Systems for Analytics, Data Science, & Artificial Intelligence: Systems for Decision Support, Global Edition

Höfundur Ramesh Sharda; Dursun Delen; Efraim Turban

Útgefandi Pearson International Content

Snið Page Fidelity

Print ISBN 9781292341552

Útgáfa 11

Höfundarréttur 2020

4.990 kr.

Description

Efnisyfirlit

  • Title Page
  • Copyright Page
  • Brief Contents
  • Contents
  • Preface
  • About the Authors
  • Part I Introduction to Analytics and AI
  • Chapter 1 Overview of Business Intelligence, Analytics, Data Science, and Artificial Intelligence:
  • 1.1 Opening Vignette: How Intelligent Systems Work for KONE Elevators and Escalators Company
  • 1.2 Changing Business Environments and Evolving Needs for Decision Support and Analytics
  • Decision-Making Process
  • The Influence of the External and Internal Environments on the Process
  • Data and Its Analysis in Decision Making
  • Technologies for Data Analysis and Decision Support
  • 1.3 Decision-Making Processes and Computerized Decision Support Framework
  • Simon’s Process: Intelligence, Design, and Choice
  • The Intelligence Phase: Problem (or Opportunity) Identification
  • Application Case 1.1 Making Elevators Go Faster
  • The Design Phase
  • The Choice Phase
  • The Implementation Phase
  • The Classical Decision Support System Framework
  • A DSS Application
  • Components of a Decision Support System
  • The Data Management Subsystem
  • The Model Management Subsystem
  • Application Case 1.2 SNAP DSS Helps OneNet Make Telecommunications Rate Decisions
  • The User Interface Subsystem
  • The Knowledge-Based Management Subsystem
  • 1.4 Evolution of Computerized Decision Support to Business Intelligence/Analytics/Data Science
  • A Framework for Business Intelligence
  • The Architecture of BI
  • The Origins and Drivers of BI
  • Data Warehouse as a Foundation for Business Intelligence
  • Transaction Processing versus Analytic Processing
  • A Multimedia Exercise in Business Intelligence
  • 1.5 Analytics Overview
  • Descriptive Analytics
  • Application Case 1.3 An Post and the Use of Data Visualization in Daily Postal Operations
  • Application Case 1.4 Siemens Reduces Cost with the Use of Data Visualization
  • Predictive Analytics
  • Application Case 1.5 SagaDigits and the Use of Predictive Analytics
  • Prescriptive Analytics
  • Application Case 1.6 A Specialty Steel Bar Company Uses Analytics to Determine Available-to-Promise
  • 1.6 Analytics Examples in Selected Domains
  • Sports Analytics—An Exciting Frontier for Learning and Understanding Applications of Analytics
  • Analytics Applications in Healthcare—Humana Examples
  • Application Case 1.7 Image Analysis Helps Estimate Plant Cover
  • 1.7 Artificial Intelligence Overview
  • What Is Artificial Intelligence
  • The Major Benefits of AI
  • The Landscape of AI
  • Application Case 1.8 AI Increases Passengers’ Comfort and Security in Airports and Borders
  • The Three Flavors of AI Decisions
  • Autonomous AI
  • Societal Impacts
  • Application Case 1.9 Robots Took the Job of Camel-Racing Jockeys for Societal Benefits
  • 1.8 Convergence of Analytics and AI
  • Major Differences between Analytics and AI
  • Why Combine Intelligent Systems
  • How Convergence Can Help
  • Big Data Is Empowering AI Technologies
  • The Convergence of AI and the IoT
  • The Convergence with Blockchain and Other Technologies
  • Application Case 1.10 Amazon Go Is Open for Business
  • IBM and Microsoft Support for Intelligent Systems Convergence
  • 1.9 Overview of the Analytics Ecosystem
  • 1.10 Plan of the Book
  • 1.11 Resources, Links, and the Teradata University Network Connection
  • Resources and Links
  • Vendors, Products, and Demos
  • Periodicals
  • The Teradata University Network Connection
  • The Book’s Web Site
  • Chapter Highlights
  • Key Terms
  • Questions for Discussion
  • Exercises
  • References
  • Chapter 2 Artificial Intelligence: Concepts, Drivers, Major Technologies, and Business Applications
  • 2.1 Opening Vignette: INRIX Solves Transportation Problems
  • 2.2 Introduction to Artificial Intelligence
  • Definitions
  • Major Characteristics of AI Machines
