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Handbook on natural language processing for requirements engineering
紀錄類型:
書目-語言資料,印刷品 : Monograph/item
正題名/作者:
Handbook on natural language processing for requirements engineering/ edited by Alessio Ferrari, Gouri Ginde.
其他作者:
Ginde, Gouri.
出版者:
Cham :Springer Nature Switzerland : : 2025.,
面頁冊數:
xxi, 517 p. :ill., digital ; : 24 cm.;
Contained By:
Springer Nature eBook
標題:
Natural Language Processing (NLP). -
電子資源:
https://doi.org/10.1007/978-3-031-73143-3
ISBN:
9783031731433
Handbook on natural language processing for requirements engineering
Handbook on natural language processing for requirements engineering
[electronic resource] /edited by Alessio Ferrari, Gouri Ginde. - Cham :Springer Nature Switzerland :2025. - xxi, 517 p. :ill., digital ;24 cm.
1. Handbook on Natural Language Processing for Requirements Engineering: Overview -- Part I: NLP for Downstream RE Tasks -- 2. Machine Learning for Requirements Classification -- 3. Requirements Similarity and Retrieval -- 4. Natural Language Processing for Requirements Traceability -- 5. Detecting Defects in Natural Language Requirements Specifications -- 6. Automated Requirements Terminology Extraction -- 7. Automated Requirements Relations Extraction -- Part II: NLP for Specialised Types of Requirements and Artefacts -- 8. Legal Requirements Analysis: A Regulatory Compliance Perspective -- 9. Privacy Requirements Acquisition and Analysis -- 10. On the Automated Processing of User Feedback -- 11. Mining Issue Trackers: Concepts and Techniques -- 12. Automated Analysis of User Story Requirements -- Part III: NLP for RE in Practice -- 13. NLP4RE Tools: Classification, Overview, and Management -- 14. Empirical Evaluation of Tools for Hairy Natural Language Requirements Engineering Tasks -- 15. Practical Guidelines for the Selection and Evaluation of Natural Language Processing Techniques in Requirements Engineering -- 16. Using Large Language Models for Natural Language Processing Tasks in Requirements Engineering: A Systematic Guideline -- 17. Dealing with Data for RE: Mitigating Challenges while Using NLP and Generative AI.
This handbook provides a comprehensive guide on how natural language processing (NLP) can be leveraged to enhance various aspects of requirements engineering (RE), leading the reader from the exploration of fundamental concepts and techniques to the practical implementation of NLP for RE solutions in real-world scenarios. The book features contributions from researchers with both academic and industrial experience. It is organized into three parts, each focusing on different aspects of applying NLP to RE: Part I - NLP for Downstream RE Tasks delves into the application of NLP techniques to tasks that are typically part of the RE process. It includes chapters on NLP for requirements classification, requirements similarity and retrieval, requirements traceability, defect detection, and automated terminology and relations extraction. Next, Part II - NLP for Specialised Types of Requirements and Artefacts explores how NLP can be tailored to handle specific requirement types and artefacts. The chapters cover legal requirements processing, privacy requirements acquisition and analysis, user feedback intelligence, mining issue trackers, and analysis of user story requirements. Eventually, Part III - NLP for RE in Practice addresses practical applications and tools for implementing NLP in RE. It includes a chapter on the different tools that use NLP techniques for RE tasks, followed by chapters on empirical evaluation of tools, practical guidelines for selecting and evaluating NLP techniques, guidelines on using large language models (LLMs) in RE, and dealing with data challenges in RE. The book is designed for a diverse audience, including Ph.D. students, researchers, and practitioners. Ph.D. students can benefit from a comprehensive guide to the topic of NLP for RE and acquire the essential background for their studies. Researchers can identify further triggers for scientific exploration, based on the currently settled knowledge in the field. Eventually, practitioners facing challenges with NL requirements can find practical insights to enhance their RE processes using NLP.
ISBN: 9783031731433
Standard No.: 10.1007/978-3-031-73143-3doiSubjects--Topical Terms:
1254293
Natural Language Processing (NLP).
LC Class. No.: QA76.9.N38
Dewey Class. No.: 006.35
Handbook on natural language processing for requirements engineering
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1. Handbook on Natural Language Processing for Requirements Engineering: Overview -- Part I: NLP for Downstream RE Tasks -- 2. Machine Learning for Requirements Classification -- 3. Requirements Similarity and Retrieval -- 4. Natural Language Processing for Requirements Traceability -- 5. Detecting Defects in Natural Language Requirements Specifications -- 6. Automated Requirements Terminology Extraction -- 7. Automated Requirements Relations Extraction -- Part II: NLP for Specialised Types of Requirements and Artefacts -- 8. Legal Requirements Analysis: A Regulatory Compliance Perspective -- 9. Privacy Requirements Acquisition and Analysis -- 10. On the Automated Processing of User Feedback -- 11. Mining Issue Trackers: Concepts and Techniques -- 12. Automated Analysis of User Story Requirements -- Part III: NLP for RE in Practice -- 13. NLP4RE Tools: Classification, Overview, and Management -- 14. Empirical Evaluation of Tools for Hairy Natural Language Requirements Engineering Tasks -- 15. Practical Guidelines for the Selection and Evaluation of Natural Language Processing Techniques in Requirements Engineering -- 16. Using Large Language Models for Natural Language Processing Tasks in Requirements Engineering: A Systematic Guideline -- 17. Dealing with Data for RE: Mitigating Challenges while Using NLP and Generative AI.
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This handbook provides a comprehensive guide on how natural language processing (NLP) can be leveraged to enhance various aspects of requirements engineering (RE), leading the reader from the exploration of fundamental concepts and techniques to the practical implementation of NLP for RE solutions in real-world scenarios. The book features contributions from researchers with both academic and industrial experience. It is organized into three parts, each focusing on different aspects of applying NLP to RE: Part I - NLP for Downstream RE Tasks delves into the application of NLP techniques to tasks that are typically part of the RE process. It includes chapters on NLP for requirements classification, requirements similarity and retrieval, requirements traceability, defect detection, and automated terminology and relations extraction. Next, Part II - NLP for Specialised Types of Requirements and Artefacts explores how NLP can be tailored to handle specific requirement types and artefacts. The chapters cover legal requirements processing, privacy requirements acquisition and analysis, user feedback intelligence, mining issue trackers, and analysis of user story requirements. Eventually, Part III - NLP for RE in Practice addresses practical applications and tools for implementing NLP in RE. It includes a chapter on the different tools that use NLP techniques for RE tasks, followed by chapters on empirical evaluation of tools, practical guidelines for selecting and evaluating NLP techniques, guidelines on using large language models (LLMs) in RE, and dealing with data challenges in RE. The book is designed for a diverse audience, including Ph.D. students, researchers, and practitioners. Ph.D. students can benefit from a comprehensive guide to the topic of NLP for RE and acquire the essential background for their studies. Researchers can identify further triggers for scientific exploration, based on the currently settled knowledge in the field. Eventually, practitioners facing challenges with NL requirements can find practical insights to enhance their RE processes using NLP.
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