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A Review of Studies On Machine Learning Techniques.
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International Journal of Computer Science and Security (IJCSS)
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Volume:  1    Issue:  1
Pages:  1-96
Publication Date:   June 2007
ISSN (Online): 1985-1553
Pages 
70 - 84
Author(s)  
 
Published Date   
30-06-2007 
Publisher 
CSC Journals, Kuala Lumpur, Malaysia
ADDITIONAL INFORMATION
Keywords   Abstract   References   Cited by   Related Articles   Collaborative Colleague
 
KEYWORDS:   Machine Learning Techniques (MLT), Neural Networks (NN), Case Based Reasoning (CBR), Classification and Regression Trees (CART), Rule Induction, Genetic Algorithms and Genetic Programming 
 
 
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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. 
 
 
 
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1 Y. Singh, P. K. Bhatia and O. Sangwan, “Software Reusability Assessment Using Soft Computing Techniques”, Newsletter, ACM SIGSOFT Software Engineering Notes archive, 36 (1), January 2011.
2 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.
 
 
 
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Yogesh Singh : Colleagues
Pradeep Kumar Bhatia : Colleagues
Omprakash Sangwan : Colleagues  
 
 
 
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