Search Results - "user profile"
Suggested Topics within your search.
Suggested Topics within your search.
- Artificial intelligence 2
- Authoring programs 2
- Automatic programming (Computer science) 2
- Intranets (Computer networks) 2
- Mobile communication systems 2
- Multimedia systems 2
- Multiple criteria decision making 2
- Online social networks 2
- Social media 2
- Social networks 2
- Web site development 2
- Web sites 2
- Windows PowerShell (Computer program language) 2
- Wireless communication systems 2
-
1
3G multimedia network services, accounting, and user profiles
Published 2003An electronic book accessible through the World Wide Web; click to view
Electronic eBook -
2
3G multimedia network services, accounting, and user profiles
Published 2003An electronic book accessible through the World Wide Web; click to view
Electronic eBook -
3
-
4
-
5
-
6
-
7
Automating Sharepoint 2010 with Windows Powershell 2.0
Published 2011Table of Contents: “…Machine generated contents note: Part 1: Getting Started with Windows PowerShell Basics.Chapter 1: PowerShell 101.Chapter 2: Making Your PowerShell Reusable.Chapter 3: Filtering and Iterating Your Data.Part 2: Installing and Configuring a SharePoint 2010 Environment.Chapter 4: Deploying New Installations and Upgrades.Chapter 5: Configuring Server Communications.Chapter 6: Configuring Farm Application Settings.Part 3: Deploying and Managing Applications.Chapter 7: Managing Web Applications.Chapter 8: Managing Site Collections.Chapter 9: Understanding Authentication.Chapter 10: Managing Features and Solutions.Part 4: Services and Service Applications.Chapter 11: Understanding Service Applications.Chapter 12: Provisioning Support Services.Chapter 13: Provisioning Business Insight Services.Chapter 14: Provisioning Search Services.Chapter 15: Provisioning Metadata and User Profile Services.Part 5: Managing and Maintaining a SharePoint Environment.Chapter 16: Managing Operational Settings.Chapter 17: Backing Up and Restoring a SharePoint Environment.Chapter 18: Optimizing the Performance of a SharePoint Environment.Part 6: Advanced Administration.Chapter 19: Remote Administration.Chapter 20: Multi-Tenancy.…”
An electronic book accessible through the World Wide Web; click to view
Electronic eBook -
8
Automating Sharepoint 2010 with Windows Powershell 2.0
Published 2011Table of Contents: “…Machine generated contents note: Part 1: Getting Started with Windows PowerShell Basics.Chapter 1: PowerShell 101.Chapter 2: Making Your PowerShell Reusable.Chapter 3: Filtering and Iterating Your Data.Part 2: Installing and Configuring a SharePoint 2010 Environment.Chapter 4: Deploying New Installations and Upgrades.Chapter 5: Configuring Server Communications.Chapter 6: Configuring Farm Application Settings.Part 3: Deploying and Managing Applications.Chapter 7: Managing Web Applications.Chapter 8: Managing Site Collections.Chapter 9: Understanding Authentication.Chapter 10: Managing Features and Solutions.Part 4: Services and Service Applications.Chapter 11: Understanding Service Applications.Chapter 12: Provisioning Support Services.Chapter 13: Provisioning Business Insight Services.Chapter 14: Provisioning Search Services.Chapter 15: Provisioning Metadata and User Profile Services.Part 5: Managing and Maintaining a SharePoint Environment.Chapter 16: Managing Operational Settings.Chapter 17: Backing Up and Restoring a SharePoint Environment.Chapter 18: Optimizing the Performance of a SharePoint Environment.Part 6: Advanced Administration.Chapter 19: Remote Administration.Chapter 20: Multi-Tenancy.…”
An electronic book accessible through the World Wide Web; click to view
Electronic eBook -
9
Multicriteria decision aid and artificial intelligence links, theory and applications /
