Hurry - Only 2 left in stock!
|
Foreword Chapter 1 Introduction to Analytics Whats in a Name? Why the Sudden Popularity of Analytics and Data Science? The Application Areas of Analytics The Main Challenges of Analytics A Longitudinal View of Analytics A Simple Taxonomy for Analytics The Cutting Edge of Analytics: IBM Watson Summary References Chapter 2 Introduction to Predictive Analytics and Data Mining What Is Data Mining? What Data Mining Is Not The Most Common Data Mining Applications What Kinds of Patterns Can Data Mining Discover? Popular Data Mining Tools The Dark Side of Data Mining: Privacy Concerns Summary References Chapter 3 Standardized Processes for Predictive Analytics The Knowledge Discovery in Databases (KDD) Process Cross-Industry Standard Process for Data Mining (CRISP-DM) SEMMA SEMMA Versus CRISP-DM Six Sigma for Data Mining Which Methodology Is Best? Summary References Chapter 4 Data and Methods for Predictive Analytics The Nature of Data in Data Analytics Preprocessing of Data for Analytics Data Mining Methods Prediction Classification Decision Trees Cluster Analysis for Data Mining k-Means Clustering Algorithm Association Apriori Algorithm Data Mining and Predictive Analytics Misconceptions and Realities Summary References Chapter 5 Algorithms for Predictive Analytics Naive Bayes Nearest Neighbor Similarity Measure: The Distance Metric Artificial Neural Networks Support Vector Machines Linear Regression Logistic Regression Time-Series Forecasting Summary References Chapter 6 Advanced Topics in Predictive Modeling Model Ensembles BiasVariance Trade-off in Predictive Analytics Imbalanced Data Problems in Predictive Analytics Explainability of Machine Learning Models for Predictive Analytics Summary References Chapter 7 Text Analytics, Topic Modeling, and Sentiment Analysis Natural Language Processing Text Mining Applications The Text Mining Process Text Mining Tools Topic Modeling Sentiment Analysis Summary References Chapter 8 Big Data for Predictive Analytics Where Does Big Data Come From? The Vs That Define Big Data Fundamental Concepts of Big Data The Business Problems That Big Data Analytics Addresses Big Data Technologies Data Scientists Big Data and Stream Analytics Data Stream Mining Summary References Chapter 9 Deep Learning and Cognitive Computing Introduction to Deep Learning Basics of Shallow Neural Networks Elements of an Artificial Neural Network Deep Neural Networks Convolutional Neural Networks Recurrent Networks and Long Short-Term Memory Networks Computer Frameworks for Implementation of Deep Learning Cognitive Computing Summary References Appendix A KNIME and the Landscape of Tools for Business Analytics and Data Science 9780136738510 TOC 11/12/2020
Show more
Foreword Chapter 1 Introduction to Analytics Whats in a Name? Why the Sudden Popularity of Analytics and Data Science? The Application Areas of Analytics The Main Challenges of Analytics A Longitudinal View of Analytics A Simple Taxonomy for Analytics The Cutting Edge of Analytics: IBM Watson Summary References Chapter 2 Introduction to Predictive Analytics and Data Mining What Is Data Mining? What Data Mining Is Not The Most Common Data Mining Applications What Kinds of Patterns Can Data Mining Discover? Popular Data Mining Tools The Dark Side of Data Mining: Privacy Concerns Summary References Chapter 3 Standardized Processes for Predictive Analytics The Knowledge Discovery in Databases (KDD) Process Cross-Industry Standard Process for Data Mining (CRISP-DM) SEMMA SEMMA Versus CRISP-DM Six Sigma for Data Mining Which Methodology Is Best? Summary References Chapter 4 Data and Methods for Predictive Analytics The Nature of Data in Data Analytics Preprocessing of Data for Analytics Data Mining Methods Prediction Classification Decision Trees Cluster Analysis for Data Mining k-Means Clustering Algorithm Association Apriori Algorithm Data Mining and Predictive Analytics Misconceptions and Realities Summary References Chapter 5 Algorithms for Predictive Analytics Naive Bayes Nearest Neighbor Similarity Measure: The Distance Metric Artificial Neural Networks Support Vector Machines Linear Regression Logistic Regression Time-Series Forecasting Summary References Chapter 6 Advanced Topics in Predictive Modeling Model Ensembles BiasVariance Trade-off in Predictive Analytics Imbalanced Data Problems in Predictive Analytics Explainability of Machine Learning Models for Predictive Analytics Summary References Chapter 7 Text Analytics, Topic Modeling, and Sentiment Analysis Natural Language Processing Text Mining Applications The Text Mining Process Text Mining Tools Topic Modeling Sentiment Analysis Summary References Chapter 8 Big Data for Predictive Analytics Where Does Big Data Come From? The Vs That Define Big Data Fundamental Concepts of Big Data The Business Problems That Big Data Analytics Addresses Big Data Technologies Data Scientists Big Data and Stream Analytics Data Stream Mining Summary References Chapter 9 Deep Learning and Cognitive Computing Introduction to Deep Learning Basics of Shallow Neural Networks Elements of an Artificial Neural Network Deep Neural Networks Convolutional Neural Networks Recurrent Networks and Long Short-Term Memory Networks Computer Frameworks for Implementation of Deep Learning Cognitive Computing Summary References Appendix A KNIME and the Landscape of Tools for Business Analytics and Data Science 9780136738510 TOC 11/12/2020
Show moreForeword
Chapter 1 Introduction to Analytics
What's in a Name?
Why the Sudden Popularity of Analytics and Data Science?
