Implementation of Machine Learning Techniques in Software Reliability: A framework

2019 International Conference on Automation, Computational and Technology Management (ICACTM)(2019)

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摘要
In this paper review of existing literature in the field of software reliability models based on machine learning techniques presented. Software reliability is very useful tool in determining the software quality. By using machine learning techniques for getting unhidden parameters affecting software fault prediction for exploring various parameters leading to obsoleteness of software by presenting category of papers of software reliability, software fault prediction, software trustworthiness, software reusability, using machine learning techniques based on statistical inferences which could predict useful pattern on hidden data of faulty software database of empirical datasets related to software testing. After studying plenary relevant papers on faults generated during fault removal, faults already present, we proposed a novel approach based on identifying most relevant parameter affecting the software reliability using Machine Learning Techniques.
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关键词
Software Reliability,Intelligent Software,Machine Learning Techniques,Faults,Failures,Feature Selection
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