Info: Zenodo’s user support line is staffed on regular business days between Dec 23 and Jan 5. Response times may be slightly longer than normal.

Published July 13, 2018 | Version 0.10.1
Software Open

Artifact: Quality Models Inside Out: Interactive Visualization of Software Metrics by Means of Joint Probabilities

Description

Abstract—Assessing software quality, in general, is hard; each metric has a different interpretation, scale, range of values, or measurement method. Combining these metrics automatically is especially difficult, because they measure different aspects of software quality, and creating a single global final quality score limits the evaluation of the specific quality aspects and trade-offs that exist when looking at different metrics. We present a way to visualize multiple aspects of software quality. In general, software quality can be decomposed hierarchically into characteristics, which can be assessed by various direct and indirect metrics. These characteristics are then combined and aggregated to assess the quality of the software system as a whole. We introduce an approach for quality assessment based on joint distributions of metrics values. Visualizations of these distributions allow users to explore and compare the quality metrics of software systems and their artifacts, and to detect patterns, correlations, and anomalies. Furthermore, it is possible to identify common properties and flaws, as our visualization approach provides rich interactions for visual queries to the quality models’ multivariate data. We evaluate our approach in two use cases based on: 30 real-world technical documentation projects with 20,000 XML documents, and an open source project written in Java with 1000 classes. Our results show that the proposed approach allows an analyst to detect possible causes of bad or good quality.

Notes

The artifact is a VirtualBox virtual machine (VM). Part of this bundle is a file with instructions. Please read those first.

Files

instructions.pdf

Files (1.2 GB)

Name Size Download all
md5:3071719fd6b0df964e4a5410f7bb419d
1.2 GB Download
md5:be62576788bc10a326b84afe34a14d29
134.2 kB Preview Download
md5:d48229c68710c7e4582d23f99196180c
14.7 MB Preview Download