one of the Spring 2005 DIST Colloquium Series |
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“A Unifying
Framework for Learning Bayesian Network Structures Tuesday, March 29, 2005 Abstract: We present a block learning
algorithm for learning large Bayesian network structures
from sparse data in a distributed fashion. Adopting divide-and-conquer
strategy, firstly, the block learning algorithm discovers
local structures of Bayesian networks individually with
preferred learning techniques. After that, the
learned local structures are combined together to recover
the final Bayesian network. A series of experiments demonstrate
that the block learning algorithm is able to learn a
large Bayesian network structure from a small data set.
Moreover, this algorithm is scalable and is capable to
encompass the existing learning techniques. A study on
the learning granularity, the learning engine and the
algorithm design discovers that the block learning algorithm
provides a uniform view on various learning techniques.
Consequently, a unifying learning framework is built
on the basis of the block learning algorithm. Bio: Mr. Yi-Feng Zeng is currently a PhD candidate in
the Department of Industrial and Systems Engineering,
Faculty of Engineering, at National University of Singapore
(NUS), in the final phase of his dissertation work.
He received his M.Sc. degree in Computer and Information
Engineering at Xia'men University, China in 2002. Now,
he is doing his PHD research work in Bio-medical Decision
Engineering (BiDE) Group, School of Computing, at NUS.
His current research interests include Bayesian network
leaning, normative multi-agent decision making and
systems biology. |
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