Data science and predictive analytics: (Record no. 7445)

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000 -LEADER
fixed length control field 06668nam a22002177a 4500
005 - DATE AND TIME OF LATEST TRANSACTION
control field 20250105144249.0
008 - FIXED-LENGTH DATA ELEMENTS--GENERAL INFORMATION
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020 ## - INTERNATIONAL STANDARD BOOK NUMBER
International Standard Book Number 9783030101879
082 ## - DEWEY DECIMAL CLASSIFICATION NUMBER
Classification number 005.7
Item number DIN
100 ## - MAIN ENTRY--PERSONAL NAME
Personal name Dinov, Ivo D
245 ## - TITLE STATEMENT
Title Data science and predictive analytics:
Remainder of title biomedical and health applications using R
260 ## - PUBLICATION, DISTRIBUTION, ETC. (IMPRINT)
Name of publisher, distributor, etc. Springer
Place of publication, distribution, etc. Cham
Date of publication, distribution, etc. 2019
300 ## - PHYSICAL DESCRIPTION
Extent xxxiv, 832 p.
365 ## - TRADE PRICE
Price type code EUR
Price amount 59.99
500 ## - GENERAL NOTE
General note Table of content:<br/>Front Matter<br/>Pages i-xxxiv<br/>Download chapter PDF <br/>Motivation<br/>Ivo D. Dinov<br/>Pages 1-12<br/>Foundations of R<br/>Ivo D. Dinov<br/>Pages 13-62<br/>Managing Data in R<br/>Ivo D. Dinov<br/>Pages 63-141<br/>Data Visualization<br/>Ivo D. Dinov<br/>Pages 143-199<br/>Linear Algebra & Matrix Computing<br/>Ivo D. Dinov<br/>Pages 201-231<br/>Dimensionality Reduction<br/>Ivo D. Dinov<br/>Pages 233-266<br/>Lazy Learning: Classification Using Nearest Neighbors<br/>Ivo D. Dinov<br/>Pages 267-287<br/>Probabilistic Learning: Classification Using Naive Bayes<br/>Ivo D. Dinov<br/>Pages 289-305<br/>Decision Tree Divide and Conquer Classification<br/>Ivo D. Dinov<br/>Pages 307-343<br/>Forecasting Numeric Data Using Regression Models<br/>Ivo D. Dinov<br/>Pages 345-381<br/>Black Box Machine-Learning Methods: Neural Networks and Support Vector Machines<br/>Ivo D. Dinov<br/>Pages 383-422<br/>Apriori Association Rules Learning<br/>Ivo D. Dinov<br/>Pages 423-442<br/>k-Means Clustering<br/>Ivo D. Dinov<br/>Pages 443-473<br/>Model Performance Assessment<br/>Ivo D. Dinov<br/>Pages 475-496<br/>Improving Model Performance<br/>Ivo D. Dinov<br/>Pages 497-511<br/>Specialized Machine Learning Topics<br/>Ivo D. Dinov<br/>Pages 513-556<br/>Variable/Feature Selection<br/>Ivo D. Dinov<br/>Pages 557-572<br/>Regularized Linear Modeling and Controlled Variable Selection<br/>Ivo D. Dinov<br/>Pages 573-622<br/>Big Longitudinal Data Analysis<br/>Ivo D. Dinov<br/>Pages 623-658<br/>[https://link.springer.com/book/10.1007/978-3-319-72347-1#toc]
520 ## - SUMMARY, ETC.
Summary, etc. Over the past decade, Big Data have become ubiquitous in all economic sectors, scientific disciplines, and human activities. They have led to striking technological advances, affecting all human experiences. Our ability to manage, understand, interrogate, and interpret such extremely large, multisource, heterogeneous, incomplete, multiscale, and incongruent data has not kept pace with the rapid increase of the volume, complexity and proliferation of the deluge of digital information. There are three reasons for this shortfall. First, the volume of data is increasing much faster than the corresponding rise of our computational processing power (Kryder’s law > Moore’s law). Second, traditional discipline-bounds inhibit expeditious progress. Third, our education and training activities have fallen behind the accelerated trend of scientific, information, and communication advances. There are very few rigorous instructional resources, interactive learning materials, and dynamic trainingenvironments that support active data science learning. The textbook balances the mathematical foundations with dexterous demonstrations and examples of data, tools, modules and workflows that serve as pillars for the urgently needed bridge to close that supply and demand predictive analytic skills gap.<br/>Exposing the enormous opportunities presented by the tsunami of Big data, this textbook aims to identify specific knowledge gaps, educational barriers, and workforce readiness deficiencies. Specifically, it focuses on the development of a transdisciplinary curriculum integrating modern computational methods, advanced data science techniques, innovative biomedical applications, and impactful health analytics.<br/><br/>The content of this graduate-level textbook fills a substantial gap in integrating modern engineering concepts, computational algorithms, mathematical optimization, statistical computing and biomedical inference. Big data analytic techniques and predictive scientific methods demand broad transdisciplinary knowledge, appeal to an extremely wide spectrum of readers/learners, and provide incredible opportunities for engagement throughout the academy, industry, regulatory and funding agencies.<br/><br/> The two examples below demonstrate the powerful need for scientific knowledge, computational abilities, interdisciplinary expertise, and modern technologies necessary to achieve desired outcomes (improving human health and optimizing future return on investment). This can only be achieved by appropriately trained teams of researchers who can develop robust decision support systems using modern techniques and effective end-to-end protocols, like the ones described in this textbook.<br/><br/> • A geriatric neurologist is examining a patient complaining of gait imbalance and posture instability. To determine if the patient may suffer from Parkinson’s disease, the physician acquires clinical, cognitive, phenotypic, imaging, and genetics data (Big Data). Most clinics and healthcare centers are not equipped with skilled data analytic teams that can wrangle, harmonize and interpret such complex datasets. A learner that completes a course of study using this textbook will have the competency and ability to manage the data, generate a protocol for deriving biomarkers, and provide an actionable decision support system. The results of this protocol will help the physician understand the entire patient dataset and assist in making a holistic evidence-based, data-driven, clinical diagnosis.<br/><br/>• To improve the return on investment for their shareholders, a healthcare manufacturer needs to forecast the demand for their product subject to environmental, demographic, economic, and bio-social sentiment data (Big Data). The organization’s data-analytics team is tasked with developing a protocol that identifies, aggregates, harmonizes, models and analyzes these heterogeneous data elements to generate a trend forecast. Thissystem needs to provide an automated, adaptive, scalable, and reliable prediction of the optimal investment, e.g., R&D allocation, that maximizes the company’s bottom line. A reader that complete a course of study using this textbook will be able to ingest the observed structured and unstructured data, mathematically represent the data as a computable object, apply appropriate model-based and model-free prediction techniques. The results of these techniques may be used to forecast the expected relation between the company’s investment, product supply, general demand of healthcare (providers and patients), and estimate the return on initial investments.<br/><br/>(https://link.springer.com/book/10.1007/978-3-319-72347-1#overview)
650 ## - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name as entry element Artificial intelligence --Data processing
650 ## - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name as entry element Machine learning
650 ## - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name as entry element Big data
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    Dewey Decimal Classification     IT & Decisions Sciences 670/24-25 21-12-2024 Indian Institute of Management LRC Indian Institute of Management LRC General Stacks 01/09/2025 T V Enterprises 3790.17   005.7 DIN 007065 01/09/2025 1 5831.03 01/09/2025 Book

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