Metric distance
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In mathematics, a metric space is a Set (mathematics), set together with a notion of ''distance'' between its Element (mathematics), elements, usually called point (geometry), points. The distance is measured by a function (mathematics), function called a metric or distance function. Metric spaces are the most general setting for studying many of the concepts of mathematical analysis and geometry. The most familiar example of a metric space is 3-dimensional Euclidean space with its usual notion of distance. Other well-known examples are a sphere equipped with the angular distance and the hyperbolic plane. A metric may correspond to a metaphorical, rather than physical, notion of distance: for example, the set of 100-character Unicode strings can be equipped with the Hamming distance, which measures the number of characters that need to be changed to get from one string to another. Since they are very general, metric spaces are a tool used in many different branches of mathematics. Many types of mathematical objects have a natural notion of distance and therefore admit the structure of a metric space, including Riemannian manifolds, normed vector spaces, and graph (discrete mathematics), graphs. In abstract algebra, the p-adic numbers, ''p''-adic numbers arise as elements of the completion (metric space), completion of a metric structure on the rational numbers. Metric spaces are also studied in their own right in metric geometry and analysis on metric spaces. Many of the basic notions of mathematical analysis, including ball (mathematics), balls, Complete metric space, completeness, as well as uniform continuity, uniform, Lipschitz continuity, Lipschitz, and Hölder continuity, can be defined in the setting of metric spaces. Other notions, such as continuous function, continuity, compactness, and open set, open and closed sets, can be defined for metric spaces, but also in the even more general setting of topological spaces.


Definition and illustration


Motivation

To see the utility of different notions of distance, consider the surface of the Earth as a set of points. We can measure the distance between two such points by the length of the great-circle distance, shortest path along the surface, "as the crow flies"; this is particularly useful for shipping and aviation. We can also measure the straight-line distance between two points through the Earth's interior; this notion is, for example, natural in seismology, since it roughly corresponds to the length of time it takes for seismic waves to travel between those two points. The notion of distance encoded by the metric space axioms has relatively few requirements. This generality gives metric spaces a lot of flexibility. At the same time, the notion is strong enough to encode many intuitive facts about what distance means. This means that general results about metric spaces can be applied in many different contexts. Like many fundamental mathematical concepts, the metric on a metric space can be interpreted in many different ways. A particular metric may not be best thought of as measuring physical distance, but, instead, as the cost of changing from one state to another (as with Wasserstein metrics on spaces of measure (mathematics), measures) or the degree of difference between two objects (for example, the Hamming distance between two strings of characters, or the Gromov–Hausdorff convergence, Gromov–Hausdorff distance between metric spaces themselves).


Definition

Formally, a metric space is an ordered pair where is a set and is a metric on , i.e., a Function (mathematics), function d\,\colon M \times M \to \mathbb satisfying the following axioms for all points x,y,z \in M: # The distance from a point to itself is zero: d(x, x) = 0. Intuitively, it never costs anything to travel from a point to itself. # (Positivity) The distance between two distinct points is always positive: \textx \neq y\textd(x, y)>0. # (Symmetric function, Symmetry) The distance from to is always the same as the distance from to : d(x, y) = d(y, x). This excludes asymmetric notions of "cost" which arise naturally from the observation that it's harder to walk uphill than downhill. # The triangle inequality holds: d(x, z) \leq d(x, y) + d(y, z). This is a natural property of both physical and metaphorical notions of distance: you can arrive at from by taking a detour through , but this will not make your journey any faster than the shortest path. If the metric is unambiguous, one often refers by abuse of notation to "the metric space ".


Simple examples


The real numbers

The real numbers with the distance function d(x,y) = , y - x , given by the absolute difference form a metric space. Many properties of metric spaces and functions between them are generalizations of concepts in real analysis and coincide with those concepts when applied to the real line.


