signallarn
Signallarn is a term used to describe a family of data-driven methods for learning from time-series and signal data by integrating traditional signal processing with machine learning. The approach emphasizes combining domain-specific feature extraction with predictive modeling to produce interpretable representations and robust predictions.
Etymology and usage: The word signallarn blends "signal" and "learn" and is used in academic and industrial
Architecture: A typical signallarn workflow comprises (1) pre-processing and denoising; (2) feature extraction or transformation; (3)
Applications: Signallarn has been applied to audio processing, biological signals such as ECG and EEG, industrial
Strengths and limitations: The approach can improve data efficiency and interpretability, especially on smaller datasets, and
Further reading and related concepts: Time-series analysis, signal processing, hybrid modeling, and explainable artificial intelligence.