It was recently proved using graph covers (Ruozzi, 2012) that the Bethe partition function is upper bounded by the true partition function for a binary pairwise model that is attractive. Here we provide a new, arguably simpler proof from first principles. We make use of the idea of clamping a variable to a particular value. For an attractive model, we show that summing over the Bethe partition functions for each sub-model obtained after clamping any variable can only raise (and hence improve) the approximation. In fact, we derive a stronger result that may have other useful implications. Repeatedly clamping until we obtain a model with no cycles, where the Bethe approximation is exact, yields the result. We also provide a related lower boun...
Abstract—The Bethe approximation is a well-known approx-imation of the partition function used in st...
When belief propagation (BP) converges, it does so to a stationary point of the Bethe free energy F,...
Belief propagation is a remarkably effective tool for inference, even when applied to networks with ...
It was recently proved using graph covers (Ruozzi, 2012) that the Bethe partition function is upper ...
We examine the effect of clamping variables for approximate inference in undirected graphical models...
We examine the effect of clamping variables for approximate inference in undirected graphical models...
This is the author accepted manuscript. The final version is available from Microtome Publishing via...
Graphical models provide a flexible, powerful and compact way to model relationships between random ...
When belief propagation (BP) converges, it does so to a stationary point of the Bethe free energy F,...
For undirected graphical models, belief propaga-tion often performs remarkably well for approxi-mate...
When belief propagation (BP) converges, it does so to a stationary point of the Bethe free energy $F...
When belief propagation (BP) converges, it does so to a stationary point of the Bethe free en-ergy F...
Computing the partition function (i.e., the normalizing constant) of a given pair-wise binary graphi...
Computing the partition function (i.e., the normalizing constant) of a given pair-wise binary graphi...
Computing the partition function (i.e., the normalizing constant) of a given pair-wise binary graphi...
Abstract—The Bethe approximation is a well-known approx-imation of the partition function used in st...
When belief propagation (BP) converges, it does so to a stationary point of the Bethe free energy F,...
Belief propagation is a remarkably effective tool for inference, even when applied to networks with ...
It was recently proved using graph covers (Ruozzi, 2012) that the Bethe partition function is upper ...
We examine the effect of clamping variables for approximate inference in undirected graphical models...
We examine the effect of clamping variables for approximate inference in undirected graphical models...
This is the author accepted manuscript. The final version is available from Microtome Publishing via...
Graphical models provide a flexible, powerful and compact way to model relationships between random ...
When belief propagation (BP) converges, it does so to a stationary point of the Bethe free energy F,...
For undirected graphical models, belief propaga-tion often performs remarkably well for approxi-mate...
When belief propagation (BP) converges, it does so to a stationary point of the Bethe free energy $F...
When belief propagation (BP) converges, it does so to a stationary point of the Bethe free en-ergy F...
Computing the partition function (i.e., the normalizing constant) of a given pair-wise binary graphi...
Computing the partition function (i.e., the normalizing constant) of a given pair-wise binary graphi...
Computing the partition function (i.e., the normalizing constant) of a given pair-wise binary graphi...
Abstract—The Bethe approximation is a well-known approx-imation of the partition function used in st...
When belief propagation (BP) converges, it does so to a stationary point of the Bethe free energy F,...
Belief propagation is a remarkably effective tool for inference, even when applied to networks with ...