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Validity, Reliability, and Significance Empirical Methods for NLP and Data Science, 2nd Edition - Stefan Riezler, Michael Hagmann 2024 PDF | EPUB Springer BOOKS
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Validity, Reliability, and Significance Empirical Methods for NLP and Data Science, 2nd Edition
Author: Stefan Riezler, Michael Hagmann
Year: 2024
Pages: 179
Format: PDF | EPUB
File size: 25.7 MB
Language: ENG



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Book Description: Validity Reliability and Significance Empirical Methods for NLP and Data Science, 2nd Edition Author: [Insert Author Name(s) 2024 Pages: 179 Springer Summary: In this groundbreaking book, [insert author name(s)] delve into the intricacies of empirical methods for Machine Learning, specifically focusing on their applications in Natural Language Processing (NLP) and Data Science. The authors tackle the critical issues of validity, reliability, and significance, providing readers with practical solutions based on statistical methodology to overcome these challenges. This second edition boasts updated content, including a new hands-on chapter that demonstrates how to apply the presented techniques in real-world scenarios. Plot: The story begins with an introduction to the importance of understanding the evolution of technology and its impact on modern knowledge development. As technology continues to advance at an unprecedented pace, it is crucial for humanity to develop a personal paradigm for perceiving this process. The authors emphasize the need for a comprehensive approach to ensure the survival of our species and the unity of warring states.
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