American Journal of Operations Research

Volume 12, Issue 3 (May 2022)

ISSN Print: 2160-8830   ISSN Online: 2160-8849

Google-based Impact Factor: 0.84  Citations  

Reliability Assessment Tool Based on Deep Learning and Data Preprocessing for OSS

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DOI: 10.4236/ajor.2022.123007    141 Downloads   790 Views  Citations

ABSTRACT

Recently, many open source software (OSS) developed by various OSS projects. Also, the reliability assessment methods of OSS have been proposed by several researchers. Many methods for software reliability assessment have been proposed by software reliability growth models. Moreover, our research group has been proposed the method of reliability assessment for the OSS. Many OSS use bug tracking system (BTS) to manage software faults after it released. It keeps a detailed record of the environment in terms of the faults. There are several methods of reliability assessment based on deep learning for OSS fault data in the past. On the other hand, the data registered in BTS differences depending on OSS projects. Also, some projects have the specific collection data. The BTS has the specific collection data for each project. We focus on the recorded data. Moreover, we investigate the difference between the general data and the specific one for the estimation of OSS reliability. As a result, we show that the reliability estimation results by using specific data are better than the method using general data. Then, we show the characteristics between the specified data and general one in this paper. We also develop the GUI-based software to perform these reliability analyses so that even those who are not familiar with deep learning implementations can perform reliability analyses of OSS.

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Miyamoto, S. , Tamura, Y. and Yamada, S. (2022) Reliability Assessment Tool Based on Deep Learning and Data Preprocessing for OSS. American Journal of Operations Research, 12, 111-125. doi: 10.4236/ajor.2022.123007.

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