A Structurally and Temporally Extended Bayesian Belief Network Model: Definitions, Properties, and Modeling Techniques

02/13/2013
by   Constantin F. Aliferis, et al.
0

We developed the language of Modifiable Temporal Belief Networks (MTBNs) as a structural and temporal extension of Bayesian Belief Networks (BNs) to facilitate normative temporal and causal modeling under uncertainty. In this paper we present definitions of the model, its components, and its fundamental properties. We also discuss how to represent various types of temporal knowledge, with an emphasis on hybrid temporal-explicit time modeling, dynamic structures, avoiding causal temporal inconsistencies, and dealing with models that involve simultaneously actions (decisions) and causal and non-causal associations. We examine the relationships among BNs, Modifiable Belief Networks, and MTBNs with a single temporal granularity, and suggest areas of application suitable to each one of them.

READ FULL TEXT

page 1

page 11

research
03/06/2013

Causal Independence for Knowledge Acquisition and Inference

I introduce a temporal belief-network representation of causal independe...
research
03/06/2013

Causality in Bayesian Belief Networks

We address the problem of causal interpretation of the graphical structu...
research
05/30/2018

Too Fast Causal Inference under Causal Insufficiency

Causally insufficient structures (models with latent or hidden variables...
research
03/27/2013

Temporal Reasoning About Uncertain Worlds

We present a program that manages a database of temporally scoped belief...
research
03/27/2013

Strategies for Generating Micro Explanations for Bayesian Belief Networks

Bayesian Belief Networks have been largely overlooked by Expert Systems ...
research
02/27/2013

Properties of Bayesian Belief Network Learning Algorithms

Bayesian belief network learning algorithms have three basic components:...
research
02/27/2013

Knowledge Engineering for Large Belief Networks

We present several techniques for knowledge engineering of large belief ...

Please sign up or login with your details

Forgot password? Click here to reset