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Efficient Minimization of Higher Order Submodular Functions using Monotonic Boolean Functions

11 September 2011
Srikumar Ramalingam
Chris Russell
Lubor Ladicky
Philip Torr
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Abstract

Submodular function minimization is a key problem in a wide variety of applications in machine learning, economics, game theory, computer vision, and many others. The general solver has a complexity of O(n3log⁡2n.E+n4log⁡O(1)n)O(n^3 \log^2 n . E +n^4 {\log}^{O(1)} n)O(n3log2n.E+n4logO(1)n) where EEE is the time required to evaluate the function and nnn is the number of variables \cite{Lee2015}. On the other hand, many computer vision and machine learning problems are defined over special subclasses of submodular functions that can be written as the sum of many submodular cost functions defined over cliques containing few variables. In such functions, the pseudo-Boolean (or polynomial) representation \cite{BorosH02} of these subclasses are of degree (or order, or clique size) kkk where k≪nk \ll nk≪n. In this work, we develop efficient algorithms for the minimization of this useful subclass of submodular functions. To do this, we define novel mapping that transform submodular functions of order kkk into quadratic ones. The underlying idea is to use auxiliary variables to model the higher order terms and the transformation is found using a carefully constructed linear program. In particular, we model the auxiliary variables as monotonic Boolean functions, allowing us to obtain a compact transformation using as few auxiliary variables as possible.

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