Published 2013Table of Contents: “…Machine generated contents note: List of Contributors Preface Part One The Contributions of Intelligent Techniques in Multicriteria Decision Aiding 1 Computational Intelligence Techniques for Multicriteria Decision Aiding: An Overview 1.1 Introduction 1.2 The MCDA Paradigm 1.2.1 Modeling Process 1.2.2 Methodological Approaches 1.3 Computational Intelligence in MCDA 1.3.1 Statistical Learning and Data Mining 1.3.2 Fuzzy Modeling 1.3.3 Metaheuristics 1.4 Conclusions References 2 Intelligent Decision Support Systems 2.1 Introduction 2.2 Fundamentals of Human Decision Making 2.3 Decision Support System 2.4 Intelligent Decision Support Systems 2.4.1 Artificial Neural Networks for Intelligent Decision Support 2.4.2 Fuzzy Logic for Intelligent Decision Support 2.4.3 Expert Systems for Intelligent Decision Support 2.4.4 Evolutionary Computing for Intelligent Decision Support 2.4.5 Intelligent Agents for Intelligent Decision Support 2.5 Evaluating Intelligent Decision Support Systems 2.5.1 Determining Evaluation Criteria 2.5.2 Multi-Criteria Model for IDSS Assessment 2.6 Summary and Future Trends References Part Two Intelligent Technologies for Decision Support and Preference Modeling 3 Designing Distributed Multi-Criteria Decision Support Systems for Complex and Uncertain Situations 3.1 Introduction 3.2 Example Applications 3.3 Key Challenges 3.4 Making Trade-offs: Multi-criteria Decision Analysis 3.4.1 Multi-attribute Decision Support 3.4.2 Making Trade-offs Under Uncertainty 3.5 Exploring the Future: Scenario-based Reasoning 3.6 Making Robust Decisions: Combining MCDA and SBR 3.6.1 Decisions Under Uncertainty: The Concept of Robustness 3.6.2 Combining Scenarios and MCDA 3.6.3 Collecting, Sharing and Processing Information: A Distributed Approach 3.6.4 Keeping Track of Future Developments: Constructing Comparable Scenarios 3.6.5 Respecting Constraints and Requirements: Scenario Management 3.6.6 Assisting Evaluation: Assessing Large Numbers of Scenarios 3.7 Discussion 3.8 Conclusion References 4 Preference Representation with Ontologies 4.1 Introduction 4.1.1 Structure of the Chapter 4.2 Ontology-based Preference Models 4.3 Maintaining the User's Profile up to Date 4.4 Decision Making Methods Exploiting the Preference Information Stored in Ontologies 4.4.1 Recommendation Based on Aggregation 4.4.2 Recommendation Based on Similarities 4.4.3 Recommendation Based on Rules 4.5 Discussion and Open Questions References Part Three Decision Models 5 Neural Networks in Multicriteria Decision Support 5.1 Introduction 5.2 Basic Concepts of Neural Networks 5.2.1 Neural Networks for Intelligent Decision Support 5.3 Basics in Multicriteria Decision Aid 5.3.1 MCDM Problems 5.3.2 Solutions of MCDM Problems 5.4 Neural Networks and Multicriteria Decision Support 5.4.1 Review of Neural Network Applications to MCDM Problems 5.4.2 Discussion 5.5 Summary and Conclusions References 6 Rule-Based Approach to Multicriteria Ranking 6.1 Introduction 6.2 Problem Setting 6.3 Pairwise Comparison Table (PCT) 6.4 Rough Approximation of Outranking and Non-outranking Relations 6.5 Induction and Application of Decision Rules 6.6 Exploitation of Preference Graphs 6.7 Illustrative Example 6.8 Summary and Conclusions References 7 About the Application of Evidence Theory in MultiCriteria Decision Aid 7.1 Introduction 7.2 Evidence Theory: Some Concepts 7.2.1 Knowledge Model 7.2.2 Combination 7.2.3 Decision Making 7.3 New Concepts in Evidence Theory for MCDA 7.3.1 First Belief Dominance 7.3.2 RBBD Concept 7.4 Multicriteria Methods modeled by Evidence Theory 7.4.1 Evidential Reasoning Approach 7.4.2 DS/AHP 7.4.3 DISSET 7.4.4 A Choice Model Inspired by ELECTRE I 7.4.5 A Ranking Model Inspired by Xu et al.'…”
An electronic book accessible through the World Wide Web; click to view
Electronic eBook -
10
Multicriteria decision aid and artificial intelligence links, theory and applications /
