Big data analysis : new algorithms for a new society /: new algorithms for a new society. ([2015])
- Record Type:
- Book
- Title:
- Big data analysis : new algorithms for a new society /: new algorithms for a new society. ([2015])
- Main Title:
- Big data analysis : new algorithms for a new society
- Further Information:
- Note: Nathalie Japkowicz, Jerzy Stefanowski, editors.
- Editors:
- Japkowicz, Nathalie
Stefanowski, Jerzy - Contents:
- Preface; Acknowledgments; Contents; A Machine Learning Perspective on Big Data Analysis; 1 Preliminaries; 2 What Do We Call Big Data Analysis?; 2.1 General Definitions of Big Data; 2.2 Machine Learning and Data Mining Versus Big Data Analysis; 2.3 Some Well-Known and Successful Applications of Big Data Analysis; 2.4 Machine Learning Innovations Driven by Big Data Analysis; 3 Is Big Data Analysis a Game Changer?; 3.1 Big Data Analysis and the Scientific Method; 3.2 Big Data Analysis and Society; 4 Edited Volume's Contributions; 4.1 Problem Centric Contributions 4.2 Domain Centric ContributionsReferences; An Insight on Big Data Analytics; 1 Introduction; 2 Is Big Data Fit for Purpose?; 2.1 Do We Need Big Data?; 2.2 What About Big Data Do We Need?; 3 Basic Toolbox for Analysing Big Data; 4 Dividing the Analytical Task Up into Manageable Chunks; 4.1 Generalised Linear Models Example; 4.2 Forecasting Counts in Complex Tabular Settings; 5 Reducing the Size of the Data that Needs to Be Modeled; 6 The Tension Between Data Mining and Statistics; 7 Does the New Big Data Initiative Need No Theory?; 8 Who Owns Big Data?; 9 Discussion; References Toward Problem Solving Support Based on Big Data and Domain Knowledge: Interactive Granular Computing and Adaptive Judgement1 Introduction; 2 Agent Language for Basic Tasks in BDT; 3 Postulates about Physical World and Agents; 3.1 Physical Character of Agents, C-Granule, and Interaction Models; 3.2 Efficiency Management of Task Realization by aPreface; Acknowledgments; Contents; A Machine Learning Perspective on Big Data Analysis; 1 Preliminaries; 2 What Do We Call Big Data Analysis?; 2.1 General Definitions of Big Data; 2.2 Machine Learning and Data Mining Versus Big Data Analysis; 2.3 Some Well-Known and Successful Applications of Big Data Analysis; 2.4 Machine Learning Innovations Driven by Big Data Analysis; 3 Is Big Data Analysis a Game Changer?; 3.1 Big Data Analysis and the Scientific Method; 3.2 Big Data Analysis and Society; 4 Edited Volume's Contributions; 4.1 Problem Centric Contributions 4.2 Domain Centric ContributionsReferences; An Insight on Big Data Analytics; 1 Introduction; 2 Is Big Data Fit for Purpose?; 2.1 Do We Need Big Data?; 2.2 What About Big Data Do We Need?; 3 Basic Toolbox for Analysing Big Data; 4 Dividing the Analytical Task Up into Manageable Chunks; 4.1 Generalised Linear Models Example; 4.2 Forecasting Counts in Complex Tabular Settings; 5 Reducing the Size of the Data that Needs to Be Modeled; 6 The Tension Between Data Mining and Statistics; 7 Does the New Big Data Initiative Need No Theory?; 8 Who Owns Big Data?; 9 Discussion; References Toward Problem Solving Support Based on Big Data and Domain Knowledge: Interactive Granular Computing and Adaptive Judgement1 Introduction; 2 Agent Language for Basic Tasks in BDT; 3 Postulates about Physical World and Agents; 3.1 Physical Character of Agents, C-Granule, and Interaction Models; 3.2 Efficiency Management of Task Realization by a Single Agent and Agent Society; 4 Interactive Granular Computing (IGrC); 5 Interactive Computations on Complex Granules Realized by Agents; 6 BDT and Problem Solving; 6.1 Problem Specification by Users 6.2 Construction and Discovery of Relevant Granules6.3 Risk Management by Agents in BDT; 6.4 Adaptive Judgement; 7 Conclusions; References; An Overview of Concept Drift Applications; 1 Introduction; 2 Knowledge Discovery Process and Industry Standards; 3 Categorization of Concept Drift Tasks and Applications; 3.1 Characterization of Application Tasks; 3.2 A Landscape of Concept Drift Application Areas; 4 An Overview of Application Oriented Studies on Learning from Evolving Data; 4.1 Monitoring and Control; 4.2 Information Management; 4.3 Analytics and Diagnostics; 5 Discussion and Conclusions … (more)
- Publisher Details:
- Cham : Springer
- Publication Date:
- 2015
- Copyright Date:
- 2016
- Extent:
- 1 online resource (xii, 329 pages), illustrations (some color)
- Subjects:
- 006.3/12
Engineering
Data mining
Big data
Machine learning
COMPUTERS / General
Big data
Data mining
Machine learning
Computers -- Intelligence (AI) & Semantics
Artificial intelligence
Artificial intelligence
Electronic books
Electronic books
Electronic books - Languages:
- English
- ISBNs:
- 9783319269894
3319269895 - Related ISBNs:
- 9783319269870
- Notes:
- Note: ReferencesAnalysis of Text-Enriched Heterogeneous Information Networks; 1 Introduction; 2 Information Networks; 3 Analysis of Information Networks; 3.1 Tasks in Homogeneous Information Network Analysis; 3.2 Tasks in Heterogeneous Information Network Analysis; 3.3 Data-Enriched Network Analysis; 4 Mining Text-Enriched Heterogeneous Information Networks; 4.1 Data Structure; 4.2 Network Decomposition; 4.3 Feature Vector Construction; 4.4 Data Fusion; 4.5 Scalability Issues; 5 VideoLectures.NET Categorization Case Study; 5.1 Data Set; 5.2 Experiment Description; 5.3 Evaluation and Results
Note: Online resource; title from PDF title page (SpringerLink, viewed December 30, 2015). - Access Rights:
- Legal Deposit; Only available on premises controlled by the deposit library and to one user at any one time; The Legal Deposit Libraries (Non-Print Works) Regulations (UK).
- Access Usage:
- Restricted: Printing from this resource is governed by The Legal Deposit Libraries (Non-Print Works) Regulations (UK) and UK copyright law currently in force.
- View Content:
- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library HMNTS - ELD.DS.355383
- Ingest File:
- 01_315.xml