event

PhD Defense | Generalizable and Explainable Methods for Learning from Physiological Data and Beyond

Primary tabs

Ran Liu - Machine Learning PhD Student - School of Electrical and Computer Engineering

Date: April 22nd

Time: 3:30 PM – 5:00 PM ET

Location: Coda C1103 Lindberg

Meeting Link: https://gatech.zoom.us/j/97333964943?pwd=UEJBQ2MzU2pXZk1RQmRzeGtkYXh2Zz09

Committee

Dr.  Eva Dyer (Advisor), Biomedical Engineering, Georgia Institute of Technology

Dr. Anqi Wu, Computational Science and Engineering, Georgia Institute of Technology

Dr. Zsolt Kira, Interactive Computing, Georgia Institute of Technology

Dr. Vidya Muthukumar, Electrical and Computer Engineering, Industrial and Systems Engineering, Georgia Institute of Technology

Dr. Vince Calhoun, Electrical and Computer Engineering, Georgia Institute of Technology

Abstract

Deep learning (DL) methods have significantly advanced the fields of neuroscience and physiology. However, conventional DL methods that are tailored to specific populations and tasks are no longer adequate in comprehending large-scale, multimodal, and multitask physiological datasets. In this thesis, we propose methods that aim to improve DL methods from the perspective of: (i) Generalizability, enabling applications across diverse modalities, tasks, and subjects, and (ii) Explainability, enabling researchers to understand and potentially customize the learning process to suit specific distributions. These improvements are not only crucial for physiological datasets, which typically require domain knowledge to comprehend, but also improve deep learning methodologies and benefit the broader ML community.

Groups

Status

  • Workflow Status:Published
  • Created By:shatcher8
  • Created:04/16/2024
  • Modified By:shatcher8
  • Modified:04/16/2024

Categories

Keywords

  • No keywords were submitted.