Metrics on Euclidean spaces

The Euclidean plane \R^2 can be equipped with many different metrics. The Euclidean distance familiar from school mathematics can be defined by d_2((x_1,y_1),(x_2,y_2))=\sqrt. The taxicab geometry, ''taxicab'' or ''Manhattan'' distance is defined by d_1((x_1,y_1),(x_2,y_2))=, x_2-x_1, +, y_2-y_1, and can be thought of as the distance you need to travel along horizontal and vertical lines to get from one point to the other, as illustrated at the top of the article. The ''maximum'', L^\infty, or ''Chebyshev distance'' is defined by d_\infty((x_1,y_1),(x_2,y_2))=\max\. This distance doesn't have an easy explanation in terms of paths in the plane, but it still satisfies the metric space axioms. In fact, these three distances, while they have distinct properties, are similar in some ways. Informally, points that are close in one are close in the others, too. This observation can be quantified with the formula d_\infty(p,q) \leq d_2(p,q) \leq d_1(p,q) \leq 2d_\infty(p,q), which holds for every pair of points p, q \in \R^2. A radically different distance can be defined by setting d(p,q)=\begin0, & \textp=q, \\ 1, & \text\end In this ''discrete metric'', all distinct points are 1 unit apart: none of them are close to each other, and none of them are very far away from each other either. Intuitively, the discrete metric no longer remembers that the set is a plane, but treats it just as an undifferentiated set of points. All of these metrics make sense on \R^n as well as \R^2.


Subspaces

Given a metric space and a subset A \subseteq M, we can consider to be a metric space by measuring distances the same way we would in . Formally, the ''induced metric'' on is a function d_A:A \times A \to \R defined by d_A(x,y)=d(x,y). For example, if we take the two-dimensional sphere as a subset of \R^3, the Euclidean metric on \R^3 induces the straight-line metric on described above. Two more useful examples are the open interval and the closed interval thought of as subspaces of the real line.


History

In 1906 Maurice Fréchet introduced metric spaces in his work ''Sur quelques points du calcul fonctionnel'' in the context of functional analysis: his main interest was in studying the real-valued functions from a metric space, generalizing the theory of functions of several or even infinitely many variables, as pioneered by mathematicians such as Cesare Arzelà. The idea was further developed and placed in its proper context by Felix Hausdorff in his magnum opus Grundzüge der Mengenlehre, ''Principles of Set Theory'', which also introduced the notion of a Hausdorff space, (Hausdorff) topological space. General metric spaces have become a foundational part of the mathematical curriculum. Prominent examples of metric spaces in mathematical research include Riemannian manifolds and normed vector spaces, which are the domain of differential geometry and functional analysis, respectively. Fractal geometry is a source of some exotic metric spaces. Others have arisen as limits through the study of discrete or smooth objects, including scale invariance, scale-invariant limits in statistical physics, Alexandrov spaces arising as Gromov–Hausdorff convergence, Gromov–Hausdorff limits of sequences of Riemannian manifolds, and Gromov boundary, boundaries and asymptotic cones in geometric group theory. Finally, many new applications of finite and discrete metric spaces have arisen in computer science.


Basic notions

A distance function is enough to define notions of closeness and convergence that were first developed in real analysis. Properties that depend on the structure of a metric space are referred to as ''metric properties''. Every metric space is also a topological space, and some metric properties can also be rephrased without reference to distance in the language of topology; that is, they are really topological property, topological properties.


The topology of a metric space

For any point in a metric space and any real number , the ball (mathematics), ''open ball'' of radius around is defined to be the set of points that are at most distance from : B_r(x)=\. This is a natural way define a set of points that are relatively close to . Therefore, a set N \subseteq M is a neighborhood (mathematics), ''neighborhood'' of (informally, it contains all points "close enough" to ) if it contains an open ball of radius around for some . An ''open set'' is a set which is a neighborhood of all its points. It follows that the open balls form a base (topology), base for a topology on . In other words, the open sets of are exactly the unions of open balls. As in any topology, closed sets are the complements of open sets. Sets may be both open and closed as well as neither open nor closed. This topology does not carry all the information about the metric space. For example, the distances , , and defined above all induce the same topology on \R^2, although they behave differently in many respects. Similarly, \R with the Euclidean metric and its subspace the interval with the induced metric are homeomorphism, homeomorphic but have very different metric properties. Conversely, not every topological space can be given a metric. Topological spaces which are compatible with a metric are called metrizable space, ''metrizable'' and are particularly well-behaved in many ways: in particular, they are paracompact space, paracompact Hausdorff spaces (hence normal space, normal) and first-countable space, first-countable. The Nagata–Smirnov metrization theorem gives a characterization of metrizability in terms of other topological properties, without reference to metrics.