  • Major Elements of AI
  • AI Applications
  • Major Goals of AI
  • Drivers of AI
  • Benefits of AI
  • Some Limitations of AI Machines
  • Three Flavors of AI Decisions
  • Artificial Brain
  • 2.3 Human and Computer Intelligence
  • What Is Intelligence
  • How Intelligent Is AI
  • Measuring AI
  • Application Case 2.1 How Smart Can a Vacuum Cleaner Be
  • 2.4 Major AI Technologies and Some Derivatives
  • Intelligent Agents
  • Machine Learning
  • Application Case 2.2 How Machine Learning Is Improving Work in Business
  • Machine and Computer Vision
  • Robotic Systems
  • Natural Language Processing
  • Knowledge and Expert Systems and Recommenders
  • Chatbots
  • Emerging AI Technologies
  • 2.5 AI Support for Decision Making
  • Some Issues and Factors in Using AI in Decision Making
  • AI Support of the Decision-Making Process
  • Automated Decision Making
  • Application Case 2.3 How Companies Solve Real-World Problems Using Google’s Machine-Learning Tools
  • Conclusion
  • 2.6 AI Applications in Accounting
  • AI in Accounting: An Overview
  • AI in Big Accounting Companies
  • Accounting Applications in Small Firms
  • Application Case 2.4 How EY, Deloitte, and PwC Are Using AI
  • Job of Accountants
  • 2.7 AI Applications in Financial Services
  • AI Activities in Financial Services
  • AI in Banking: An Overview
  • Illustrative AI Applications in Banking
  • Insurance Services
  • Application Case 2.5 AI in China’s Financial Sector
  • 2.8 AI in Human Resource Management (HRM)
  • AI in HRM: An Overview
  • AI in Onboarding
  • Application Case 2.6 How Alexander Mann Solutions (AMS) Is Using AI to Support the Recruiting Proces
  • Introducing AI to HRM Operations
  • 2.9 AI in Marketing, Advertising, and CRM
  • Overview of Major Applications
  • AI Marketing Assistants in Action
  • Customer Experiences and CRM
  • Application Case 2.7 Kraft Foods Uses AI for Marketing and CRM
  • Other Uses of AI in Marketing
  • 2.10 AI Applications in Production-Operation Management (POM)
  • AI in Manufacturing
  • Implementation Model
  • Intelligent Factories
  • Logistics and Transportation
  • Chapter Highlights
  • Key Terms
  • Questions for Discussion
  • Exercises
  • References
  • Chapter 3 Nature of Data, Statistical Modeling, and Visualization
  • 3.1 Opening Vignette: SiriusXM Attracts and Engages a New Generation of Radio Consumers with Data-Dr
  • 3.2 Nature of Data
  • 3.3 Simple Taxonomy of Data
  • Application Case 3.1 Verizon Answers the Call for Innovation: The Nation’s Largest Network Provide
  • 3.4 Art and Science of Data Preprocessing
  • Application Case 3.2 Improving Student Retention with Data-Driven Analytics
  • 3.5 Statistical Modeling for Business Analytics
  • Descriptive Statistics for Descriptive Analytics
  • Measures of Centrality Tendency (Also Called Measures of Location or Centrality)
  • Arithmetic Mean
  • Median
  • Mode
  • Measures of Dispersion (Also Called Measures of Spread or Decentrality)
  • Range
  • Variance
  • Standard Deviation
  • Mean Absolute Deviation
  • Quartiles and Interquartile Range
  • Box-and-Whiskers Plot
  • Shape of a Distribution
  • Application Case 3.3 Town of Cary Uses Analytics to Analyze Data from Sensors, Assess Demand, and De
  • 3.6 Regression Modeling for Inferential Statistics
  • How Do We Develop the Linear Regression Model
  • How Do We Know If the Model Is Good Enough
  • What Are the Most Important Assumptions in Linear Regression
  • Logistic Regression
  • Time-Series Forecasting
  • Application Case 3.4 Predicting NCAA Bowl Game Outcomes
  • 3.7 Business Reporting
  • Application Case 3.5 Flood of Paper Ends at FEMA
  • 3.8 Data Visualization
  • Brief History of Data Visualization
  • Application Case 3.6 Macfarlan Smith Improves Operational Performance Insight with Tableau Online
  • 3.9 Different Types of Charts and Graphs
  • Basic Charts and Graphs
  • Specialized Charts and Graphs
  • Which Chart or Graph Should You Use
  • 3.10 Emergence of Visual Analytics
  • Visual Analytics
  • High-Powered Visual Analytics Environments
  • 3.11 Information Dashboards
