SECRNov 30, 2016

A Bayesian Network Approach to Assess and Predict Software Quality Using Activity-Based Quality Models

arXiv:1611.10181v184 citationsHas Code
Originality Synthesis-oriented
AI Analysis

This work addresses software quality assessment for practitioners and researchers, but it is incremental as it builds on existing models without major breakthroughs.

The paper tackled the challenge of assessing and predicting software quality by developing a four-step approach to derive Bayesian networks from activity-based quality models, applying it to NASA and open-source data with results showing applicability but varying predictive performance based on data quality.

Context: Software quality is a complex concept. Therefore, assessing and predicting it is still challenging in practice as well as in research. Activity-based quality models break down this complex concept into concrete definitions, more precisely facts about the system, process, and environment as well as their impact on activities performed on and with the system. However, these models lack an operationalisation that would allow them to be used in assessment and prediction of quality. Bayesian networks have been shown to be a viable means for this task incorporating variables with uncertainty. Objective: The qualitative knowledge contained in activity-based quality models are an abundant basis for building Bayesian networks for quality assessment. This paper describes a four-step approach for deriving systematically a Bayesian network from an assessment goal and a quality model. Method: The four steps of the approach are explained in detail and with running examples. Furthermore, an initial evaluation is performed, in which data from NASA projects and an open source system is obtained. The approach is applied to this data and its applicability is analysed. Results: The approach is applicable to the data from the NASA projects and the open source system. However, the predictive results vary depending on the availability and quality of the data, especially the underlying general distributions. Conclusion: The approach is viable in a realistic context but needs further investigation in case studies in order to analyse its predictive validity.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes