Reasoning with Cause and Effect: Model Testing, Axiomatization, and Identification
Personnel
Dr. Jin Tian , Assistant Professor of Computer Science, Principal Investigator
Summary
This project addresses fundamental issues in causal reasoning with the long range goal of developing theoretical foundations that will facilitate building intelligent systems capable of operating autonomously in dynamic and uncertain environments. This project uses causal Bayesian networks to represent and reason about causal relationships and to address several related topics, including axiomatizing causal reasoning, model testing, identifying causal effects, and causal reasoning in structural equation models. In addition, the project will produce a causal reasoning software tool that can answer causal queries. Causal reasoning is intrinsically a multidisciplinary topic and the results of this project, particularly the resulting software tools, would be useful in other fields such as statistics, economics, health care, and social sciences.
Funding
This research project supported in part by a grant from the national Science Foundation IIS 0347846