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Optimal stopping time of software system test via artificial neural network with fault count data
by
Begum, Momotaz
, Dohi, Tadashi
in
Algorithms
/ Architectural engineering
/ Artificial neural networks
/ Costs
/ Decision making
/ Growth models
/ Network reliability
/ Neural networks
/ Parameter estimation
/ Poisson density functions
/ Project management
/ Reliability engineering
/ Software reliability
/ Software testing
/ Testing time
2018
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Optimal stopping time of software system test via artificial neural network with fault count data
by
Begum, Momotaz
, Dohi, Tadashi
in
Algorithms
/ Architectural engineering
/ Artificial neural networks
/ Costs
/ Decision making
/ Growth models
/ Network reliability
/ Neural networks
/ Parameter estimation
/ Poisson density functions
/ Project management
/ Reliability engineering
/ Software reliability
/ Software testing
/ Testing time
2018
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Do you wish to request the book?
Optimal stopping time of software system test via artificial neural network with fault count data
by
Begum, Momotaz
, Dohi, Tadashi
in
Algorithms
/ Architectural engineering
/ Artificial neural networks
/ Costs
/ Decision making
/ Growth models
/ Network reliability
/ Neural networks
/ Parameter estimation
/ Poisson density functions
/ Project management
/ Reliability engineering
/ Software reliability
/ Software testing
/ Testing time
2018
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Optimal stopping time of software system test via artificial neural network with fault count data
Journal Article
Optimal stopping time of software system test via artificial neural network with fault count data
2018
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Overview
Purpose
The purpose of this paper is to present a novel method to estimate the optimal software testing time which minimizes the relevant expected software cost via a refined neural network approach with the grouped data, where the multi-stage look ahead prediction is carried out with a simple three-layer perceptron neural network with multiple outputs.
Design/methodology/approach
To analyze the software fault count data which follows a Poisson process with unknown mean value function, the authors transform the underlying Poisson count data to the Gaussian data by means of one of three data transformation methods, and predict the cost-optimal software testing time via a neural network.
Findings
In numerical examples with two actual software fault count data, the authors compare the neural network approach with the common non-homogeneous Poisson process-based software reliability growth models. It is shown that the proposed method could provide a more accurate and more flexible decision making than the common stochastic modeling approach.
Originality/value
It is shown that the neural network approach can be used to predict the optimal software testing time more accurately.
Publisher
Emerald Publishing Limited,Emerald Group Publishing Limited
Subject
/ Costs
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