Supervised and Unsupervised Learning for Data Science

This book covers the state of the art in learning algorithms with an inclusion of semi-supervised methods to provide a broad scope of clustering and classification solutions for big data applications. Case studies and best practices are included along with theoretical models of learning for a compre...

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Bibliographic Details
Other Authors: Berry, Michael W. (Editor), Mohamed, Azlinah (Editor), Yap, Bee Wah (Editor)
Format: eBook
Language:English
Published: Cham Springer International Publishing 2020, 2020
Edition:1st ed. 2020
Series:Unsupervised and Semi-Supervised Learning
Subjects:
Online Access:
Collection: Springer eBooks 2005- - Collection details see MPG.ReNa
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245 0 0 |a Supervised and Unsupervised Learning for Data Science  |h Elektronische Ressource  |c edited by Michael W. Berry, Azlinah Mohamed, Bee Wah Yap 
250 |a 1st ed. 2020 
260 |a Cham  |b Springer International Publishing  |c 2020, 2020 
300 |a VIII, 187 p. 55 illus., 45 illus. in color  |b online resource 
505 0 |a Chapter1: A Systematic Review on Supervised & Unsupervised Machine Learning Algorithms for Data Science -- Chapter2: Overview of One-Pass and Discard-After-Learn Concepts for Classification and Clustering in Streaming Environment with Constraints -- Chapter3: Distributed Single-Source Shortest Path Algorithms with Two Dimensional Graph Layout -- Chapter4: Using Non-Negative Tensor Decomposition for Unsupervised Textual Influence Modeling -- Chapter5: Survival Support Vector Machines: A Simulation Study and Its Health-related Application -- Chapter6: Semantic Unsupervised Learning for Word Sense Disambiguation -- Chapter7: Enhanced Tweet Hybrid Recommender System using Unsupervised Topic Modeling and Matrix Factorization based Neural Network -- Chapter8: New Applications of a Supervised Computational Intelligence (CI) Approach: Case Study in Civil Engineering 
653 |a Artificial Intelligence 
653 |a Data mining 
653 |a Signal, Speech and Image Processing 
653 |a Telecommunication 
653 |a Artificial intelligence 
653 |a Communications Engineering, Networks 
653 |a Data Mining and Knowledge Discovery 
653 |a Signal processing 
653 |a Automated Pattern Recognition 
653 |a Pattern recognition systems 
700 1 |a Mohamed, Azlinah  |e [editor] 
700 1 |a Yap, Bee Wah  |e [editor] 
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989 |b Springer  |a Springer eBooks 2005- 
490 0 |a Unsupervised and Semi-Supervised Learning 
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520 |a This book covers the state of the art in learning algorithms with an inclusion of semi-supervised methods to provide a broad scope of clustering and classification solutions for big data applications. Case studies and best practices are included along with theoretical models of learning for a comprehensive reference to the field. The book is organized into eight chapters that cover the following topics: discretization, feature extraction and selection, classification, clustering, topic modeling, graph analysis and applications. Practitioners and graduate students can use the volume as an important reference for their current and future research and faculty will find the volume useful for assignments in presenting current approaches to unsupervised and semi-supervised learning in graduate-level seminar courses. The book is based on selected, expanded papers from the Fourth International Conference on Soft Computing in Data Science (2018). Includes new advances in clustering and classification using semi-supervised and unsupervised learning; Address new challenges arising in feature extraction and selection using semi-supervised and unsupervised learning; Features applications from healthcare, engineering, and text/social media mining that exploit techniques from semi-supervised and unsupervised learning