Machine Learning on ECG to predict heart-beat classification.
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Updated
Mar 18, 2019 - Jupyter Notebook
Machine Learning on ECG to predict heart-beat classification.
Arrhythmia detection using topological data analysis in combination with a convolutional neural network.
An investigation into tabular classification with deep NNs for ETHZ Machine Learning for Healthcare on the MIT-BIH arrythmia dataset .
MIT-BIH Arrhythmia Classification
Newton-Puiseux XAI & calibration for complex-valued neural networks · Symbolic–numeric local analysis, phase-aware temp-scaling, synthetic C² helix + MIT-BIH ECG
Deep learning model for automated classification of cardiac arrhythmias using ECG signals from the MIT-BIH database. The project combines signal preprocessing via wavelet transform and a multi-layer CNN architecture, achieving over 98% test accuracy across 15 heartbeat classes. Designed for real-time and clinical applications.
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