The Application Areas of Analytics
The Main Challenges of Analytics
A Longitudinal View of Analytics
A Simple Taxonomy for Analytics
The Cutting Edge of Analytics: IBM Watson
Summary
References
Chapter 2 Introduction to Predictive Analytics and Data
Mining
What Is Data Mining?
What Data Mining Is Not
The Most Common Data Mining Applications
What Kinds of Patterns Can Data Mining Discover?
Popular Data Mining Tools
The Dark Side of Data Mining: Privacy Concerns
Summary
References
Chapter 3 Standardized Processes for Predictive
Analytics
The Knowledge Discovery in Databases (KDD) Process
Cross-Industry Standard Process for Data Mining (CRISP-DM)
SEMMA
SEMMA Versus CRISP-DM
Six Sigma for Data Mining
Which Methodology Is Best?
Summary
References
Chapter 4 Data and Methods for Predictive Analytics
The Nature of Data in Data Analytics
Preprocessing of Data for Analytics
Data Mining Methods
Prediction
Classification
Decision Trees
Cluster Analysis for Data Mining
k-Means Clustering Algorithm
Association
Apriori Algorithm
Data Mining and Predictive Analytics Misconceptions and
Realities
Summary
References
Chapter 5 Algorithms for Predictive Analytics
Naive Bayes
Nearest Neighbor
Similarity Measure: The Distance Metric
Artificial Neural Networks
Support Vector Machines
Linear Regression
Logistic Regression
Time-Series Forecasting
Summary
References
Chapter 6 Advanced Topics in Predictive Modeling
Model Ensembles
Bias–Variance Trade-off in Predictive Analytics
Imbalanced Data Problems in Predictive Analytics
Explainability of Machine Learning Models for
Predictive Analytics
Summary
References
Chapter 7 Text Analytics, Topic Modeling, and Sentiment
Analysis
Natural Language Processing
Text Mining Applications
The Text Mining Process
Text Mining Tools
Topic Modeling
Sentiment Analysis
Summary
References
Chapter 8 Big Data for Predictive Analytics
Where Does Big Data Come From?
The Vs That Define Big Data
Fundamental Concepts of Big Data
The Business Problems That Big Data Analytics
Addresses
Big Data Technologies
Data Scientists
Big Data and Stream Analytics
Data Stream Mining
Summary
References
Chapter 9 Deep Learning and Cognitive Computing
Introduction to Deep Learning
Basics of “Shallow” Neural Networks
Elements of an Artificial Neural Network
Deep Neural Networks
Convolutional Neural Networks
Recurrent Networks and Long Short-Term Memory Networks
Computer Frameworks for Implementation of Deep Learning
Cognitive Computing
Summary
References
Appendix A KNIME and the Landscape of Tools for Business
Analytics and Data Science
9780136738510 TOC 11/12/2020
Dr. Dursun Delen is an internationally renowned expert in
business analytics, data science, and machine learning. He is often
invited to national and international conferences to deliver
keynote presentations on topics related to data/text mining,
business intelligence, decision support systems, business
analytics, data science, and knowledge management. Prior to his
appointment as a professor at Oklahoma State University in 2001,
Dr. Delen worked for industry for more than 10 years, developing
and delivering business analytics solutions to companies. His most
recent industrial work was at a privately owned applied research
and consulting company, Knowledge Based Systems, Inc. (KBSI), in
College Station, Texas, as a research scientist. During his five
years at KBSI, Dr. Delen led a number of projects related to
decision support systems, enterprise engineering, information
systems development, and advanced business analytics that were
funded by private industry and federal agencies, including several
branches of the Department of Defense, NASA, National Science
Foundation, National Institute for Standards and Technology, and
the Department of Energy. Today, in addition to his academic
endeavors, Dr. Delen provides professional education and consulting
services to businesses in assessing their analytics, data science,
and information system needs and helping them develop
state-of-the-art computerized decision support systems.
In his current academic position, Dr. Delen holds the William S.
Spears Endowed Chair in Business Administration and the Patterson
Family Endowed Chair in Business Analytics, and he is the director
of research for the Center for Health Systems Innovation and
regents' professor of management science and information systems in
the Spears School of Business at Oklahoma State University. He has
published more than 150 peer-reviewed research articles that have
appeared in major journals, including Journal of Business Research,
Journal of Business Analytics, Decision Sciences Journal, Decision
Support Systems, Communications of the ACM, Computers & Operations
Research, Annals of Operations Research, Computers in Industry,
Journal of Production Operations Management, Artificial
Intelligence in Medicine, Journal of the American Medical
Informatics Association, Expert Systems with Applications,
Renewable and Sustainable Energy Reviews, Energy, and Renewable
Energy, among others. He has also authored and coauthored 11 books
and textbooks in the broad area of business analytics, data
science, and business intelligence.
Dr. Delen regularly chairs tracks and minitracks at various
business analytics and information systems conferences. Currently,
he is the editor-in-chief for the Journal of Business Analytics and
AI in Business (in Frontiers in Artificial Intelligence), senior
editor for the Journal of Decision Support Systems, Decision
Sciences, and Journal of Business Research, associate editor for
Decision Analytics, International Journal of Information and
Knowledge Management, and International Journal of RF Technologies,
and is on the editorial boards of several other academic journals.
He has been the recipient of several research and teaching awards,
including the prestigious Fulbright scholar, regents' distinguished
teacher and researcher, president's outstanding researcher, and Big
Data mentor awards.
![]() |
Ask a Question About this Product More... |
![]() |