: Introducing Students to Machine Learning Research" available at http://www.cs.columbia.edu/~evs/papers/sigcsepaper. ps. | |
Gavin R. Finnie and Gerhard E. Wittig, “AI Tools for Software Development Effort Estimation”, IEEE Transaction on Software Engineering, 1996. | |
Haykin S., “Neural Networks, A Comprehensive Foundation,” Prentice Hall India, 2003. | |
Howden William E. and Eichhorst Peter. Proving properties of programs from program traces. In Tutorial: Software Testing and Validation Techniques: E Miller and W.E.howden(eds.0. new York:IEEE Computer Society Press, 1978. | |
Hsinchun Chen. "Machine Learning for Information Retrieval: Neural Networks, Symbolic Learning, and Genetic Algorithms" available at http://ai.bpa.arizona.edu/papers/mlir93/mlir93.html#318. | |
Ian Watson & Farhi Marir. "Case-Based Reasoning: A Review " available at http://www.aicbr. org/classroom/cbr-review.html. | |
Juha Hakkaarainen, Petteri Laamanen, and Raimo Rask, “ Neural Network in Specification Level Software Size Estimation”, IEEE Transaction on Software Engineering, 1993. | |
Kohonen T., “Self Organizing Maps”, 2nd Edition, Berlin: Springer- Verlag, 1997. | |
Krishnamoorthy Srinivasan and Douglas Fisher, “Machine Learning Approaches to Estimating Software Development Effort”, IEEE Transaction on Software Engineering, 1995. | |
L. K. Meisenbacher. “The Challenges of Tool Integration for Requirements Engineering.” In Proceedings of SREP’05, Paris, France, 2005. | |
Mayrhauser A. von, Anderson C. and Mraz R., “Using A Neural Network to Predict Test Case Effectiveness”’ – Procs IEEE Aerospace Applications Conference, Snowmass, CO, Feb.1995. | |
Nahid Amani, Mahmood Fathi and Mahdi Rehghan. "A Case-Based Reasoning Method for Alarm Filtering and Correlation in Telecommunication Networks" available at http://ieeexplore.ieee.org/iel5/10384/33117/01557421.pdf?arnumber=1557421. | |
Pat Langley, Stanford and Herbert A. Simon, Pittsburgh. "Application of Machine Learning and Rule Induction." available at http://cll.stanford.edu/~langley/papers/app.cacm.ps. | |
Peter Flach and Nada Lavrac. "Rule Induction" available at www.cs.bris.ac.uk/Teaching/Resources/COMSM0301/materials/RuleInductionSection.pdf. | |
Roger J. Lewis. "An Introduction to Classification and Regression Tree (CART) Analysis" Presented at the 2000 Annual Meeting of the Society for Academic Emergency Medicine in San Francisco, California. | |
Stephen M Winkler, Michael Aenzeller and Stefan Wagner. "Advances in Applying Genetic Programming to Machine Learning, Focusing on Classification Problems" available at http://www.heuristiclab.com/publications/papers/winkler06c.ps. | |
Susanne Hoche. "Active Relational Rule Learning in a Constrained Confidence-Rated Boosting Framework" PhD Thesis, Rheinische Friedrich-Wilhelms-Universitaet Bonn, Germany, December 2004. | |
Watson, I. & Gardingen, D. " A Distributed Case-Based Reasoning Application for Engineering Sales Support". In, Proc. 16th Int. Joint Conf. on Artificial Intelligence (IJCAI-99), Vol. 1: pp. 600-605, 1999. | |
Yisehac Yohannes, John Hoddinott " Classification and Regression Trees- An Introduction" International Food Policy Research Institute, 1999. | |
Yisehac Yohannes, Patrick Webb " Classification and Regression Trees" International Food Policy Research Institute, 1999. | |
Mr. Yogesh Singh
- India
Mr. Pradeep Kumar Bhatia
- India
Mr. Omprakash Sangwan
- India
sangwan_op@aiit.amity.edu
|
|
|
|
View all special issues >> | |
|
|