de
en
Schliessen
Detailsuche
Bibliotheken
Projekt
Impressum
Datenschutz
zum Inhalt
Detailsuche
Schnellsuche:
OK
Ergebnisliste
Titel
Titel
Inhalt
Inhalt
Seite
Seite
Im Dokument suchen
Beyer, Oliver: Life-long learning with Growing Conceptual Maps. 2013
Inhalt
1 Introduction
1.1 Characteristics of life-long learning
1.2 Technical challenges
1.3 A basic model for life-long learning
1.4 Contributions
1.5 Components of GCM (Overview)
1.6 Outline
2 Related Work
2.1 Topological feature maps
2.1.1 Growing Neural Gas (GNG)
2.1.2 Extensions of GNG
2.2 Learning with continuous data streams
2.2.1 Challenges & Methodologies
2.2.2 Domain-specific solutions
2.3 Learning with weak supervision
2.3.1 Categories of SSL Methods
2.3.2 Data assumptions
2.3.3 Weak supervision and late labeling
2.4 Learning with non-stationary data
2.4.1 Challenges & Methodologies
2.4.2 Layering of memory
2.5 Learning with multi-view data
2.6 Summary
3 Classification of continuous data streams based on OGNG
3.1 Challenges
3.2 Contributions
3.3 Classification with GNG
3.3.1 Offline labeling strategies
3.3.2 Prediction strategies for GNG
3.3.3 Limitations of batch learning
3.4 Online Growing Neural Gas (OGNG)
3.4.1 Online labeling strategies for GNG
3.4.2 OGNG Algorithm
3.4.3 A uniform two-level architecture
3.5 Datasets
3.6 Evaluation
3.6.1 Parameters & OGNGtop
3.6.2 Experiments & Results
3.6.3 Discussion
3.7 Summary
4 Learning with weak supervision based on OSSGNG
4.1 Challenges
4.2 Contributions
4.3 Offline semi-supervised learning with GNG
4.3.1 Semi-supervised Growing Neural Gas (SSGNG)
4.3.2 SSGNG Algorithm
4.3.3 Limitations of SSGNG
4.4 Online Semi-supervised Growing Neural Gas (OSSGNG)
4.4.1 OSSGNG as extension of OGNG
4.4.2 OSSGNG Algorithm
4.4.3 Dynamics of the OSSGNG labeling
4.5 Datasets
4.6 Evaluation
4.6.1 Parameters
4.6.2 Experiments & Results
4.6.3 Discussion
4.7 Summary
5 Learning with non-stationary data based on DYNG
5.1 Challenges
5.2 Contributions
5.2.1 Growing Neural Gas with Utility (GNG-U)
5.2.2 GNG-U Algorithm
5.2.3 Limitations of GNG-U
5.3 Dynamic Online Growing Neural Gas (DYNG)
5.3.1 DYNG as extension of OGNG
5.3.2 DYNG Algorithm
5.3.3 Memory Structures
5.4 Dataset
5.5 Evaluation
5.5.1 Parameters & OGNG-U
5.5.2 Experiments & Results
5.5.3 Discussion
5.6 Summary
6 Learning with multi-view data based on VONG
6.1 Challenges
6.2 Contributions
6.3 OGNG+: A naive multi-label approach based on OGNG
6.3.1 OGNG+ Algorithm
6.3.2 Limitations of OGNG+
6.4 Multi-view Online Growing Neural Gas (VONG)
6.4.1 VONG as multi-view extension of OGNG
6.4.2 VONG Algorithm
6.4.3 Multiplexing of views
6.5 Datasets
6.6 Evaluation
6.6.1 Parameters & VONG-M
6.6.2 Experiments & Results
6.6.3 Discussion
6.7 Summary
7 Applications for Growing Conceptual Maps
7.1 Classification of textual data in social media streams
7.1.1 The TwitterLL corpus
7.1.2 The Reuters RCV1 v2 corpus
7.1.3 Experiments & Parameters
7.1.4 Results & Discussion
7.2 Human activity classification
7.2.1 Human Activity Classification with OGNG
7.2.2 KTH human motion dataset
7.2.3 Experiments & Results
7.2.4 Discussion
7.3 Visualization of Conceptual Maps
7.3.1 A visualization schema for Growing Conceptual Maps
7.3.2 A generic visualizations concept
7.3.3 Examples of visualized Conceptual Maps
7.3.4 Discussion
7.4 Summary
8 Conclusion
A Conceptual Map Visualizations
B Bibliography