Explainable deep learning models for healthcare - CDSS 3
About this Course
This course will introduce the concepts of interpretability and explainability in machine learning applications. The learner will understand the difference between global, local, model-agnostic and model-specific explanations. State-of-the-art explainability methods such as Permutation Feature Importance (PFI), Local Interpretable Model-agnostic Explanations (LIME) and SHapley Additive exPlanation (SHAP) are explained and applied in time-series classification. Subsequently, model-specific explanations such as Class-Activation Mapping (CAM) and Gradient-Weighted CAM are explained and implemented. The learners will understand axiomatic attributions and why they are important. Finally, attention mechanisms are going to be incorporated after Recurrent Layers and the attention weights will be visualised to produce local explanations of the model.Created by: University of Glasgow

Related Online Courses
A lot of code is building up from the most basic primitive elements of the language to increasingly faithful and meaningful things. In this course you will see how to author more complex ideas and... more
There are multiple project management and planning tools on the web. In this project you will explore Asana. By using a project management tracking tool you will see an increase in accountability... more
The course \"Neuroscience Methods\" provides hands-on experience with cutting-edge neuroscience methods, equipping you to explore how the brain supports perception, attention, memory, and emotion.... more
This is a self-paced lab that takes place in the Google Cloud console. In this lab, you will learn how to use Google\'s Vertex AI SDK to interact with the powerful Gemini generative AI model,... more
This specialization is intended for people without programming experience who seek to develop C++ programming skills and learn about the underlying computer science concepts that will allow them to... more