Combining argumentation and bayesian nets for breast cancer prognosis

Journal of Logic, Language and Information 15 (1):155-178 (2006)
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Abstract

We present a new framework for combining logic with probability, and demonstrate the application of this framework to breast cancer prognosis. Background knowledge concerning breast cancer prognosis is represented using logical arguments. This background knowledge and a database are used to build a Bayesian net that captures the probabilistic relationships amongst the variables. Causal hypotheses gleaned from the Bayesian net in turn generate new arguments. The Bayesian net can be queried to help decide when one argument attacks another. The Bayesian net is used to perform the prognosis, while the argumentation framework is used to provide a qualitative explanation of the prognosis.

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2009-01-28

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Author Profiles

Jon Williamson
University of Manchester
Matt Williams
California State University, Fullerton

Citations of this work

Interpreting causality in the health sciences.Federica Russo & Jon Williamson - 2007 - International Studies in the Philosophy of Science 21 (2):157 – 170.
Interpreting probability in causal models for cancer.Federica Russo & Jon Williamson - 2007 - In Federica Russo & Jon Williamson (eds.), Causality and Probability in the Sciences. College Publications. pp. 217--242.
Forecasting with jury-based probabilistic argumentation.Francesca Toni, Antonio Rago & Kristijonas Čyras - 2023 - Journal of Applied Non-Classical Logics 33 (3):224-243.

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