Convergence

limit of a sequence, Convergence of sequences in Euclidean space is defined as follows: : A sequence converges to a point if for every there is an integer such that for all , . Convergence of sequences in a topological space is defined as follows: : A sequence converges to a point if for every open set containing there is an integer such that for all , x_n \in U. In metric spaces, both of these definitions make sense and they are equivalent. This is a general pattern for topological property, topological properties of metric spaces: while they can be defined in a purely topological way, there is often a way that uses the metric which is easier to state or more familiar from real analysis.


Completeness

Informally, a metric space is ''complete'' if it has no "missing points": every sequence that looks like it should converge to something actually converges. To make this precise: a sequence in a metric space is Cauchy sequence, ''Cauchy'' if for every there is an integer such that for all , . By the triangle inequality, any convergent sequence is Cauchy: if and are both less than away from the limit, then they are less than away from each other. If the converse is true—every Cauchy sequence in converges—then is complete. Euclidean spaces are complete, as is \R^2 with the other metrics described above. Two examples of spaces which are not complete are and the rationals, each with the metric induced from \R. One can think of as "missing" its endpoints 0 and 1. The rationals are missing all the irrationals, since any irrational has a sequence of rationals converging to it in \R (for example, its successive decimal approximations). These examples show that completeness is ''not'' a topological property, since \R is complete but the homeomorphic space is not. This notion of "missing points" can be made precise. In fact, every metric space has a unique completion (metric space), ''completion'', which is a complete space that contains the given space as a dense set, dense subset. For example, is the completion of , and the real numbers are the completion of the rationals. Since complete spaces are generally easier to work with, completions are important throughout mathematics. For example, in abstract algebra, the p-adic numbers, ''p''-adic numbers are defined as the completion of the rationals under a different metric. Completion is particularly common as a tool in functional analysis. Often one has a set of nice functions and a way of measuring distances between them. Taking the completion of this metric space gives a new set of functions which may be less nice, but nevertheless useful because they behave similarly to the original nice functions in important ways. For example, weak solutions to differential equations typically live in a completion (a Sobolev space) rather than the original space of nice functions for which the differential equation actually makes sense.


Bounded and totally bounded spaces

A metric space is ''bounded'' if there is an such that no pair of points in is more than distance apart. The least such is called the ' of . The space is called ''precompact'' or ''totally bounded'' if for every there is a finite cover (topology), cover of by open balls of radius . Every totally bounded space is bounded. To see this, start with a finite cover by -balls for some arbitrary . Since the subset of consisting of the centers of these balls is finite, it has finite diameter, say . By the triangle inequality, the diameter of the whole space is at most . The converse does not hold: an example of a metric space that is bounded but not totally bounded is \R^2 (or any other infinite set) with the discrete metric.


Compactness

Compactness is a topological property which generalizes the properties of a closed and bounded subset of Euclidean space. There are several equivalent definitions of compactness in metric spaces: # A metric space is compact if every open cover has a finite subcover (the usual topological definition). # A metric space is compact if every sequence has a convergent subsequence. (For general topological spaces this is called sequentially compact space, sequential compactness and is not equivalent to compactness.) # A metric space is compact if it is complete and totally bounded. (This definition is written in terms of metric properties and doesn't make sense for a general topological space, but it is nevertheless topologically invariant since it is equivalent to compactness.) One example of a compact space is the closed interval . Compactness is important for similar reasons to completeness: it makes it easy to find limits. Another important tool is Lebesgue's number lemma, which shows that for any open cover of a compact space, every point is relatively deep inside one of the sets of the cover.


Functions between metric spaces

Unlike in the case of topological spaces or algebraic structures such as group (mathematics), groups or ring (mathematics), rings, there is no single "right" type of morphism, structure-preserving function between metric spaces. Instead, one works with different types of functions depending on one's goals. Throughout this section, suppose that (M_1,d_1) and (M_2,d_2) are two metric spaces. The words "function" and "map" are used interchangeably.


Isometries

One interpretation of a "structure-preserving" map is one that fully preserves the distance function: : A function f:M_1 \to M_2 is ''distance-preserving'' if for every pair of points and in , d_2(f(x),f(y))=d_1(x,y). It follows from the metric space axioms that a distance-preserving function is injective. A bijective distance-preserving function is called an ''isometry''. One perhaps non-obvious example of an isometry between spaces described in this article is the map f:(\R^2,d_1) \to (\R^2,d_\infty) defined by f(x,y)=(x+y,x-y). If there is an isometry between the spaces and , they are said to be ''isometric''. Metric spaces that are isometric are isomorphism, essentially identical.


