Submodular
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In mathematics, a submodular set function (also known as a submodular function) is a
set function In mathematics, especially measure theory, a set function is a function whose domain is a family of subsets of some given set and that (usually) takes its values in the extended real number line \R \cup \, which consists of the real numbers \R an ...
whose value, informally, has the property that the difference in the incremental value of the function that a single element makes when added to an input set decreases as the size of the input set increases. Submodular functions have a natural
diminishing returns In economics, diminishing returns are the decrease in marginal (incremental) output of a production process as the amount of a single factor of production is incrementally increased, holding all other factors of production equal ( ceteris parib ...
property which makes them suitable for many applications, including
approximation algorithms In computer science and operations research, approximation algorithms are efficient algorithms that find approximate solutions to optimization problems (in particular NP-hard problems) with provable guarantees on the distance of the returned sol ...
, game theory (as functions modeling user preferences) and
electrical network An electrical network is an interconnection of electrical components (e.g., batteries, resistors, inductors, capacitors, switches, transistors) or a model of such an interconnection, consisting of electrical elements (e.g., voltage sources ...
s. Recently, submodular functions have also found immense utility in several real world problems in
machine learning Machine learning (ML) is a field of inquiry devoted to understanding and building methods that 'learn', that is, methods that leverage data to improve performance on some set of tasks. It is seen as a part of artificial intelligence. Machine ...
and
artificial intelligence Artificial intelligence (AI) is intelligence—perceiving, synthesizing, and inferring information—demonstrated by machines, as opposed to intelligence displayed by animals and humans. Example tasks in which this is done include speech r ...
, including automatic summarization,
multi-document summarization Multi-document summarization is an automatic procedure aimed at extraction of information from multiple texts written about the same topic. The resulting summary report allows individual users, such as professional information consumers, to quickl ...
,
feature selection In machine learning and statistics, feature selection, also known as variable selection, attribute selection or variable subset selection, is the process of selecting a subset of relevant features (variables, predictors) for use in model construc ...
,
active learning Active learning is "a method of learning in which students are actively or experientially involved in the learning process and where there are different levels of active learning, depending on student involvement." states that "students partici ...
, sensor placement, image collection summarization and many other domains.


Definition

If \Omega is a finite set, a submodular function is a set function f:2^\rightarrow \mathbb, where 2^\Omega denotes the
power set In mathematics, the power set (or powerset) of a set is the set of all subsets of , including the empty set and itself. In axiomatic set theory (as developed, for example, in the ZFC axioms), the existence of the power set of any set is post ...
of \Omega, which satisfies one of the following equivalent conditions. # For every X, Y \subseteq \Omega with X \subseteq Y and every x \in \Omega \setminus Y we have that f(X\cup \)-f(X)\geq f(Y\cup \)-f(Y). # For every S, T \subseteq \Omega we have that f(S)+f(T)\geq f(S\cup T)+f(S\cap T). # For every X\subseteq \Omega and x_1,x_2\in \Omega\backslash X such that x_1\neq x_2 we have that f(X\cup \)+f(X\cup \)\geq f(X\cup \)+f(X). A nonnegative submodular function is also a
subadditive In mathematics, subadditivity is a property of a function that states, roughly, that evaluating the function for the sum of two elements of the domain always returns something less than or equal to the sum of the function's values at each element. ...
function, but a subadditive function need not be submodular. If \Omega is not assumed finite, then the above conditions are not equivalent. In particular a function f defined by f(S) = 1 if S is finite and f(S) = 0 if S is infinite satisfies the first condition above, but the second condition fails when S and T are infinite sets with finite intersection.


