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Data Science and Cases in Sustainability : Pattern Recognition and Machine Learning / by Ashish Ghosh.

Springer Nature - Springer Mathematics and Statistics (R0) eBooks 2025 English International Available online

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Format:
Book
Author/Creator:
Ghosh, Ashish.
Series:
Mathematics for Sustainable Developments, 3004-9024
Language:
English
Subjects (All):
Artificial intelligence--Data processing.
Artificial intelligence.
Quantitative research.
Machine learning.
Image processing--Digital techniques.
Image processing.
Computer vision.
Data Science.
Data Analysis and Big Data.
Machine Learning.
Computer Imaging, Vision, Pattern Recognition and Graphics.
Local Subjects:
Data Science.
Data Analysis and Big Data.
Machine Learning.
Computer Imaging, Vision, Pattern Recognition and Graphics.
Physical Description:
1 online resource (0 pages)
Edition:
1st ed. 2025.
Place of Publication:
Singapore : Springer Nature Singapore : Imprint: Springer, 2025.
Summary:
This book discusses the fascinating world of data science and cases in sustainability focusing on topics related to pattern recognition and machine learning, emphasizing applications that directly address topics related to SDG 9 (Industry, Innovation and Infrastructure). Recognizing the sustainable applications of big data, this text emphasizes the shift from traditional statistical analyses to more sophisticated methods. Each of these techniques—pattern recognition and machine learning—plays a crucial role in extracting hidden knowledge from vast amount of data. Targeted to students, researchers and professionals, it highlights the multidisciplinary and sustainable nature of the field and showcasing real-world applications and equips the readers to navigate the data-driven future. The first of the two volumes, the book highlights the multidisciplinary nature of data science in the fields of computer science, statistics, physics and economics. It meticulously guides its readers through the data science workflow, covering data collection, preparation, storage, analysis, management and visualization. It highlights specific techniques and algorithms used in each of the above-mentioned stages and offers explanations of major learning mechanisms: dimensionality reduction, classification, clustering and outlier analysis. Additionally, it sheds light on the modern field of deep learning and unfolds the complexity of its mechanism with explanation. Case studies showcase the practical applications and successes of data science across various domains.
Contents:
Chapter 1. Evolution of Data Science
Chapter 2. LearningDimensionality Reduction
Chapter 3. Types of Data
Chapter 4. Pre-processing of Data
Chapter 5. Dimensionality Reduction
Chapter 6. Pattern Recognition System
Chapter 7. Classification
Chapter 8. Classifiers
Chapter9. Combination of Classifiers
Chapter10. Clustering
Chapter 11. Clustering Algorithms
Chapter 12. Outliers
Chapter 13. Fuzzy Set Theoretic Approach to Pattern Recognition
Chapter 14. Rule of Thumb
Chapter 15. Artificial Neural Networks
Chapter 16. Multilayer Perceptron
Chapter 17. Evolutionary Computing for Machine Learning
Chapter 18. Support Vector Machine
Chapter 19. Kernel Machines
Chapter 20. Extreme Learning Machines
Chapter 21. Deep Learning.
Notes:
Description based on publisher supplied metadata and other sources.
ISBN:
981-9683-62-9
9789819683628
OCLC:
1569920088

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