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논문검색

Applying Machine learning for configuring Agile Methods

초록

영어

Situational method for satisfying organisation configuration definitions has become an important activity for many modern organisations. In the last few decades many situational method models have been developed but no model has proved to be successful at effectively deliver the customized light-weight methods fulfilling the organisation requirements. The paper introduces an Agile Method engineering approach to find the degree of suitability of agile methods for a particular situation. The introduced process uses associative clustering for finding the cluster of appropriate methods against the organisational requirements-in-hand. The specially designed fuzzy logic controller is used to extract the most appropriate methods from the cluster of appropriate methods. Fuzzy logic controller works in coordination with the databases that have been formed using the previous results and is being trained with the new knowledge. Finally two practical case studies have been discussed to describe how these concepts are applied in practice with industry specified requirements and results are being explored.

목차

Abstract
 1. Introduction
 2. Basic Concepts of the Process
  2.1 Defined Requirement
  2.2 Method Configuration
  2.3 Situated Agile Method Formed
 3. The Agile Method Engineering Process
  3.1. Selection Sub-Process
  3.2. Configuration Process
 4. Empirical Grounding: The Illustrations
 5. Conclusion
 References

저자정보

  • Rinky Dwivedi Delhi Technological University, New Delhi, INDIA
  • Daya Gupta Delhi Technological University, New Delhi, INDIA

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