Title of article :
Embedded Trees: Estimation of Gaussian Processes on Graphs with Cycles
Author/Authors :
E. B. Sudderth، نويسنده , , M. J. Wainwright، نويسنده , , and A. S. Willsky، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Abstract :
Graphical models provide a powerful general framework
for encoding the structure of large-scale estimation problems.
However, the graphs describing typical real-world phenomena
contain many cycles, making direct estimation procedures prohibitively
costly. In this paper, we develop an iterative inference
algorithm for general Gaussian graphical models. It operates
by exactly solving a series of modified estimation problems on
spanning trees embedded within the original cyclic graph. When
these subproblems are suitably chosen, the algorithm converges
to the correct conditional means. Moreover, and in contrast
to many other iterative methods, the tree-based procedures we
propose can also be used to calculate exact error variances.
Although the conditional mean iteration is effective for quite
densely connected graphical models, the error variance computation
is most efficient for sparser graphs. In this context,
we present a modeling example suggesting that very sparsely
connected graphs with cycles may provide significant advantages
relative to their tree-structured counterparts, thanks both to the
expressive power of these models and to the efficient inference
algorithms developed herein.
The convergence properties of the proposed tree-based iterations
are characterized both analytically and experimentally. In
addition, by using the basic tree-based iteration to precondition
the conjugate gradient method, we develop an alternative, accelerated
iteration that is finitely convergent. Simulation results
are presented that demonstrate this algorithm’s effectiveness on
several inference problems, including a prototype distributed
sensing application.
Keywords :
Markov random fields , Multiscale , tree-based preconditioners. , belief propagation , error variances , Gaussianprocesses , Graphical models , Optimal Estimation
Journal title :
IEEE TRANSACTIONS ON SIGNAL PROCESSING
Journal title :
IEEE TRANSACTIONS ON SIGNAL PROCESSING