Title of article
Impact of Parameter Tuning for Optimizing Deep Neural Network Models for Predicting Software Faults
Author/Authors
Gupta, Mansi Department of Computer Science and Engineering, BIT Mesra, Ranchi, India , Rajnish, Kumar Department of Computer Science and Engineering, BIT Mesra, Ranchi, India , Bhattacharjee, Vandana Department of Computer Science and Engineering, BIT Mesra, Ranchi, India
Pages
17
From page
1
To page
17
Abstract
Deep neural network models built by the appropriate design decisions are crucial to obtain the desired classifier performance. This is especially desired when predicting fault proneness of software modules. When correctly identified, this could help in reducing the testing cost by directing the efforts more towards the modules identified to be fault prone. To be able to build an efficient deep neural network model, it is important that the parameters such as number of hidden layers, number of nodes in each layer, and training details such as learning rate and regularization methods be investigated in detail. The objective of this paper is to show the importance of hyperparameter tuning in developing efficient deep neural network models for predicting fault proneness of software modules and to compare the results with other machine learning algorithms. It is shown that the proposed model outperforms the other algorithms in most cases.
Keywords
Predicting Software Faults , Neural Network , Optimizing Deep , Impact of Parameter , Tuning
Journal title
Scientific Programming
Serial Year
2021
Full Text URL
Record number
2611963
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