  • Application Case 3.7 Flink Labs and Dashboard Applications Development
  • Dashboard Design
  • Application Case 3.8 Visual Analytics Helps Energy Supplier Make Better Connections
  • What to Look for in a Dashboard
  • Best Practices in Dashboard Design
  • Benchmark Key Performance Indicators with Industry Standards
  • Wrap the Dashboard Metrics with Contextual Metadata
  • Validate the Dashboard Design by a Usability Specialist
  • Prioritize and Rank Alerts/Exceptions Streamed to the Dashboard
  • Enrich the Dashboard with Business-User Comments
  • Present Information in Three Different Levels
  • Pick the Right Visual Construct Using Dashboard Design Principles
  • Provide for Guided Analytics
  • Chapter Highlights
  • Key terms
  • Questions for Discussion
  • Exercises
  • References
  • PART II Predictive Analytics/Machine Learning
  • Chapter 4 Data Mining Process, Methods, and Algorithms
  • 4.1 Opening Vignette: Miami-Dade Police Department Is Using Predictive Analytics to Foresee and Figh
  • 4.2 Data Mining Concepts
  • Application Case 4.1 Visa Is Enhancing the Customer Experience While Reducing Fraud with Predictive
  • Definitions, Characteristics, and Benefits
  • How Data Mining Works
  • Application Case 4.2 American Honda Uses Advanced Analytics to Improve Warranty Claims
  • Data Mining versus Statistics
  • 4.3 Data Mining Applications
  • Application Case 4.3 Predictive Analytic and Data Mining Help Stop Terrorist Funding
  • 4.4 Data Mining Process
  • Step 1: Business Understanding
  • Step 2: Data Understanding
  • Step 3: Data Preparation
  • Step 4: Model Building
  • Application Case 4.4 Data Mining Helps in Cancer Research
  • Step 5: Testing and Evaluation
  • Step 6: Deployment
  • Other Data Mining Standardized Processes and Methodologies
  • 4.5 Data Mining Methods
  • Classification
  • Estimating the True Accuracy of Classification Models
  • Estimating the Relative Importance of Predictor Variables
  • Cluster Analysis for Data Mining
  • Application Case 4.5 Influence Health Uses Advanced Predictive Analytics to Focus on the Factors Tha
  • Association Rule Mining
  • 4.6 Data Mining Software Tools
  • Application Case 4.6 Data Mining Goes to Hollywood: Predicting Financial Success of Movies
  • 4.7 Data Mining Privacy Issues, Myths, and Blunders
  • Application Case 4.7 Predicting Customer Buying Patterns—The Target Story
  • Data Mining Myths and Blunders
  • Chapter Highlights
  • Key Terms
  • Questions for Discussion
  • Exercises
  • References
  • Chapter 5 Machine-Learning Techniques for Predictive Analytics
  • 5.1 Opening Vignette: Predictive Modeling Helps Better Understand and Manage Complex Medical Procedu
  • 5.2 Basic Concepts of Neural Networks
  • Biological versus Artificial Neural Networks
  • Application Case 5.1 Neural Networks Are Helping to Save Lives in the Mining Industry
  • 5.3 Neural Network Architectures
  • Kohonen’s Self-Organizing Feature Maps
  • Hopfield Networks
  • Application Case 5.2 Predictive Modeling Is Powering the Power Generators
  • 5.4 Support Vector Machines
  • Application Case 5.3 Identifying Injury Severity Risk Factors in Vehicle Crashes with Predictive Ana
  • Mathematical Formulation of SVM
  • Primal Form
  • Dual Form
  • Soft Margin
  • Nonlinear Classification
  • Kernel Trick
  • 5.5 Process-Based Approach to the Use of SVM
  • Support Vector Machines versus Artificial Neural Networks
  • 5.6 Nearest Neighbor Method for Prediction
  • Similarity Measure: The Distance Metric
  • Parameter Selection
  • Application Case 5.4 Efficient Image Recognition and Categorization with knn
  • 5.7 Naïve Bayes Method for Classification
  • Bayes Theorem
  • Naïve Bayes Classifier
  • Process of Developing a Naïve Bayes Classifier
  • Testing Phase
  • Application Case 5.5 Predicting Disease Progress in Crohn’s Disease Patients: A Comparison of Anal
  • 5.8 Bayesian Networks
  • How Does BN Work
  • How Can BN Be Constructed
  • 5.9 Ensemble Modeling
  • Motivation—Why Do We Need to Use Ensembles
  • Different Types of Ensembles
  • Bagging
  • Boosting
  • Variants of Bagging and Boosting
  • Stacking
  • Information Fusion
  • Summary—Ensembles Are Not Perfect
