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Exploratory Data Analytics for Healthcare

Englisch · Taschenbuch

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Beschreibung

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Exploratory data analysis helps to recognize natural patterns hidden in the data. This book describes the tools for hypothesis generation by visualizing data through graphical representation and provides insight into advanced analytics concepts in an easy way.

Inhaltsverzeichnis










Chapter 1. Visual Analytics: Scopes & Challenges. Chapter 2. Statistical Methods and Applications: A Comprehensive Reference for the Healthcare Industry. Chapter 3. Machine Learning Algorithms for Healthcare Data Analytics. Chapter 4. A Review of Challenges and Opportunities in Machine Learning for Healthcare. Chapter 5. Digitalizing the Health Records Using Machine Learning Algorithms. Chapter 6. Interactive Visualization for Understanding and Analyzing Medical Data. Chapter 7. Heart Disease Prediction Using Tableau. Chapter 8. A Deep Learning Framework Using AlexNet for Early Detection of Pancreatic Cancer. Chapter 9. Applications of the Map-Reduce Programming Framework to Clinical Big Data Analysis: Current Landscape and Future Trends. Chapter 10. An Investigation of Different Machine Learning Approaches for Healthcare Analytics. Chapter 11. The Potential of Machine Learning for Clinical Predictive Analytics. Chapter 12. Predictive Analytics in Healthcare Using Machine Learning Tools and Techniques. Chapter 13. A Collective Study of Machine Learning (ML) Algorithms and Its Impact on Various Facets of Healthcare.


Über den Autor / die Autorin










Dr. R. Lakshmana Kumar is an Assistant professor in the Computer Applications Department and currently also leading the technical training team in Hindusthan College of Engineering and Technology, Coimbatore. Tamil Nadu. His PhD is from Anna University, Chennai and his Research is on Semantic Web Services. Part of his PhD work was funded by South Korea. He is a global chapter lead for MLCS [Machine Learning for Cyber Security] for the Coimbatore chapter. He is currently allied with company-specific training of Infosys Campus Connect, Oracle WDP and Palo Alto Networks. He has a passion for software development and holds an international certification on SCJP (Sun Certificated Java Programmer) and SCJWCD (Sun Certificate Java Web Component Developer). He is familiar with programming languages like Java, Python, and PHP. He is involved with research and considered an expertise in distributed computing. He also holds the Data Science certification from John Hopkins University and the Amazon Cloud Architect certification from Amazon Web Services. He has published more than 25 papers in various international journals.
Dr. R. Indrakumari is an Assistant Professor as the School of Computing Science and Engineering, Galgotias University, NCR Delhi, India. She has completed the M.Tech in Computer and Information Technology from Manonmaniam Sundaranar University, Tirunelveli. Her main areas of interest are Big Data, Internet of Things, Data Mining, Data warehousing and its visualization tools such as Tableau, Qlikview.
Dr. B. Balamurugan Completed his PhD. at Vellore Institute of Technology University, Vellore and is currently working as a Professor at Galgotias University, Greater Noida, Uttar Pradesh. He has 15 years of teaching experience in the field of computer science. His area of interest lies in the field of Internet of Things, Big data, Networking. He has published more than 100 international journals papers and contributed book chapters.
Dr. Achyut Shankar completed his PhD at Vellore Institute of Technology University, Tamilnadu, India and is currently working as an Assistant Professor at Amity School of Engineering and Technology, India. His areas of interested are Data Communication, Computer Networks, Machine Learning, Statistical Tools, Operating Systems, Pattern Recognition, and Theory of Computation.


Zusammenfassung

Exploratory data analysis helps to recognize natural patterns hidden in the data. This book describes the tools for hypothesis generation by visualizing data through graphical representation and provides insight into advanced analytics concepts in an easy way.

Produktdetails

Autoren R. Lakshmana (Hindusthan College of Enginee Kumar
Mitarbeit B. Balamurugan (Herausgeber), R. Indrakumari (Herausgeber), R. Lakshmana Kumar (Herausgeber), Achyut Shankar (Herausgeber)
Verlag Taylor & Francis Ltd.
 
Sprache Englisch
Produktform Taschenbuch
Erschienen 04.10.2024
 
EAN 9780367506926
ISBN 978-0-367-50692-6
Seiten 292
Serie Innovations in Big Data and Machine Learning
Themen Geisteswissenschaften, Kunst, Musik > Kunst > Innenarchitektur, Design
Naturwissenschaften, Medizin, Informatik, Technik > Technik > Maschinenbau, Fertigungstechnik
Ratgeber

machine learning, SCIENCE / Chemistry / Industrial & Technical, MEDICAL / Health Care Delivery, BUSINESS & ECONOMICS / Management, TECHNOLOGY & ENGINEERING / Engineering (General), MEDICAL / Administration, BUSINESS & ECONOMICS / Industries / Service, COMPUTERS / Machine Theory, COMPUTERS / Optical Data Processing, Computer Vision, pattern recognition, Management & management techniques, Information visualization, Mathematical theory of computation, Engineering: general, Medical administration & management, Management and management techniques, Health systems & services, COMPUTERS / Human-Computer Interaction (HCI), Hospitality and service industries, Service industries, COMPUTERS / Data Science / Machine Learning, COMPUTERS / Data Science / Data Visualization, BUSINESS & ECONOMICS / Industries / Healthcare, Primary care medicine, primary health care, Industrial chemistry and manufacturing technologies, Medical administration and management, Industrial chemistry & manufacturing technologies

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