Continuous maps

On the other end of the spectrum, one can forget entirely about the metric structure and study continuous function (topology), continuous maps, which only preserve topological structure. There are several equivalent definitions of continuity for metric spaces. The most important are: * Topological definition. A function f\,\colon M_1\to M_2 is continuous if for every open set in , the preimage f^(U) is open. * Sequential continuity. A function f\,\colon M_1\to M_2 is continuous if whenever a sequence converges to a point in , the sequence f(x_1),f(x_2),\ldots converges to the point in . : (These first two definitions are ''not'' equivalent for all topological spaces.) * ε–δ definition. A function f\,\colon M_1\to M_2 is continuous if for every point in and every there exists such that for all in we have d_1(x,y) < \delta \implies d_2(f(x),f(y)) < \varepsilon. A ''homeomorphism'' is a continuous map whose inverse is also continuous; if there is a homeomorphism between and , they are said to be ''homeomorphic''. Homeomorphic spaces are the same from the point of view of topology, but may have very different metric properties. For example, \R is unbounded and complete, while is bounded but not complete.


Uniformly continuous maps

A function f\,\colon M_1\to M_2 is ''uniform continuity, uniformly continuous'' if for every real number there exists such that for all points and in such that d(x,y)<\delta, we have d_2(f(x),f(y)) < \varepsilon. The only difference between this definition and the ε–δ definition of continuity is the order of quantifiers: the choice of δ must depend only on ε and not on the point . However, this subtle change makes a big difference. For example, uniformly continuous maps take Cauchy sequences in to Cauchy sequences in . This implies that the image of a complete space under a uniformly continuous map is complete. In other words, uniform continuity preserves some metric properties which are not purely topological. On the other hand, the Heine–Cantor theorem states that if is compact, then every continuous map is uniformly continuous. In other words, uniform continuity cannot distinguish any non-topological features of compact metric spaces.


Lipschitz maps and contractions

A Lipschitz continuity, Lipschitz map is one that stretches distances by at most a bounded factor. Formally, given a real number , the map f\,\colon M_1\to M_2 is -''Lipschitz'' if d_2(f(x),f(y))\leq K d_1(x,y)\quad\text\quad x,y\in M_1. Lipschitz maps are particularly important in metric geometry, since they provide more flexibility than distance-preserving maps, but still make essential use of the metric. For example, a curve in a metric space is arc length, rectifiable (has finite length) if and only if it has a Lipschitz reparametrization. A 1-Lipschitz map is sometimes called a ''nonexpanding'' or ''metric map''. Metric maps are commonly taken to be the morphisms of the category of metric spaces. A -Lipschitz map for is called a ''contraction mapping, contraction''. The Banach fixed-point theorem states that if is a complete metric space, then every contraction f:M \to M admits a unique fixed point (mathematics), fixed point. If the metric space is compact, the result holds for a slightly weaker condition on : a map f:M \to M admits a unique fixed point if d(f(x), f(y)) < d(x, y) \quad \mbox \quad x \ne y \in M_1.


Quasi-isometries

A quasi-isometry is a map that preserves the "large-scale structure" of a metric space. Quasi-isometries need not be continuous. For example, \R^2 and its subspace \Z^2 are quasi-isometric, even though one is connected and the other is discrete. The equivalence relation of quasi-isometry is important in geometric group theory: the Švarc–Milnor lemma states that all spaces on which a group geometric group action, acts geometrically are quasi-isometric. Formally, the map f\,\colon M_1\to M_2 is a ''quasi-isometric embedding'' if there exist constants and such that \frac d_2(f(x),f(y))-B\leq d_1(x,y)\leq A d_2(f(x),f(y))+B \quad\text\quad x,y\in M_1. It is a ''quasi-isometry'' if in addition it is ''quasi-surjective'', i.e. there is a constant such that every point in M_2 is at distance at most from some point in the image f(M_1).


