Feature Wise
Feature-wise research explores how individual features within data contribute to model performance and interpretability across diverse machine learning tasks. Current efforts focus on developing methods for feature selection, extraction, and fusion, employing techniques like sparse autoencoders, attention mechanisms, and graph convolutional networks to optimize feature utilization and enhance model accuracy and explainability. This work is significant for improving model efficiency, robustness, and trustworthiness, with applications ranging from medical image analysis and malware detection to natural language processing and financial forecasting.
Papers
Analysis of a Deep Learning Model for 12-Lead ECG Classification Reveals Learned Features Similar to Diagnostic Criteria
Theresa Bender, Jacqueline Michelle Beinecke, Dagmar Krefting, Carolin Müller, Henning Dathe, Tim Seidler, Nicolai Spicher, Anne-Christin Hauschild
Discussion of Features for Acoustic Anomaly Detection under Industrial Disturbing Noise in an End-of-Line Test of Geared Motors
Peter Wissbrock, David Pelkmann, Yvonne Richter