Bayesian Networks without Tears.

Authors

  • Eugene Charniak

DOI:

https://doi.org/10.1609/aimag.v12i4.918

Abstract

I give an introduction to Bayesian networks for AI researchers with a limited grounding in probability theory. Over the last few years, this method of reasoning using probabilities has become popular within the AI probability and uncertainty community. Indeed, it is probably fair to say that Bayesian networks are to a large segment of the AI-uncertainty community what resolution theorem proving is to the AIlogic community. Nevertheless, despite what seems to be their obvious importance, the ideas and techniques have not spread much beyond the research community responsible for them. This is probably because the ideas and techniques are not that easy to understand. I hope to rectify this situation by making Bayesian networks more accessible to the probabilistically unsophisticated.

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Published

1991-12-15

How to Cite

Charniak, E. (1991). Bayesian Networks without Tears. AI Magazine, 12(4), 50. https://doi.org/10.1609/aimag.v12i4.918

Issue

Section

Articles