Linked e-resources

Details

Chapter 1: Introduction to Model Explainability and Interpretability
Chapter 2: AI Ethics, Biasness and Reliability
Chapter 3: Model Explainability for Linear Models Using XAI Components
Chapter 4: Model Explainability for Non-Linear Models using XAI Components
Chapter 5: Model Explainability for Ensemble Models Using XAI Components
Chapter 6: Model Explainability for Time Series Models using XAI Components
Chapter 7: Model Explainability for Natural Language Processing using XAI Components
Chapter 8: AI Model Fairness Using What-If Scenario
Chapter 9: Model Explainability for Deep Neural Network Models
Chapter 10: Counterfactual Explanations for XAI models
Chapter 11: Contrastive Explanation for Machine Learning
Chapter 12: Model-Agnostic Explanations By Identifying Prediction Invariance
Chapter 13: Model Explainability for Rule based Expert System
Chapter 14: Model Explainability for Computer Vision.

Browse Subjects

Show more subjects...

Statistics

from
to
Export