Notions of metric space equivalence

Given two metric spaces (M_1, d_1) and (M_2, d_2): *They are called homeomorphic (topologically isomorphic) if there is a homeomorphism between them (i.e., a continuous bijection with a continuous inverse). If M_1=M_2 and the identity map is a homeomorphism, then d_1 and d_2 are said to be topologically equivalent. *They are called uniformic (uniformly isomorphic) if there is a uniform isomorphism between them (i.e., a uniformly continuous bijection with a uniformly continuous inverse). *They are called bilipschitz homeomorphic if there is a bilipschitz bijection between them (i.e., a Lipschitz bijection with a Lipschitz inverse). *They are called isometric if there is a (bijective) isometry between them. In this case, the two metric spaces are essentially identical. *They are called quasi-isometric if there is a quasi-isometry between them.


Metric spaces with additional structure


Normed vector spaces

A normed vector space is a vector space equipped with a ''norm (mathematics), norm'', which is a function that measures the length of vectors. The norm of a vector is typically denoted by \lVert v \rVert. Any normed vector space can be equipped with a metric in which the distance between two vectors and is given by d(x,y)=\lVert x-y \rVert. The metric is said to be ''induced'' by the norm \lVert\rVert. Conversely, if a metric on a vector space is * translation invariant: d(x,y) = d(x+a,y+a) for every , , and in ; and * Absolute homogeneity, : d(\alpha x, \alpha y) = , \alpha, d(x,y) for every and in and real number ; then it is the metric induced by the norm \lVert x \rVert = d(x,0). A similar relationship holds between seminorms and pseudometric space, pseudometrics. Among examples of metrics induced by a norm are the metrics , , and on \R^2, which are induced by the Manhattan norm, the Euclidean norm, and the maximum norm, respectively. More generally, the Kuratowski embedding allows one to see any metric space as a subspace of a normed vector space. Infinite-dimensional normed vector spaces, particularly spaces of functions, are studied in functional analysis. Completeness is particularly important in this context: a complete normed vector space is known as a Banach space. An unusual property of normed vector spaces is that linear transformations between them are continuous if and only if they are Lipschitz. Such transformations are known as bounded operators.


Length spaces

A curve in a metric space is a continuous function \gamma:[0,T] \to M. The arc length, length of is measured by L(\gamma)=\sup_ \left\. In general, this supremum may be infinite; a curve of finite length is called ''rectifiable''. Suppose that the length of the curve is equal to the distance between its endpoints—that is, it's the shortest possible path between its endpoints. After reparametrization by arc length, becomes a ''geodesic'': a curve which is a distance-preserving function. A geodesic is a shortest possible path between any two of its points. A ''geodesic metric space'' is a metric space which admits a geodesic between any two of its points. The spaces (\R^2,d_1) and (\R^2,d_2) are both geodesic metric spaces. In (\R^2,d_2), geodesics are unique, but in (\R^2,d_1), there are often infinitely many geodesics between two points, as shown in the figure at the top of the article. The space is a ''length space'' (or the metric is ''intrinsic'') if the distance between any two points and is the infimum of lengths of paths between them. Unlike in a geodesic metric space, the infimum does not have to be attained. An example of a length space which is not geodesic is the Euclidean plane minus the origin: the points and can be joined by paths of length arbitrarily close to 2, but not by a path of length 2. An example of a metric space which is not a length space is given by the straight-line metric on the sphere: the straight line between two points through the center of the earth is shorter than any path along the surface. Given any metric space , one can define a new, intrinsic distance function on by setting the distance between points and to be infimum of the -lengths of paths between them. For instance, if is the straight-line distance on the sphere, then is the great-circle distance. However, in some cases may have infinite values. For example, if is the Koch snowflake with the subspace metric induced from \R^2, then the resulting intrinsic distance is infinite for any pair of distinct points.


Riemannian manifolds

A Riemannian manifold is a space equipped with a Riemannian metric tensor, which determines lengths of tangent space, tangent vectors at every point. This can be thought of defining a notion of distance infinitesimally. In particular, a differentiable path \gamma:[0, T] \to M in a Riemannian manifold has length defined as the integral of the length of the tangent vector to the path: L(\gamma)=\int_0^T , \dot\gamma(t), dt. On a connected Riemannian manifold, one then defines the distance between two points as the infimum of lengths of smooth paths between them. This construction generalizes to other kinds of infinitesimal metrics on manifolds, such as sub-Riemannian manifold, sub-Riemannian and Finsler manifold, Finsler metrics. The Riemannian metric is uniquely determined by the distance function; this means that in principle, all information about a Riemannian manifold can be recovered from its distance function. One direction in metric geometry is finding purely metric (synthetic geometry, "synthetic") formulations of properties of Riemannian manifolds. For example, a Riemannian manifold is a CAT(k) space, space (a synthetic condition which depends purely on the metric) if and only if its sectional curvature is bounded above by . Thus spaces generalize upper curvature bounds to general metric spaces.