Types and examples of submodular functions


Monotone

A submodular function f is ''monotone'' if for every T\subseteq S we have that f(T)\leq f(S). Examples of monotone submodular functions include: ; Linear (Modular) functions : Any function of the form f(S)=\sum_w_i is called a linear function. Additionally if \forall i,w_i\geq 0 then f is monotone. ; Budget-additive functions : Any function of the form f(S)=\min\left\ for each w_i\geq 0 and B\geq 0 is called budget additive. ; Coverage functions : Let \Omega=\ be a collection of subsets of some ground set \Omega'. The function f(S)=\left, \bigcup_E_i\ for S\subseteq \Omega is called a coverage function. This can be generalized by adding non-negative weights to the elements. ;
Entropy Entropy is a scientific concept, as well as a measurable physical property, that is most commonly associated with a state of disorder, randomness, or uncertainty. The term and the concept are used in diverse fields, from classical thermodynam ...
: Let \Omega=\ be a set of random variables. Then for any S\subseteq \Omega we have that H(S) is a submodular function, where H(S) is the entropy of the set of random variables S, a fact known as Shannon's inequality. Further inequalities for the entropy function are known to hold, see entropic vector. ;
Matroid In combinatorics, a branch of mathematics, a matroid is a structure that abstracts and generalizes the notion of linear independence in vector spaces. There are many equivalent ways to define a matroid axiomatically, the most significant being ...
rank functions : Let \Omega=\ be the ground set on which a matroid is defined. Then the rank function of the matroid is a submodular function.Fujishige (2005) p.22


Non-monotone

A submodular function that is not monotone is called ''non-monotone''.


Symmetric

A non-monotone submodular function f is called ''symmetric'' if for every S\subseteq \Omega we have that f(S)=f(\Omega-S). Examples of symmetric non-monotone submodular functions include: ; Graph cuts : Let \Omega=\ be the vertices of a
graph Graph may refer to: Mathematics *Graph (discrete mathematics), a structure made of vertices and edges **Graph theory, the study of such graphs and their properties *Graph (topology), a topological space resembling a graph in the sense of discre ...
. For any set of vertices S\subseteq \Omega let f(S) denote the number of edges e=(u,v) such that u\in S and v\in \Omega-S. This can be generalized by adding non-negative weights to the edges. ;
Mutual information In probability theory and information theory, the mutual information (MI) of two random variables is a measure of the mutual dependence between the two variables. More specifically, it quantifies the " amount of information" (in units such ...
: Let \Omega=\ be a set of random variables. Then for any S\subseteq \Omega we have that f(S)=I(S;\Omega-S) is a submodular function, where I(S;\Omega-S) is the mutual information.


Asymmetric

A non-monotone submodular function which is not symmetric is called asymmetric. ; Directed cuts : Let \Omega=\ be the vertices of a
directed graph In mathematics, and more specifically in graph theory, a directed graph (or digraph) is a graph that is made up of a set of vertices connected by directed edges, often called arcs. Definition In formal terms, a directed graph is an ordered pa ...
. For any set of vertices S\subseteq \Omega let f(S) denote the number of edges e=(u,v) such that u\in S and v\in \Omega-S. This can be generalized by adding non-negative weights to the directed edges.


Continuous extensions


Definition

A set-valued function f:2^\rightarrow \mathbb with , \Omega, =n can also be represented as a function on \^, by associating each S\subseteq \Omega with a binary vector x^\in \^ such that x_^=1 when i\in S, and x_^=0 otherwise. The ''continuous extension'' of f is defined to be any continuous function F:
, 1 The comma is a punctuation mark that appears in several variants in different languages. It has the same shape as an apostrophe or single closing quotation mark () in many typefaces, but it differs from them in being placed on the baseline o ...
\rightarrow \mathbb such that it matches the value of f on x\in \^, i.e. F(x^)=f(S). In the context of submodular functions, there are a few examples of continuous extensions that are commonly used, which are described as follows.