  • Application Case 5.6 To Imprison or Not to Imprison: A Predictive Analytics–Based Decision Support
  • Chapter Highlights
  • Key Terms
  • Questions for Discussion
  • Exercises
  • Internet Exercises
  • References
  • Chapter 6 Deep Learning and Cognitive Computing
  • 6.1 Opening Vignette: Fighting Fraud with Deep Learning and Artificial Intelligence
  • 6.2 Introduction to Deep Learning
  • Application Case 6.1 Finding the Next Football Star with Artificial Intelligence
  • 6.3 Basics of “Shallow” Neural Networks
  • Application Case 6.2 Gaming Companies Use Data Analytics to Score Points with Players
  • Application Case 6.3 Artificial Intelligence Helps Protect Animals from Extinction
  • 6.4 Process of Developing Neural Network–Based Systems
  • Learning Process in ANN
  • Backpropagation for ANN Training
  • 6.5 Illuminating the Black Box of ANN
  • Application Case 6.4 Sensitivity Analysis Reveals Injury Severity Factors in Traffic Accidents
  • 6.6 Deep Neural Networks
  • Feedforward Multilayer Perceptron (MLP)-Type Deep Networks
  • Impact of Random Weights in Deep MLP
  • More Hidden Layers versus More Neurons
  • Application Case 6.5 Georgia DOT Variable Speed Limit Analytics Help Solve Traffic Congestions
  • 6.7 Convolutional Neural Networks
  • Convolution Function
  • Pooling
  • Image Processing Using Convolutional Networks
  • Application Case 6.6 From Image Recognition to Face Recognition
  • Text Processing Using Convolutional Networks
  • 6.8 Recurrent Networks and Long Short-Term Memory Networks
  • Application Case 6.7 Deliver Innovation by Understanding Customer Sentiments
  • LSTM Networks Applications
  • 6.9 Computer Frameworks for Implementation of Deep Learning
  • Torch
  • Caffe
  • TensorFlow
  • Theano
  • Keras: An Application Programming Interface
  • 6.10 Cognitive Computing
  • How Does Cognitive Computing Work
  • How Does Cognitive Computing Differ from AI
  • Cognitive Search
  • IBM Watson: Analytics at Its Best
  • Application Case 6.8 IBM Watson Competes against the Best at Jeopardy
  • How Does Watson Do It
  • What Is the Future for Watson
  • Chapter Highlights
  • Key Terms
  • Questions for Discussion
  • Exercises
  • References
  • Chapter 7 Text Mining, Sentiment Analysis, and Social Analytics
  • 7.1 Opening Vignette: Amadori Group Converts Consumer Sentiments into Near-Real-Time Sales
  • 7.2 Text Analytics and Text Mining Overview
  • Application Case 7.1 Netflix: Using Big Data to Drive Big Engagement: Unlocking the Power of Analyti
  • 7.3 Natural Language Processing (NLP)
  • Application Case 7.2 AMC Networks Is Using Analytics to Capture New Viewers, Predict Ratings, and Ad
  • 7.4 Text Mining Applications
  • Marketing Applications
  • Security Applications
  • Biomedical Applications
  • Application Case 7.3 Mining for Lies
  • Academic Applications
  • Application Case 7.4 The Magic behind the Magic: Instant Access to Information Helps the Orlando Mag
  • 7.5 Text Mining Process
  • Task 1: Establish the Corpus
  • Task 2: Create the Term–Document Matrix
  • Task 3: Extract the Knowledge
  • Application Case 7.5 Research Literature Survey with Text Mining
  • 7.6 Sentiment Analysis
  • Application Case 7.6 Creating a Unique Digital Experience to Capture Moments That Matter at Wimbledo
  • Sentiment Analysis Applications
  • Sentiment Analysis Process
  • Methods for Polarity Identification
  • Using a Lexicon
  • Using a Collection of Training Documents
  • Identifying Semantic Orientation of Sentences and Phrases
  • Identifying Semantic Orientation of Documents
  • 7.7 Web Mining Overview
  • Web Content and Web Structure Mining
  • 7.8 Search Engines
  • Anatomy of a Search Engine
  • 1. Development Cycle
  • 2. Response Cycle
  • Search Engine Optimization
  • Methods for Search Engine Optimization
  • Application Case 7.7 Delivering Individualized Content and Driving Digital Engagement: How Barbour C
  • 7.9 Web Usage Mining (Web Analytics)
  • Web Analytics Technologies
  • Web Analytics Metrics
  • Web Site Usability
  • Traffic Sources
  • Visitor Profiles
  • Conversion Statistics
  • 7.10 Social Analytics