Metric measure spaces

Real analysis makes use of both the metric on \R^n and the Lebesgue measure. Therefore, generalizations of many ideas from analysis naturally reside in metric measure spaces: spaces that have both a measure (mathematics), measure and a metric which are compatible with each other. Formally, a ''metric measure space'' is a metric space equipped with a Borel regular measure such that every ball has positive measure. For example Euclidean spaces of dimension , and more generally -dimensional Riemannian manifolds, naturally have the structure of a metric measure space, equipped with the Lebesgue measure. Certain fractal metric spaces such as the Sierpiński gasket can be equipped with the α-dimensional Hausdorff measure where α is the Hausdorff dimension. In general, however, a metric space may not have an "obvious" choice of measure. One application of metric measure spaces is generalizing the notion of Ricci curvature beyond Riemannian manifolds. Just as and Alexandrov spaces generalize scalar curvature bounds, RCD spaces are a class of metric measure spaces which generalize lower bounds on Ricci curvature.


Further examples and applications


Graphs and finite metric spaces

A if its induced topology is the discrete topology. Although many concepts, such as completeness and compactness, are not interesting for such spaces, they are nevertheless an object of study in several branches of mathematics. In particular, (those having a finite set, finite number of points) are studied in combinatorics and theoretical computer science. Embeddings in other metric spaces are particularly well-studied. For example, not every finite metric space can be isometry, isometrically embedded in a Euclidean space or in Hilbert space. On the other hand, in the worst case the required distortion (bilipschitz constant) is only logarithmic in the number of points. For any graph (discrete mathematics), undirected connected graph , the set of vertices of can be turned into a metric space by defining the distance (graph theory), distance between vertices and to be the length of the shortest edge path connecting them. This is also called ''shortest-path distance'' or ''geodesic distance''. In geometric group theory this construction is applied to the Cayley graph of a (typically infinite) finitely-generated group, yielding the word metric. Up to a bilipschitz homeomorphism, the word metric depends only on the group and not on the chosen finite generating set.


Distances between mathematical objects

In modern mathematics, one often studies spaces whose points are themselves mathematical objects. A distance function on such a space generally aims to measure the dissimilarity between two objects. Here are some examples: * Functions to a metric space. If is any set and is a metric space, then the set of all bounded functions f \colon X \to M (i.e. those functions whose image is a bounded subset of M) can be turned into a metric space by defining the distance between two bounded functions and to be d(f,g) = \sup_ d(f(x),g(x)). This metric is called the uniform metric or supremum metric. If is complete, then this function space is complete as well; moreover, if is also a topological space, then the subspace consisting of all bounded continuous function (topology), continuous functions from to is also complete. When is a subspace of \R^n, this function space is known as a classical Wiener space. * String metrics and edit distances. There are many ways of measuring distances between string (computer science), strings of characters, which may represent sentence (linguistics), sentences in computational linguistics or code words in coding theory. ''Edit distances'' attempt to measure the number of changes necessary to get from one string to another. For example, the Hamming distance measures the minimal number of substitutions needed, while the Levenshtein distance measures the minimal number of deletions, insertions, and substitutions; both of these can be thought of as distances in an appropriate graph. * Graph edit distance is a measure of dissimilarity between two Graph (discrete mathematics), graphs, defined as the minimal number of Graph operations, graph edit operations required to transform one graph into another. * Wasserstein metrics measure the distance between two measure (mathematics), measures on the same metric space. The Wasserstein distance between two measures is, roughly speaking, the optimal transport, cost of transporting one to the other. * The set of all by matrix (mathematics), matrices over some field (mathematics), field is a metric space with respect to the Rank (linear algebra), rank distance d(A,B) = \mathrm(B - A). * The Helly metric in game theory measures the difference between strategy (game theory), strategies in a game.