Published 2013Table of Contents: “…Machine generated contents note: List of Contributors Preface Part One The Contributions of Intelligent Techniques in Multicriteria Decision Aiding 1 Computational Intelligence Techniques for Multicriteria Decision Aiding: An Overview 1.1 Introduction 1.2 The MCDA Paradigm 1.2.1 Modeling Process 1.2.2 Methodological Approaches 1.3 Computational Intelligence in MCDA 1.3.1 Statistical Learning and Data Mining 1.3.2 Fuzzy Modeling 1.3.3 Metaheuristics 1.4 Conclusions References 2 Intelligent Decision Support Systems 2.1 Introduction 2.2 Fundamentals of Human Decision Making 2.3 Decision Support System 2.4 Intelligent Decision Support Systems 2.4.1 Artificial Neural Networks for Intelligent Decision Support 2.4.2 Fuzzy Logic for Intelligent Decision Support 2.4.3 Expert Systems for Intelligent Decision Support 2.4.4 Evolutionary Computing for Intelligent Decision Support 2.4.5 Intelligent Agents for Intelligent Decision Support 2.5 Evaluating Intelligent Decision Support Systems 2.5.1 Determining Evaluation Criteria 2.5.2 Multi-Criteria Model for IDSS Assessment 2.6 Summary and Future Trends References Part Two Intelligent Technologies for Decision Support and Preference Modeling 3 Designing Distributed Multi-Criteria Decision Support Systems for Complex and Uncertain Situations 3.1 Introduction 3.2 Example Applications 3.3 Key Challenges 3.4 Making Trade-offs: Multi-criteria Decision Analysis 3.4.1 Multi-attribute Decision Support 3.4.2 Making Trade-offs Under Uncertainty 3.5 Exploring the Future: Scenario-based Reasoning 3.6 Making Robust Decisions: Combining MCDA and SBR 3.6.1 Decisions Under Uncertainty: The Concept of Robustness 3.6.2 Combining Scenarios and MCDA 3.6.3 Collecting, Sharing and Processing Information: A Distributed Approach 3.6.4 Keeping Track of Future Developments: Constructing Comparable Scenarios 3.6.5 Respecting Constraints and Requirements: Scenario Management 3.6.6 Assisting Evaluation: Assessing Large Numbers of Scenarios 3.7 Discussion 3.8 Conclusion References 4 Preference Representation with Ontologies 4.1 Introduction 4.1.1 Structure of the Chapter 4.2 Ontology-based Preference Models 4.3 Maintaining the User's Profile up to Date 4.4 Decision Making Methods Exploiting the Preference Information Stored in Ontologies 4.4.1 Recommendation Based on Aggregation 4.4.2 Recommendation Based on Similarities 4.4.3 Recommendation Based on Rules 4.5 Discussion and Open Questions References Part Three Decision Models 5 Neural Networks in Multicriteria Decision Support 5.1 Introduction 5.2 Basic Concepts of Neural Networks 5.2.1 Neural Networks for Intelligent Decision Support 5.3 Basics in Multicriteria Decision Aid 5.3.1 MCDM Problems 5.3.2 Solutions of MCDM Problems 5.4 Neural Networks and Multicriteria Decision Support 5.4.1 Review of Neural Network Applications to MCDM Problems 5.4.2 Discussion 5.5 Summary and Conclusions References 6 Rule-Based Approach to Multicriteria Ranking 6.1 Introduction 6.2 Problem Setting 6.3 Pairwise Comparison Table (PCT) 6.4 Rough Approximation of Outranking and Non-outranking Relations 6.5 Induction and Application of Decision Rules 6.6 Exploitation of Preference Graphs 6.7 Illustrative Example 6.8 Summary and Conclusions References 7 About the Application of Evidence Theory in MultiCriteria Decision Aid 7.1 Introduction 7.2 Evidence Theory: Some Concepts 7.2.1 Knowledge Model 7.2.2 Combination 7.2.3 Decision Making 7.3 New Concepts in Evidence Theory for MCDA 7.3.1 First Belief Dominance 7.3.2 RBBD Concept 7.4 Multicriteria Methods modeled by Evidence Theory 7.4.1 Evidential Reasoning Approach 7.4.2 DS/AHP 7.4.3 DISSET 7.4.4 A Choice Model Inspired by ELECTRE I 7.4.5 A Ranking Model Inspired by Xu et al.'…”
An electronic book accessible through the World Wide Web; click to view
Electronic eBook