Application of Machine Learning Techniques for Stastical Analysis of Software Reliability Data Sets

Selecting a right data set for right problem became a very big issue. Most of the researches doesn't know what actually a dataset and how to select a suitable dataset for their problem. In this paper we are giving a brief explanation of datasets and applying Software reliability data sets and machine learning techniques for stastical analysis under MINITAB.

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