  • Social Network Analysis
  • Social Network Analysis Metrics
  • Application Case 7.8 Tito’s Vodka Establishes Brand Loyalty with an Authentic Social Strategy
  • Connections
  • Distributions
  • Segmentation
  • Social Media Analytics
  • How Do People Use Social Media
  • Measuring the Social Media Impact
  • Best Practices in Social Media Analytics
  • Chapter Highlights
  • Key Terms
  • Questions for Discussion
  • Exercises
  • References
  • PART III Prescriptive Analytics and Big Data
  • Chapter 8 Prescriptive Analytics: Optimization and Simulation
  • 8.1 Opening Vignette: School District of Philadelphia Uses Prescriptive Analytics to Find Optimal So
  • 8.2 Model-Based Decision Making
  • Application Case 8.1 Canadian Football League Optimizes Game Schedule
  • Prescriptive Analytics Model Examples
  • Identification of the Problem and Environmental Analysis
  • Application Case 8.2 Ingram Micro Uses Business Intelligence Applications to Make Pricing Decisions
  • Model Categories
  • 8.3 Structure of Mathematical Models for Decision Support
  • The Components of Decision Support Mathematical Models
  • The Structure of Mathematical Models
  • 8.4 Certainty, Uncertainty, and Risk
  • Decision Making under Certainty
  • Decision Making under Uncertainty
  • Decision Making under Risk (Risk Analysis)
  • Application Case 8.3 American Airlines Uses Should-Cost Modeling to Assess the Uncertainty of Bids f
  • 8.5 Decision Modeling with Spreadsheets
  • Application Case 8.4 Pennsylvania Adoption Exchange Uses Spreadsheet Model to Better Match Children
  • Application Case 8.5 Metro Meals on Wheels Treasure Valley Uses Excel to Find Optimal Delivery Route
  • 8.6 Mathematical Programming Optimization
  • Application Case 8.6 Mixed-Integer Programming Model Helps the University of Tennessee Medical Cente
  • Linear Programming Model
  • Modeling in LP: An Example
  • Implementation
  • 8.7 Multiple Goals, Sensitivity Analysis, What-If Analysis, and Goal Seeking
  • Multiple Goals
  • Sensitivity Analysis
  • What-If Analysis
  • Goal Seeking
  • 8.8 Decision Analysis with Decision Tables and Decision Trees
  • Decision Tables
  • Decision Trees
  • 8.9 Introduction to Simulation
  • Major Characteristics of Simulation
  • Application Case 8.7 Steel Tubing Manufacturer Uses a Simulation-Based Production Scheduling System
  • Advantages of Simulation
  • Disadvantages of Simulation
  • The Methodology of Simulation
  • Simulation Types
  • Monte Carlo Simulation
  • Discrete Event Simulation
  • Application Case 8.8 Cosan Improves Its Renewable Energy Supply Chain Using Simulation
  • 8.10 Visual Interactive Simulation
  • Conventional Simulation Inadequacies
  • Visual Interactive Simulation
  • Visual Interactive Models and DSS
  • Simulation Software
  • Application Case 8.9 Improving Job-Shop Scheduling Decisions through RFID: A Simulation-Based Assess
  • Chapter Highlights
  • Key Terms
  • Questions for Discussion
  • Exercises
  • References
  • Chapter 9 Big Data, Cloud Computing, and Location Analytics: Concepts and Tools
  • 9.1 Opening Vignette: Analyzing Customer Churn in a Telecom Company Using Big Data Methods
  • 9.2 Definition of Big Data
  • The “V”s That Define Big Data
  • Application Case 9.1 Alternative Data for Market Analysis or Forecasts
  • 9.3 Fundamentals of Big Data Analytics
  • Business Problems Addressed by Big Data Analytics
  • Application Case 9.2 Big Data and Retail Business: The Rise of ABEJA
  • 9.4 Big Data Technologies
  • MapReduce
  • Why Use MapReduce
  • Hadoop
  • How Does Hadoop Work
  • Hadoop Technical Components
  • Hadoop: The Pros and Cons
  • NoSQL
  • Application Case 9.3 eBay’s Big Data Solution
  • Application Case 9.4 Understanding Quality and Reliability of Healthcare Support Information on Twit
  • 9.5 Big Data and Data Warehousing
  • Use Cases for Hadoop
  • Use Cases for Data Warehousing
  • The Gray Areas (Any One of the Two Would Do the Job)
  • Coexistence of Hadoop and Data Warehouse
  • 9.6 In-Memory Analytics and Apache Spark
  • Application Case 9.5 Databrick’s Apache SparkTM: Asia-Pacific Big Data Processing in Action
  • Architecture of Apache SparkTM
