Linked e-resources
Details
Table of Contents
Overview of the Book
Causal Inference Preliminary
Causal Effect Estimation: Basic Methodologies
Causal Inference on Graphs
Causal Effect Estimation: Recent Progress, Challenges, and Opportunities
Fair Machine Learning Through the Lens of Causality
Causal Explainable AI
Causal Domain Generalization
Causal Inference and Natural Language Processing
Causal Inference and Recommendations
Causality Encourage the Identifiability of Instance-Dependent Label Noise
Causal Interventional Time Series Forecasting on Multi-horizon and Multi-series Data
Continual Causal Effect Estimation
Summary.
Causal Inference Preliminary
Causal Effect Estimation: Basic Methodologies
Causal Inference on Graphs
Causal Effect Estimation: Recent Progress, Challenges, and Opportunities
Fair Machine Learning Through the Lens of Causality
Causal Explainable AI
Causal Domain Generalization
Causal Inference and Natural Language Processing
Causal Inference and Recommendations
Causality Encourage the Identifiability of Instance-Dependent Label Noise
Causal Interventional Time Series Forecasting on Multi-horizon and Multi-series Data
Continual Causal Effect Estimation
Summary.