Title: | On the Role of Partial Differentiation in Probabilistic Inference. |
Authors: | Adnan Darwiche |
Series: | Linköping Electronic
Articles in Computer and Information Science ISSN 1401-9841 |
Issue: | Vol. 5(2000), number not yet determined |
URL: | http://www.ep.liu.se/ea/cis/2000/ |
Abstract: |
We present in this paper one of the simplest, yet most comprehensive
frameworks for inference in Bayesian networks. According to this
framework, one compiles a Bayesian network into a polynomial --
in which variables
correspond to potential evidence and network parameters --
and then computes the partial derivatives of this polynomial
with respect to each variable. Once such derivatives are made
available, one can compute
in constant-time answers to a large class of probabilistic
queries, which are central to classical inference, parameter
estimation, model validation and sensitivity analysis. We
show a number of key results relating to this framework.
First, given a Bayesian network of size n and an elimination
order of width w, we present an elimination algorithm for
compiling the polynomial in
Next,
given some evidence and parameter setting, we show
that the compiled polynomial can be evaluated, and all
its first partial derivatives computed simultaneously, in
Finally, we show that second
partial derivatives can all be computed simultaneously
in The proposed framework provides new insights into the role of partial differentiation in probabilistic inference. Moreover, its combined simplicity, comprehensiveness and computational complexity appear to be unique among existing frameworks for inference in Bayesian networks. |
---|---|
Keywords: |
(Publication date not yet set) | paper.ps |
---|---|
Info from authors | |
Third-party information |
Editor-in-chief: editor@ep.liu.se Webmaster: webmaster@ep.liu.se | ~ |