  • Getting Started with Apache SparkTM
  • 9.7 Big Data and Stream Analytics
  • Stream Analytics versus Perpetual Analytics
  • Critical Event Processing
  • Data Stream Mining
  • Applications of Stream Analytics
  • e-Commerce
  • Telecommunications
  • Application Case 9.6 Salesforce Is Using Streaming Data to Enhance Customer Value
  • Law Enforcement and Cybersecurity
  • Power Industry
  • Financial Services
  • Health Sciences
  • Government
  • 9.8 Big Data Vendors and Platforms
  • Infrastructure Services Providers
  • Analytics Solution Providers
  • Business Intelligence Providers Incorporating Big Data
  • Application Case 9.7 Using Social Media for Nowcasting Flu Activity
  • Application Case 9.8 Analyzing Disease Patterns from an Electronic Medical Records Data Warehouse
  • 9.9 Cloud Computing and Business Analytics
  • Data as a Service (DaaS)
  • Software as a Service (SaaS)
  • Platform as a Service (PaaS)
  • Infrastructure as a Service (IaaS)
  • Essential Technologies for Cloud Computing
  • Application Case 9.9 Major West Coast Utility Uses Cloud-Mobile Technology to Provide Real-Time Inci
  • Cloud Deployment Models
  • Major Cloud Platform Providers in Analytics
  • Analytics as a Service (AaaS)
  • Representative Analytics as a Service Offerings
  • Illustrative Analytics Applications Employing the Cloud Infrastructure
  • Using Azure IOT, Stream Analytics, and Machine Learning to Improve Mobile Health Care Services
  • Gulf Air Uses Big Data to Get Deeper Customer Insight
  • Chime Enhances Customer Experience Using Snowflake
  • 9.10 Location-Based Analytics for Organizations
  • Geospatial Analytics
  • Application Case 9.10 GIS and the Indian Retail Industry
  • Application Case 9.11 Starbucks Exploits GIS and Analytics to Grow Worldwide
  • Real-Time Location Intelligence
  • Analytics Applications for Consumers
  • Chapter Highlights
  • Key Terms
  • Questions for Discussion
  • Exercises
  • References
  • PART IV Robotics, Social Networks, AI, and IoT
  • Chapter 10 Robotics: Industrial and Consumer Applications
  • 10.1 Opening Vignette: Robots Provide Emotional Support to Patients and Children
  • 10.2 Overview of Robotics
  • 10.3 History of Robotics
  • 10.4 Illustrative Applications of Robotics
  • Changing Precision Technology
  • Adidas
  • BMW Employs Collaborative Robots
  • Tega
  • San Francisco Burger Eatery
  • Spyce
  • Mahindra & Mahindra Ltd
  • Robots in the Defense Industry
  • Pepper
  • Da Vinci Surgical System
  • Snoo–A Robotic Crib
  • MEDi
  • Care-E Robot
  • AGROBOT
  • 10.5 Components of Robots
  • 10.6 Various Categories of Robots
  • 10.7 Autonomous Cars: Robots in Motion
  • Autonomous Vehicle Development
  • Issues with Self-Driving Cars
  • 10.8 Impact of Robots on Current and Future Jobs
  • 10.9 Legal Implications of Robots and Artificial Intelligence
  • Tort Liability
  • Patents
  • Property
  • Taxation
  • Practice of Law
  • Constitutional Law
  • Professional Certification
  • Law Enforcement
  • Chapter Highlights
  • Key Terms
  • Questions for Discussion
  • Exercises
  • References
  • Chapter 11 Group Decision Making, Collaborative Systems, and AI Support
  • 11.1 Opening Vignette: Hendrick Motorsports Excels with Collaborative Teams
  • 11.2 Making Decisions in Groups: Characteristics, Process, Benefits, and Dysfunctions
  • Characteristics of Group Work
  • Types of Decisions Made by Groups
  • Group Decision-Making Process
  • Benefits and Limitations of Group Work
  • 11.3 Supporting Group Work and Team Collaboration with Computerized Systems
  • Overview of Group Support Systems (GSS)
  • Time/Place Framework
  • Group Collaboration for Decision Support
  • 11.4 Electronic Support for Group Communication and Collaboration
  • Groupware for Group Collaboration
  • Synchronous versus Asynchronous Products
  • Virtual Meeting Systems
  • Collaborative Networks and Hubs
  • Collaborative Hubs
  • Social Collaboration
  • Sample of Popular Collaboration Software
  • 11.5 Direct Computerized Support for Group Decision Making
  • Group Decision Support Systems (GDSS)
  • Characteristics of GDSS
