+353-1-416-8900REST OF WORLD
+44-20-3973-8888REST OF WORLD
1-917-300-0470EAST COAST U.S
1-800-526-8630U.S. (TOLL FREE)

Cognitive Science, Computational Intelligence, and Data Analytics. Methods and Applications with Python

  • Book

  • June 2024
  • Elsevier Science and Technology
  • ID: 5917477

Cognitive Science, Computational Intelligence, and Data Analytics: Methods and Applications with Python introduces readers to the foundational concepts of data analysis, cognitive science, and computational intelligence, including AI and Machine Learning. The book's focus is on fundamental ideas, procedures, and computational intelligence tools that can be applied to a wide range of data analysis approaches, with applications that include mathematical programming, evolutionary simulation, machine learning, and logic-based models. It offers readers the fundamental and practical aspects of cognitive science and data analysis, exploring data analytics in terms of description, evolution, and applicability in real-life problems.

The authors cover the history and evolution of cognitive analytics, methodological concerns in philosophy, syntax and semantics, understanding of generative linguistics, theory of memory and processing theory, structured and unstructured data, qualitative and quantitative data, measurement of variables, nominal, ordinals, intervals, and ratio scale data. The content in this book is tailored to the reader's needs in terms of both type and fundamentals, including coverage of multivariate analysis, CRISP methodology and SEMMA methodology. Each chapter provides practical, hands-on learning with real-world applications, including case studies and Python programs related to the key concepts being presented.

Please Note: This is an On Demand product, delivery may take up to 11 working days after payment has been received.

Table of Contents

1. Foundations of Analytics
2. Foundations of Cognitive Science
3. Data Theory and Taxonomy of Data
4. Multivariate Data Analytics and Cognitive Analytics
5. Artificial Intelligence and Machine Learning Applications in Data Analysis
6. Data Analysis Applications and Methodology

Authors

Vikas Khare Associate Professor, School of Technology, Management and Engineering NMIMS, Indore, India, Certified Energy Manager, Bureau of Energy Efficiency India. Vikas Khare, PhD, is an associate professor in the School of Technology, Management and Engineering, NMIMS, India, and is a certified energy manager in the Bureau of Energy Efficiency in India. He is a fellow member of Scholars Academic and Scientific Society, India. Dr. Khare's main research interests are renewable energy systems, data analysis, artificial intelligence, optimization techniques, game theory, and big data. Sanjeet Kumar Dwivedi Scrum Master and Senior R&D Engineer, Danfoss Power Electronics, Adjunct Professor, Curtin University, Australia. Sanjeet Kumar Dwivedi, PhD, is an adjunct professor at Curtin University, Perth, Australia and is working as a scrum master and senior R&D engineer in control engineering, application, and motor control for Danfoss Power Electronics, Graasten, Denmark since 2008, where he is conducting research on new control techniques in power electronics and motor drives. He has authored more than 40 technical papers and holds 3 international patents. Monica Bhatia School of Business Management, NMIMS, Indore, India. Monica Bhatia, PhD, is a faculty member at the School of Business Management, NMIMS, India. She holds an MBA and a PhD and is certified by NET, NCFM, and IRDA. Dr. Bhatia has extensive professional experience in training and business development within
both corporate and educational sectors, covering a wide range of areas such as renewable energy, operational management, data analysis, cognitive science, career development, marketing management, communication skills, interpersonal relations, and workplace professionalism. She has conducted life skills training for students and trainers from various nationalities and with diverse accents, and has been involved in consulting projects on e-commerce, product strategy, marketing strategy, and business processes.