T Qin, TZ Wang, ZH Zhou - Proceedings of the 2023 SIAM International …, 2023 - SIAM
Discovering causal relations from observational data is at the heart of scientific research. Most causal discovery methods assume that the data have only one variable type. In real …
Abstract We present Global Causal Analysis (GCA) for text classification. GCA is a technique for global model-agnostic explainability drawing from well-established observational causal …
This doctoral thesis delves into the realms of abstractive summarization and causal discovery within complex systems. I present a set of new methods that counter prevailing …
First, I want to congratulate the authors for this highly interesting paper proposing a new class of hybrid Bayesian networks and proving that they can be learned from data (both …
This is an interesting paper that distils structure learning in Bayesian networks (BNs) and kernel methods in a quest to produce more flexible distributional assumptions. Conditional …
A causal graph can be generated from a dataset using a particular causal algorithm, for instance, the PC algorithm, Fast Causal Inference (FCI) or Really Fast Causal Inference …