Investigating the Significance of the Bellwether Effect to Improve Software Effort Prediction: Further Empirical Study

Solomon Mensah*, Jacky Keung*, Stephen G. MacDonell, Michael Franklin Bosu, Kwabena Ebo Bennin

*Corresponding author for this work

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

17 Citations (Scopus)

Abstract

Context: In addressing how best to estimate how much effort is required to develop software, a recent study found that using exemplary and recently completed projects [forming Bellwether moving windows (BMW)] in software effort prediction (SEP) models leads to relatively improved accuracy. More studies need to be conducted to determine whether the BMW yields improved accuracy in general, since different sizing and aging parameters of the BMW are known to affect accuracy. Objective: To investigate the existence of exemplary projects (Bellwethers) with defined window size and age parameters, and whether their use in SEP improves prediction accuracy. Method: We empirically investigate the moving window assumption based on the theory that the prediction outcome of a future event depends on the outcomes of prior events. Sampling of Bellwethers was undertaken using three introduced Bellwether methods (SSPM, SysSam, and RandSam). The ergodic Markov chain was used to determine the stationarity of the Bellwethers. Results: Empirical results show that 1) Bellwethers exist in SEP and 2) the BMW has an approximate size of 50 to 80 exemplary projects that should not be more than 2 years old relative to the new projects to be estimated. Conclusion: The study's results add further weight to the recommended use of Bellwethers for improved prediction accuracy in SEP.
Original languageEnglish
Pages (from-to)1176-1198
JournalIEEE Transactions on Reliability
Volume67
Issue number3
Online published14 Jun 2018
DOIs
Publication statusPublished - Sept 2018

Research Keywords

  • Bellwether effect
  • Bellwether moving window (BMW)
  • Data models
  • growing portfolio (GP)
  • Markov chains
  • Markov processes
  • Microsoft Windows
  • Predictive models
  • software effort prediction (SEP)
  • Training
  • Windows

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