Mathematical Problems in Data Science: Theoretical and Practical Methods

This document was uploaded by one of our users. The uploader already confirmed that they had the permission to publish it. If you are author/publisher or own the copyright of this documents, please report to us by using this DMCA report form.

Simply click on the Download Book button.

Yes, Book downloads on Ebookily are 100% Free.

Sometimes the book is free on Amazon As well, so go ahead and hit "Search on Amazon"

This book describes current problems in data science and Big Data. Key topics are data classification, Graph Cut, the Laplacian Matrix, Google Page Rank, efficient algorithms, hardness of problems, different types of big data, geometric data structures, topological data processing, and various learning methods.  For unsolved problems such as incomplete data relation and reconstruction, the book includes possible solutions and both statistical and computational methods for data analysis. Initial chapters focus on exploring the properties of incomplete data sets and partial-connectedness among data points or data sets. Discussions also cover the completion problem of Netflix matrix; machine learning method on massive data sets; image segmentation and video search. This book introduces software tools for data science and Big Data such MapReduce, Hadoop, and Spark.  

This book contains three parts.  The first part explores the fundamental tools of data science. It includes basic graph theoretical methods, statistical and AI methods for massive data sets. In second part, chapters focus on the procedural treatment of data science problems including machine learning methods, mathematical image and video processing, topological data analysis, and statistical methods. The final section provides case studies on special topics in variational learning, manifold learning, business and financial data rec

overy, geometric search, and computing models. 

Mathematical Problems in Data Science is a valuable resource for researchers and professionals working in data science, information systems and networks.  Advanced-level students studying computer science, electrical engineering and mathematics will also find the content helpful.

Author(s): Li M. Chen, Zhixun Su, Bo Jiang
Edition: 1
Publisher: Springer
Year: 2016

Language: English
Pages: 219
Tags: Information Systems and Communication Service; Computer Communication Networks; Mathematics of Computing

Front Matter....Pages i-xv
Front Matter....Pages 1-1
Introduction: Data Science and BigData Computing....Pages 3-15
Overview of Basic Methods for Data Science....Pages 17-37
Relationship and Connectivity of Incomplete Data Collection....Pages 39-59
Front Matter....Pages 61-61
Machine Learning for Data Science: Mathematical or Computational....Pages 63-74
Images, Videos, and BigData....Pages 75-100
Topological Data Analysis....Pages 101-124
Monte Carlo Methods and Their Applications in Big Data Analysis....Pages 125-139
Front Matter....Pages 141-141
Feature Extraction via Vector Bundle Learning....Pages 143-157
Curve Interpolation and Financial Curve Construction....Pages 159-170
Advanced Methods in Variational Learning: Segmentation with Intensity Inhomogeneity....Pages 171-187
An On-Line Strategy of Groups Evacuation from a Convex Region in the Plane....Pages 189-199
A New Computational Model of Bigdata....Pages 201-210
Back Matter....Pages 211-213