A Non-Parametric Software Reliability Modeling Approach by Using Gene Expression Programming
Created by W.Langdon from
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- @Article{journals/jise/LiLZH12,
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author = "Haifeng Li and Minyan Lu and Min Zeng and
Bai-Qiao Huang",
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title = "A Non-Parametric Software Reliability Modeling
Approach by Using Gene Expression Programming",
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journal = "Journal of Information Science and Engineering",
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year = "2012",
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volume = "28",
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number = "6",
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pages = "1145--1160",
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month = nov,
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keywords = "genetic algorithms, genetic programming, Gene
Expression Programming, SBSE, software reliability
modelling, non-parametric model, machine learning,
software reliability",
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bibdate = "2012-10-31",
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bibsource = "DBLP,
http://dblp.uni-trier.de/db/journals/jise/jise28.html#LiLZH12",
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URL = "http://www.iis.sinica.edu.tw/page/jise/2012/201211_10.html",
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size = "16 pages",
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abstract = "Software reliability growth models (SRGMs) are very
important for estimating and predicting software
reliability. However, because the assumptions of
traditional parametric SRGMs (PSRMs) are usually not
consistent with the real conditions, the prediction
accuracy of PSRMs are hence not very satisfying in most
cases. In contrast to PSRMs, the non-parametric SRGMs
(NPSRMs) which use machine learning (ML) techniques,
such as artificial neural networks (ANN), support
vector machine (SVM) and genetic programming (GP), for
reliability modelling can provide better prediction
results across various projects. Gene Expression
Programming (GEP) which is a new evolutionary algorithm
based on Genetic algorithm (GA) and GP, has been
acknowledged as a powerful ML and widely used in the
field of data mining. Thus, we apply GEP into
non-parametric software reliability modelling in this
paper due to its unique and pretty characters, such as
genetic encoding method, translation process of
chromosomes. This new GEP-based modelling approach
considers some important characters of reliability
modelling in several main components of GEP, i.e.
function set, terminal criteria, fitness function, and
then obtains the final NPSRM (GEP-NPSRM) by training on
failure data. Finally, on several real failure
data-sets based on time or coverage, four case studies
are proposed by respectively comparing GEP-NPSRM with
several representative PSRMs, NPSRMs based on ANN, SVM
and GP in the form of fitting and prediction power
which show that compared with the comparison models,
the GEP-NPSRM provides a significantly better power of
reliability fitting and prediction. In other words, the
GEP is promising and effective for reliability
modelling. So far as we know, it is the first time that
GEP is applied into constructing NPSRM.",
- }
Genetic Programming entries for
Haifeng Li
Minyan Lu
Min Zeng
Bai-Qiao Huang
Citations