  • Supporting the Entire Decision-Making Process
  • Brainstorming for Idea Generation and Problem Solving
  • Group Support Systems
  • 11.6 Collective Intelligence and Collaborative Intelligence
  • Definitions and Benefits
  • Computerized Support to Collective Intelligence
  • Application Case 11.1 Collaborative Modeling for Optimal Water Management: The Oregon State Universi
  • How Collective Intelligence May Change Work and Life
  • Collaborative Intelligence
  • How to Create Business Value from Collaboration: The IBM Study
  • 11.7 Crowdsourcing as a Method for Decision Support
  • The Essentials of Crowdsourcing
  • Crowdsourcing for Problem-Solving and Decision Support
  • Implementing Crowdsourcing for Problem Solving
  • Application Case 11.2 How InnoCentive Helped GSK Solve a Difficult Problem
  • 11.8 Artificial Intelligence and Swarm AI Support of Team Collaboration and Group Decision Making
  • AI Support of Group Decision Making
  • AI Support of Team Collaboration
  • Swarm Intelligence and Swarm AI
  • Application Case 11.3 XPRIZE Optimizes Visioneering
  • 11.9 Human–Machine Collaboration and Teams of Robots
  • Human–Machine Collaboration in Cognitive Jobs
  • Robots as Coworkers: Opportunities and Challenges
  • Teams of collaborating Robots
  • Chapter Highlights
  • Key Terms
  • Questions for Discussion
  • Exercises
  • References
  • Chapter 12 Knowledge Systems: Expert Systems, Recommenders, Chatbots, Virtual Personal Assistants, a
  • 12.1 Opening Vignette: Sephora Excels with Chatbots
  • 12.2 Expert Systems and Recommenders
  • Basic Concepts of Expert Systems (ES)
  • Characteristics and Benefits of ES
  • Typical Areas for ES Applications
  • Structure and Process of ES
  • Application Case 12.1 ES Aid in Identification of Chemical, Biological, and Radiological Agents
  • Why the Classical Type of ES Is Disappearing
  • Application Case 12.2 VisiRule
  • Recommendation Systems
  • Application Case 12.3 Netflix Recommender: A Critical Success Factor
  • 12.3 Concepts, Drivers, and Benefits of Chatbots
  • What Is a Chatbot
  • Chatbot Evolution
  • Components of Chatbots and the Process of Their Use
  • Drivers and Benefits
  • Representative Chatbots from around the World
  • 12.4 Enterprise Chatbots
  • The Interest of Enterprises in Chatbots
  • Enterprise Chatbots: Marketing and Customer Experience
  • Application Case 12.4 WeChat’s Super Chatbot
  • Application Case 12.5 How Vera Gold Mark Uses Chatbots to Increase Sales
  • Enterprise Chatbots: Financial Services
  • Enterprise Chatbots: Service Industries
  • Chatbot Platforms
  • Application Case 12.6 Transavia Airlines Uses Bots for Communication and Customer Care Delivery
  • Knowledge for Enterprise Chatbots
  • 12.5 Virtual Personal Assistants
  • Assistant for Information Search
  • If You Were Mark Zuckerberg, Facebook CEO
  • Amazon’s Alexa and Echo
  • Apple’s Siri
  • Google Assistant
  • Other Personal Assistants
  • Competition among Large Tech Companies
  • Knowledge for Virtual Personal Assistants
  • 12.6 Chatbots as Professional Advisors (Robo Advisors)
  • Robo Financial Advisors
  • Evolution of Financial Robo Advisors
  • Robo Advisors 2.0: Adding the Human Touch
  • Application Case 12.7 Barclays: AI and Chatbots in Banking
  • Managing Mutual Funds Using AI
  • Other Professional Advisors
  • IBM Watson
  • 12.7 Implementation Issues
  • Technology Issues
  • Disadvantages and Limitations of Bots
  • Quality of Chatbots
  • Setting Up Alexa’s Smart Home System
  • Constructing Bots
  • Chapter Highlights
  • Key Terms
  • Questions for Discussion
  • Exercises
  • References
  • Chapter 13 The Internet of Things as a Platform for Intelligent Applications
  • 13.1 Opening Vignette: CNH Industrial Uses the Internet of Things to Excel
  • 13.2 Essentials of IoT
  • Definitions and Characteristics
  • The IoT Ecosystem
  • Structure of IoT Systems
  • 13.3 Major Benefits and Drivers of IoT
  • Major Benefits of IoT
  • Major Drivers of IoT
  • Opportunities
  • 13.4 How IoT Works
  • IoT and Decision Support
  • 13.5 Sensors and Their Role in IoT
  • Brief Introduction to Sensor Technology
