Class Central is learner-supported. When you buy through links on our site, we may earn an affiliate commission.

Stanford University

Divide and Conquer - Concept-based Models for Efficient Transfer Learning

Stanford University via YouTube

Overview

Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Explore a one-hour conference talk by Shantanu Ghosh from Stanford University on developing concept-based interpretable models for efficient transfer learning in healthcare AI. Dive into the challenges of building generalizable AI models for medical imaging and learn about a novel approach that combines blackbox neural networks with interpretable components. Discover how this method iteratively carves out concept-based models using First Order Logic, potentially improving generalizability and reducing the need for extensive labeled data in target domains. Gain insights into the speaker's research on blurring the distinction between post-hoc explanations and interpretable model construction, and understand the implications for enhancing AI model flexibility, explainability, and transfer efficiency in medical applications.

Syllabus

MedAI #126: Divide & Conquer - Concept-based Models for Efficient Transfer Learning | Shantanu Ghosh

Taught by

Stanford MedAI

Reviews

Start your review of Divide and Conquer - Concept-based Models for Efficient Transfer Learning

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.