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Losing, Viktor: Memory Models for Incremental Learning Architectures. 2019
Inhalt
Contents
Introduction
Contributions and Manuscript Structure
Publications in the Context of this Thesis
Historical Background
Biologically Inspired Learning
Pseudo-Incremental Learning
Early Incremental/Online Learning
Support Vector Machine and Convex Optimization
The Rise of Tree Ensembles
Current State
Incremental Learning
Overarching Learning Scenario
Definition
Challenges
Incremental Learning Vector Quantization
Foundation
Related Work
Learning Architecture
Proposed Placement Strategy: COSMOS
Experiments
Discussion
Local Split-Time Prediction
Foundation
Related Work
Proposed Method: OSM
Experiments
Discussion
A Practice-Oriented Survey
Foundation
Related Work
Datasets and Implementations
Hyperparameter Optimization
Measure of Model Complexity
Evaluation Settings
Experiments
Discussion
Concept Drift
Foundation
Definition
Types of Concept Drift
Patterns of Change
Model Evaluation
Challenges
Related Work
Drift Detection
Sliding Window
Bagging Ensembles
State-of-the-art Methods
Taxonomy
Quantifying Concept Drift
Prerequisites
Test for Real Drift
Test for Virtual Drift
Drift Degree
Datasets
Experiments
Discussion
Self-Adjusting Memory (SAM)
Architecture
Time Complexity
Speedup via Approximate ITTE
Experiments - SAM-kNN
Experiments - SAM-NB
Discussion
SAM-Ensemble (SAM-E)
Architecture
Parallel Implementation
Datasets
Experiments
Discussion
Real-World Applications
Interactive Online Learning on a Mobile Robot
Application Setup
Experiments
Discussion
Personalized Maneuver Prediction
Dataset
Experiments
Discussion
Personalized Human Action Classification
Online Action Classification
Dataset
Experiments
Discussion
Conclusion
High-Level Insights
Outlook
Appendix
Detailed results
Motion Classification
Practice-oriented survey
Datasets
Artificial
Real-world
Bibliography