Examples


Lovász extension

This extension is named after mathematician
László Lovász László Lovász (; born March 9, 1948) is a Hungarian mathematician and professor emeritus at Eötvös Loránd University, best known for his work in combinatorics, for which he was awarded the 2021 Abel Prize jointly with Avi Wigderson. He wa ...
. Consider any vector \mathbf=\ such that each 0\leq x_i\leq 1. Then the Lovász extension is defined as f^L(\mathbf)=\mathbb(f(\)) where the expectation is over \lambda chosen from the uniform distribution on the interval ,1/math>. The Lovász extension is a convex function if and only if f is a submodular function.


Multilinear extension

Consider any vector \mathbf=\ such that each 0\leq x_i\leq 1. Then the multilinear extension is defined as F(\mathbf)=\sum_ f(S) \prod_ x_i \prod_ (1-x_i).


Convex closure

Consider any vector \mathbf=\ such that each 0\leq x_i\leq 1. Then the convex closure is defined as f^-(\mathbf)=\min\left(\sum_S \alpha_S f(S):\sum_S \alpha_S 1_S=\mathbf,\sum_S \alpha_S=1,\alpha_S\geq 0\right). The convex closure of any set function is convex over ,1n.


Concave closure

Consider any vector \mathbf=\ such that each 0\leq x_i\leq 1. Then the concave closure is defined as f^+(\mathbf)=\max\left(\sum_S \alpha_S f(S):\sum_S \alpha_S 1_S=\mathbf,\sum_S \alpha_S=1,\alpha_S\geq 0\right).


Connections between extensions

For the extensions discussed above, it can be shown that f^(\mathbf) \geq F(\mathbf) \geq f^(\mathbf)=f^L(\mathbf) when f is submodular.


Properties

# The class of submodular functions is closed under non-negative linear combinations. Consider any submodular function f_1,f_2,\ldots,f_k and non-negative numbers \alpha_1,\alpha_2,\ldots,\alpha_k. Then the function g defined by g(S)=\sum_^k \alpha_i f_i(S) is submodular. #For any submodular function f, the function defined by g(S)=f(\Omega \setminus S) is submodular. #The function g(S)=\min(f(S),c), where c is a real number, is submodular whenever f is monotone submodular. More generally, g(S)=h(f(S)) is submodular, for any non decreasing concave function h. # Consider a random process where a set T is chosen with each element in \Omega being included in T independently with probability p. Then the following inequality is true \mathbb (T)geq p f(\Omega)+(1-p) f(\varnothing) where \varnothing is the empty set. More generally consider the following random process where a set S is constructed as follows. For each of 1\leq i\leq l, A_i\subseteq \Omega construct S_i by including each element in A_i independently into S_i with probability p_i. Furthermore let S=\cup_^l S_i. Then the following inequality is true \mathbb (S)geq \sum_ \Pi_p_i \Pi_(1-p_i)f(\cup_A_i).


Optimization problems

Submodular functions have properties which are very similar to
convex Convex or convexity may refer to: Science and technology * Convex lens, in optics Mathematics * Convex set, containing the whole line segment that joins points ** Convex polygon, a polygon which encloses a convex set of points ** Convex polytop ...
and concave functions. For this reason, an
optimization problem In mathematics, computer science and economics, an optimization problem is the problem of finding the ''best'' solution from all feasible solutions. Optimization problems can be divided into two categories, depending on whether the variables ...
which concerns optimizing a convex or concave function can also be described as the problem of maximizing or minimizing a submodular function subject to some constraints.


Submodular set function minimization

The hardness of minimizing a submodular set function depends on constraints imposed on the problem. # The unconstrained problem of minimizing a submodular function is computable in (strongly) polynomial time. Computing the
minimum cut In graph theory, a minimum cut or min-cut of a graph is a cut (a partition of the vertices of a graph into two disjoint subsets) that is minimal in some metric. Variations of the minimum cut problem consider weighted graphs, directed graphs, ter ...
in a graph is a special case of this minimization problem. # The problem of minimizing a submodular function with a cardinality lower bound is NP-hard, with polynomial factor lower bounds on the approximation factor.


