Three-Stage Adjusted Regression Forecasting (TSARF) for Software Defect
Prediction
- URL: http://arxiv.org/abs/2401.17545v1
- Date: Wed, 31 Jan 2024 02:19:35 GMT
- Title: Three-Stage Adjusted Regression Forecasting (TSARF) for Software Defect
Prediction
- Authors: Shadow Pritchard, Bhaskar Mitra, Vidhyashree Nagaraju
- Abstract summary: Nonhomogeneous Poisson process (NHPP) SRGM are the most commonly employed models.
Increased model complexity presents a challenge in identifying robust and computationally efficient algorithms.
- Score: 5.826476252191368
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Software reliability growth models (SRGM) enable failure data collected
during testing. Specifically, nonhomogeneous Poisson process (NHPP) SRGM are
the most commonly employed models. While software reliability growth models are
important, efficient modeling of complex software systems increases the
complexity of models. Increased model complexity presents a challenge in
identifying robust and computationally efficient algorithms to identify model
parameters and reduces the generalizability of the models. Existing studies on
traditional software reliability growth models suggest that NHPP models
characterize defect data as a smooth continuous curve and fail to capture
changes in the defect discovery process. Therefore, the model fits well under
ideal conditions, but it is not adaptable and will only fit appropriately
shaped data. Neural networks and other machine learning methods have been
applied to greater effect [5], however limited due to lack of large samples of
defect data especially at earlier stages of testing.
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