Combining General and Personalized Models for Epilepsy Detection with
Hyperdimensional Computing
- URL: http://arxiv.org/abs/2303.14745v1
- Date: Sun, 26 Mar 2023 14:51:25 GMT
- Title: Combining General and Personalized Models for Epilepsy Detection with
Hyperdimensional Computing
- Authors: Una Pale, Tomas Teijeiro, David Atienza
- Abstract summary: Epilepsy is a chronic neurological disorder with a significant prevalence.
There is still no adequate technological support to enable epilepsy detection and continuous outpatient monitoring in everyday life.
In this work, we demonstrate a few additional aspects in which HD computing, and the way its models are built and stored, can be used for further understanding, comparing, and creating more advanced machine learning models for epilepsy detection.
- Score: 4.538319875483978
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Epilepsy is a chronic neurological disorder with a significant prevalence.
However, there is still no adequate technological support to enable epilepsy
detection and continuous outpatient monitoring in everyday life.
Hyperdimensional (HD) computing is an interesting alternative for wearable
devices, characterized by a much simpler learning process and also lower memory
requirements. In this work, we demonstrate a few additional aspects in which HD
computing, and the way its models are built and stored, can be used for further
understanding, comparing, and creating more advanced machine learning models
for epilepsy detection. These possibilities are not feasible with other
state-of-the-art models, such as random forests or neural networks. We compare
inter-subject similarity of models per different classes (seizure and
non-seizure), then study the process of creation of generalized models from
personalized ones, and in the end, how to combine personalized and generalized
models to create hybrid models. This results in improved epilepsy detection
performance. We also tested knowledge transfer between models created on two
different datasets. Finally, all those examples could be highly interesting not
only from an engineering perspective to create better models for wearables, but
also from a neurological perspective to better understand individual epilepsy
patterns.
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