Curvature and Optimal Algorithms for Learning and Minimizing Submodular Functions
نویسندگان
چکیده
We investigate three related and important problems connected to machine learning: approximating a submodular function everywhere, learning a submodular function (in a PAC-like setting [28]), and constrained minimization of submodular functions. We show that the complexity of all three problems depends on the “curvature” of the submodular function, and provide lower and upper bounds that refine and improve previous results [2, 6, 8, 27]. Our proof techniques are fairly generic. We either use a black-box transformation of the function (for approximation and learning), or a transformation of algorithms to use an appropriate surrogate function (for minimization). Curiously, curvature has been known to influence approximations for submodular maximization [3, 29], but its effect on minimization, approximation and learning has hitherto been open. We complete this picture, and also support our theoretical claims by empirical results.
منابع مشابه
Algorithms for Approximate Minimization of the Difference Between Submodular Functions, with Applications
We extend the work of Narasimhan and Bilmes [30] for minimizing set functions representable as a difference between submodular functions. Similar to [30], our new algorithms are guaranteed to monotonically reduce the objective function at every step. We empirically and theoretically show that the per-iteration cost of our algorithms is much less than [30], and our algorithms can be used to effi...
متن کاملSome Results about the Contractions and the Pendant Pairs of a Submodular System
Submodularity is an important property of set functions with deep theoretical results and various applications. Submodular systems appear in many applicable area, for example machine learning, economics, computer vision, social science, game theory and combinatorial optimization. Nowadays submodular functions optimization has been attracted by many researchers. Pendant pairs of a symmetric...
متن کاملRandom Coordinate Descent Methods for Minimizing Decomposable Submodular Functions
Submodular function minimization is a fundamental optimization problem that arises in several applications in machine learning and computer vision. The problem is known to be solvable in polynomial time, but general purpose algorithms have high running times and are unsuitable for large-scale problems. Recent work have used convex optimization techniques to obtain very practical algorithms for ...
متن کاملExploiting Sum of Submodular Structure for Inference in Very High Order MRF-MAP Problems
Several tasks in computer vision and machine learning can be modeled as MRF-MAP inference problems. Using higher order potentials to model complex dependencies can significantly improve the performance. The problem can often be modeled as minimizing a sum of submodular (SoS) functions. Since sum of submodular functions is also submodular, existing submodular function minimization (SFM) techniqu...
متن کاملNear Optimal algorithms for constrained submodular programs with discounted cooperative costs
In this paper, we investigate two problems, namely (a) minimizing a submodular cost function under combinatorial constraints, which include cuts, matchings, paths, etc., and (b) optimizing a submodular function under submodular cover and submodular knapsack constraints. While both problems have hardness factors of Ω( √ n) for general submodular cost functions, we show how we can achieve constan...
متن کامل