Submodular set function maximization

Unlike the case of minimization, maximizing a generic submodular function is NP-hard even in the unconstrained setting. Thus, most of the works in this field are concerned with polynomial-time approximation algorithms, including
greedy algorithm A greedy algorithm is any algorithm that follows the problem-solving heuristic of making the locally optimal choice at each stage. In many problems, a greedy strategy does not produce an optimal solution, but a greedy heuristic can yield locally ...
s or
local search algorithm In computer science, local search is a heuristic method for solving computationally hard optimization problems. Local search can be used on problems that can be formulated as finding a solution maximizing a criterion among a number of candidate so ...
s. # The problem of maximizing a non-negative submodular function admits a 1/2 approximation algorithm. Computing the
maximum cut For a graph, a maximum cut is a cut whose size is at least the size of any other cut. That is, it is a partition of the graph's vertices into two complementary sets and , such that the number of edges between and is as large as possible. Fin ...
of a graph is a special case of this problem. # The problem of maximizing a monotone submodular function subject to a cardinality constraint admits a 1 - 1/e approximation algorithm. The maximum coverage problem is a special case of this problem. # The problem of maximizing a monotone submodular function subject to a
matroid In combinatorics, a branch of mathematics, a matroid is a structure that abstracts and generalizes the notion of linear independence in vector spaces. There are many equivalent ways to define a matroid axiomatically, the most significant being ...
constraint (which subsumes the case above) also admits a 1 - 1/e approximation algorithm. Many of these algorithms can be unified within a semi-differential based framework of algorithms.


Related optimization problems

Apart from submodular minimization and maximization, there are several other natural optimization problems related to submodular functions. # The difference of submodular optimization problem is not only NP hard, but also inapproximable. # Minimization/maximization of a submodular function subject to a submodular level set constraint (also known as submodular optimization subject to submodular cover or submodular knapsack constraint) admits bounded approximation guarantees. # Partitioning data based on a submodular function to maximize the average welfare is known as the submodular welfare problem, which also admits bounded approximation guarantees.


Applications

Submodular functions naturally occur in several real world applications, in
economics Economics () is the social science that studies the production, distribution, and consumption of goods and services. Economics focuses on the behaviour and interactions of economic agents and how economies work. Microeconomics analyzes ...
, game theory,
machine learning Machine learning (ML) is a field of inquiry devoted to understanding and building methods that 'learn', that is, methods that leverage data to improve performance on some set of tasks. It is seen as a part of artificial intelligence. Machine ...
and computer vision. Owing to the diminishing returns property, submodular functions naturally model costs of items, since there is often a larger discount, with an increase in the items one buys. Submodular functions model notions of complexity, similarity and cooperation when they appear in minimization problems. In maximization problems, on the other hand, they model notions of diversity, information and coverage.


See also

* Supermodular function *
Matroid In combinatorics, a branch of mathematics, a matroid is a structure that abstracts and generalizes the notion of linear independence in vector spaces. There are many equivalent ways to define a matroid axiomatically, the most significant being ...
, Polymatroid *
Utility functions on indivisible goods Some branches of economics and game theory deal with indivisible goods, discrete items that can be traded only as a whole. For example, in combinatorial auctions there is a finite set of items, and every agent can buy a subset of the items, but an ...


Citations


References

* * * * *{{citation , last=Oxley , first=James G. , title=Matroid theory , series=Oxford Science Publications , location=Oxford , publisher=
Oxford University Press Oxford University Press (OUP) is the university press of the University of Oxford. It is the largest university press in the world, and its printing history dates back to the 1480s. Having been officially granted the legal right to print books ...
, year=1992 , isbn=0-19-853563-5 , zbl=0784.05002


External links

* http://www.cs.berkeley.edu/~stefje/references.html has a longer bibliography * http://submodularity.org/ includes further material on the subject
Matroid theory In combinatorics, a branch of mathematics, a matroid is a structure that abstracts and generalizes the notion of linear independence in vector spaces. There are many equivalent ways to define a matroid axiomatically, the most significant being ...