Determining Context Factors for Hybrid Development Methods with Trained Models.

Research output: Chapter in book/report/conference proceedingConference contributionResearchpeer review

Authors

  • Jil Klünder
  • Dzejlana Karajic
  • Paolo Tell
  • Oliver Karras
  • Christian Münkel
  • Jürgen Münch
  • Stephen G. MacDonell
  • Regina Hebig
  • Marco Kuhrmann

Research Organisations

External Research Organisations

  • University of Passau
  • IT University of Copenhagen
  • Reutlingen University
  • Auckland University of Technology
  • University of Gothenburg
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Details

Original languageEnglish
Title of host publicationSoftware Engineering 2021
EditorsAnne Koziolek, Ina Schaefer, Christoph Seidl
Place of PublicationBonn
Pages65-66
Number of pages2
ISBN (electronic)978-3-88579-704-3
Publication statusPublished - 2021

Publication series

NameGI-Edition. Proceedings
ISSN (electronic)1617-5468

Abstract

Selecting a suitable development method for a specific project context is one of the most challenging activities in process design. To extend the so far statistical construction of hybrid development methods, we analyze 829 data points to investigate which context factors influence the choice of methods or practices. Using exploratory factor analysis, we derive five base clusters consisting of up to 10 methods. Logistic regression analysis then reveals which context factors have an influence on the integration of methods from these clusters in the development process. Our results indicate that only a few context factors including project/product size and target application domain significantly influence the choice. This summary refers to the paper “Determining Context Factors for Hybrid Development Methods with Trained Models”. This paper was published in the proceedings of the International Conference on Software and System Process in 2020.

Keywords

    Hybrid Development Method, Software Process, Trained Models

ASJC Scopus subject areas

Cite this

Determining Context Factors for Hybrid Development Methods with Trained Models. / Klünder, Jil; Karajic, Dzejlana; Tell, Paolo et al.
Software Engineering 2021. ed. / Anne Koziolek; Ina Schaefer; Christoph Seidl. Bonn, 2021. p. 65-66 (GI-Edition. Proceedings).

Research output: Chapter in book/report/conference proceedingConference contributionResearchpeer review

Klünder, J, Karajic, D, Tell, P, Karras, O, Münkel, C, Münch, J, MacDonell, SG, Hebig, R & Kuhrmann, M 2021, Determining Context Factors for Hybrid Development Methods with Trained Models. in A Koziolek, I Schaefer & C Seidl (eds), Software Engineering 2021. GI-Edition. Proceedings, Bonn, pp. 65-66. https://doi.org/10.18420/SE2021_21
Klünder, J., Karajic, D., Tell, P., Karras, O., Münkel, C., Münch, J., MacDonell, S. G., Hebig, R., & Kuhrmann, M. (2021). Determining Context Factors for Hybrid Development Methods with Trained Models. In A. Koziolek, I. Schaefer, & C. Seidl (Eds.), Software Engineering 2021 (pp. 65-66). (GI-Edition. Proceedings).. https://doi.org/10.18420/SE2021_21
Klünder J, Karajic D, Tell P, Karras O, Münkel C, Münch J et al. Determining Context Factors for Hybrid Development Methods with Trained Models. In Koziolek A, Schaefer I, Seidl C, editors, Software Engineering 2021. Bonn. 2021. p. 65-66. (GI-Edition. Proceedings). doi: 10.18420/SE2021_21
Klünder, Jil ; Karajic, Dzejlana ; Tell, Paolo et al. / Determining Context Factors for Hybrid Development Methods with Trained Models. Software Engineering 2021. editor / Anne Koziolek ; Ina Schaefer ; Christoph Seidl. Bonn, 2021. pp. 65-66 (GI-Edition. Proceedings).
Download
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