  • Application Case 13.1 Using Sensors, IoT, and AI for Environmental Control at the Athens Internation
  • How Sensors Work with IoT
  • Application Case 13.2 Rockwell Automation Monitors Expensive Oil and Gas Exploration Assets to Predi
  • Sensor Applications and Radio-Frequency Identification (RFID) Sensors
  • 13.6 Selected IoT Applications
  • A Large-Scale IoT in Action
  • Examples of Other Existing Applications
  • 13.7 Smart Homes and Appliances
  • Typical Components of Smart Homes
  • Smart Appliances
  • A Smart Home Is Where the Bot Is
  • Barriers to Smart Home Adoption
  • 13.8 Smart Cities and Factories
  • Application Case 13.3 Amsterdam on the Road to Become a Smart City
  • Smart Buildings: From Automated to Cognitive Buildings
  • Smart Components in Smart Cities and Smart Factories
  • Application Case 13.4 How IBM Is Making Cities Smarter Worldwide
  • Improving Transportation in the Smart City
  • Combining Analytics and IoT in Smart City Initiatives
  • Bill Gates’ Futuristic Smart City
  • Technology Support for Smart Cities
  • 13.9 Autonomous (Self-Driving) Vehicles
  • The Developments of Smart Vehicles
  • Application Case 13.5 Waymo and Autonomous Vehicles
  • Flying Cars
  • Implementation Issues in Autonomous Vehicles
  • 13.10 Implementing IoT and Managerial Considerations
  • Major Implementation Issues
  • Strategy for Turning Industrial IoT into Competitive Advantage
  • The Future of the IoT
  • Chapter Highlights
  • Key Terms
  • Questions for Discussion
  • Exercises
  • References
  • PART V Caveats of Analytics and AI
  • Chapter 14 Implementation Issues: From Ethics and Privacy to Organizational and Societal Impacts
  • 14.1 Opening Vignette: Why Did Uber Pay $245 Million to Waymo
  • 14.2 Implementing Intelligent Systems: An Overview
  • The Intelligent Systems Implementation Process
  • The Impacts of Intelligent Systems
  • 14.3 Legal, Privacy, and Ethical Issues
  • Legal Issues
  • Privacy Issues
  • Who Owns Our Private Data
  • Ethics Issues
  • Ethical Issues of Intelligent Systems
  • Other Topics in Intelligent Systems Ethics
  • 14.4 Successful Deployment of Intelligent Systems
  • Top Management and Implementation
  • System Development Implementation Issues
  • Connectivity and Integration
  • Security Protection
  • Leveraging Intelligent Systems in Business
  • Intelligent System Adoption
  • 14.5 Impacts of Intelligent Systems on Organizations
  • New Organizational Units and Their Management
  • Transforming Businesses and Increasing Competitive Advantage
  • Application Case 14.1 How 1-800-Flowers.com Uses Intelligent Systems for Competitive Advantage
  • Redesign of an Organization through the Use of Analytics
  • Intelligent Systems’ Impact on Managers’ Activities, Performance, and Job Satisfaction
  • Impact on Decision Making
  • Industrial Restructuring
  • 14.6 Impacts on Jobs and Work
  • An Overview
  • Are Intelligent Systems Going to Take Jobs—My Job
  • AI Puts Many Jobs at Risk
  • Application Case 14.2 White-Collar Jobs That Robots Have Already Taken
  • Which Jobs Are Most in Danger? Which Ones Are Safe
  • Intelligent Systems May Actually Add Jobs
  • Jobs and the Nature of Work Will Change
  • Conclusion: Let’s Be Optimistic
  • 14.7 Potential Dangers of Robots, AI, and Analytical Modeling
  • Position of AI Dystopia
  • The AI Utopia’s Position
  • The Open AI Project and the Friendly AI
  • The O’Neil Claim of Potential Analytics’ Dangers
  • 14.8 Relevant Technology Trends
  • Gartner’s Top Strategic Technology Trends for 2018 and 2019
  • Other Predictions Regarding Technology Trends
  • Summary: Impact on AI and Analytics
  • Ambient Computing (Intelligence)
  • 14.9 Future of Intelligent Systems
  • What Are the Major U.S. High-Tech Companies Doing in the Intelligent Technologies Field
  • AI Research Activities in China
  • Application Case 14.3 How Alibaba.com Is Conducting AI
  • The U.S.–China Competition: Who Will Control AI
  • The Largest Opportunity in Business
  • Conclusion
  • Chapter Highlights
  • Key Terms
  • Questions for Discussion
  • Exercises
  • References
  • Glossary
  • Index
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