Latent Structure and Causality: Inference from Data

World Scientific Publishing Company
SKU:
9789811290688
|
ISBN13:
9789811290688
$95.62
(No reviews yet)
Condition:
New
Usually Ships in 24hrs
Current Stock:
Estimated Delivery by: | Fastest delivery by:
Adding to cart… The item has been added
Buy ebook
Inferring latent structure and causality is crucial for understanding underlying patterns and relationships hidden in the data. This book covers selected models for latent structures and causal networks and inference methods for these models.After an introduction to the EM algorithm on incomplete data, the book provides a detailed coverage of a few widely used latent structure models, including mixture models, hidden Markov models, and stochastic block models. EM and variation EM algorithms are developed for parameter estimation under these models, with comparison to their Bayesian inference counterparts. We make further extensions of these models to related problems, such as clustering, motif discovery, Kalman filtering, and exchangeable random graphs. Conditional independence structures are utilized to infer the latent structures in the above models, which can be represented graphically. This notion generalizes naturally to the second part on graphical models that use graph separation to encode conditional independence. We cover a variety of graphical models, including undirected graphs, directed acyclic graphs (DAGs), chain graphs, and acyclic directed mixed graphs (ADMGs), and various Markov properties for these models. Recent methods that learn the structure of a graphical model from data are reviewed and discussed. In particular, DAGs and Bayesian networks are an important class of mathematical models for causality. After an introduction to causal inference with DAGs and structural equation models, we provide a detailed review of recent research on causal discovery via structure learning of graphs. Finally, we briefly introduce the causal bandit problem with sequential intervention.


  • | Author: Qing Zhou
  • | Publisher: World Scientific Publishing Company
  • | Publication Date: Apr 11, 2025
  • | Number of Pages: 00288 pages
  • | Binding: Hardback or Cased Book
  • | ISBN-10: 9811290687
  • | ISBN-13: 9789811290688
Author:
Qing Zhou
Publisher:
World Scientific Publishing Company
Publication Date:
Apr 11, 2025
Number of pages:
00288 pages
Binding:
Hardback or Cased Book
ISBN-10:
9811290687
ISBN-13:
9789811290688