000 02554nam a2200229 4500
003 APU
005 20230626103020.0
008 200227b2019 ||||| |||| 00| 0 eng d
050 _aPM-32-14
100 0 _aPARVEENA SANDRASEGARAN (TP039382)
_945476
245 1 0 _aENHANCING SOFTWARE QUALITY USING ARTIFICIAL NEURAL NETWORKS TO SUPPORT SOFTWARE REFACTORING /
_cPARVEENA SANDRASEGARAN.
260 _aKuala Lumpur :
_bAsia Pacific University,
_c2019.
300 _axiv, 45 pages :
_billustrations ;
_c30 cm.
502 _aA thesis submitted in fulfilment of the requirements for the award of the degree of MSc. in Software Engineering (UCMF1808BSE).
520 _aCurrent trends of software refactoring involve tools and techniques to eliminate code smells that hinder the software from achieving quality goals. This is carried out manually as the developer is required to analyse the system in order to identify how a particular quality attribute is being affected. This approach to software development is inefficient as a majority of software engineers lack this skill and it prolongs the time allocated for the software’s implementation and maintenance. This dissertation outlines the need for Artificial Neural Networks (ANN) to support software refactoring in order to enhance the system’s quality. This justification is emphasized by means of illustrating the issues that arise when software quality is affected by the presence of code smells that have been overlooked by the developers. By adhering to a research methodology that comprises of SEVEN major phases, an ANN model is able to measure software quality in terms of efficiency, maintainability, and reusability. This calculation is based on inputs that are generated through SciTools whereby an application is decomposed into metric parameters such as Cyclomatic Complexity (CC). The results of the quality of ELEVEN JAVA projects were quantified in order to further analyse patterns of code smells; this provides an insight on how the model may be utilized to enhance software quality. Furthermore, the performance of the model is evaluated relative to other Machine Learning (ML) models.
650 0 _aComputer software
_945477
_xDevelopment.
650 0 _aSoftware refactoring.
_946691
650 0 _aNeural networks (Computer science).
_946653
700 0 _aDr. Sivakumar Vengusamy
_eSupervisor.
_948429
856 4 0 _uhttps://cas.apiit.edu.my/cas/login?service=https://library.apu.edu.my/apres/
_yAvailable in APres
_z- Requires login to view full text.
942 _2lcc
_cMasters Theses
999 _c383358
_d383358