Hausdorff and Gromov–Hausdorff distance

The idea of spaces of mathematical objects can also be applied to subsets of a metric space, as well as metric spaces themselves. Hausdorff distance, Hausdorff and Gromov–Hausdorff convergence, Gromov–Hausdorff distance define metrics on the set of compact subsets of a metric space and the set of compact metric spaces, respectively. Suppose is a metric space, and let be a subset of . The ''distance from to a point of '' is, informally, the distance from to the closest point of . However, since there may not be a single closest point, it is defined via an infimum: d(x,S) = \inf\. In particular, d(x, S)=0 if and only if belongs to the closure (topology), closure of . Furthermore, distances between points and sets satisfy a version of the triangle inequality: d(x,S) \leq d(x,y) + d(y,S), and therefore the map d_S:M \to \R defined by d_S(x)=d(x,S) is continuous. Incidentally, this shows that metric spaces are completely regular. Given two subsets and of , their ''Hausdorff distance'' is d_H(S,T) = \max \. Informally, two sets and are close to each other in the Hausdorff distance if no element of is too far from and vice versa. For example, if is an open set in Euclidean space is an Delone set, ε-net inside , then d_H(S,T)<\varepsilon. In general, the Hausdorff distance d_H(S,T) can be infinite or zero. However, the Hausdorff distance between two distinct compact sets is always positive and finite. Thus the Hausdorff distance defines a metric on the set of compact subsets of . The Gromov–Hausdorff metric defines a distance between (isometry classes of) compact metric spaces. The ''Gromov–Hausdorff distance'' between compact spaces and is the infimum of the Hausdorff distance over all metric spaces that contain and as subspaces. While the exact value of the Gromov–Hausdorff distance is rarely useful to know, the resulting topology has found many applications.


Miscellaneous examples

* Given a metric space and an increasing concave function f \colon [0,\infty) \to [0,\infty) such that if and only if , then d_f(x,y)=f(d(x,y)) is also a metric on . If for some real number , such a metric is known as a snowflake of . * The tight span of a metric space is another metric space which can be thought of as an abstract version of the convex hull. * The British Rail metric (also called the "post office metric" or the "SNCF metric") on a normed vector space is given by d(x,y) = \lVert x \rVert + \lVert y \rVert for distinct points x and y, and d(x,x) = 0. More generally \lVert \cdot \rVert can be replaced with a function f taking an arbitrary set S to non-negative reals and taking the value 0 at most once: then the metric is defined on S by d(x,y) = f(x) + f(y) for distinct points x and y, and The name alludes to the tendency of railway journeys to proceed via London (or Paris) irrespective of their final destination. * The Robinson–Foulds metric used for calculating the distances between Phylogenetic trees in Phylogenetics


Constructions


Product metric spaces

If (M_1,d_1),\ldots,(M_n,d_n) are metric spaces, and is the Euclidean norm on \mathbb R^n, then \bigl(M_1 \times \cdots \times M_n, d_\times\bigr) is a metric space, where the product metric is defined by d_\times\bigl((x_1,\ldots,x_n),(y_1,\ldots,y_n)\bigr) = N\bigl(d_1(x_1,y_1),\ldots,d_n(x_n,y_n)\bigr), and the induced topology agrees with the product topology. By the equivalence of norms in finite dimensions, a topologically equivalent metric is obtained if is the taxicab norm, a Norm (mathematics)#p-norm, p-norm, the maximum norm, or any other norm which is non-decreasing as the coordinates of a positive -tuple increase (yielding the triangle inequality). Similarly, a metric on the topological product of countably many metric spaces can be obtained using the metric d(x,y)=\sum_^\infty \frac1\frac. The topological product of uncountably many metric spaces need not be metrizable. For example, an uncountable product of copies of \mathbb is not first-countable space, first-countable and thus isn't metrizable.


Quotient metric spaces

If is a metric space with metric , and \sim is an equivalence relation on , then we can endow the quotient set M/\!\sim with a pseudometric. The distance between two equivalence classes [x] and [y] is defined as d'([x],[y]) = \inf\, where the infimum is taken over all finite sequences (p_1, p_2, \dots, p_n) and (q_1, q_2, \dots, q_n) with p_1 \sim x, q_n \sim y, q_i \sim p_, i=1,2,\dots, n-1. In general this will only define a pseudometric space, pseudometric, i.e. d'([x],[y])=0 does not necessarily imply that [x]=[y]. However, for some equivalence relations (e.g., those given by gluing together polyhedra along faces), d' is a metric. The quotient metric d' is characterized by the following universal property. If f\,\colon(M,d)\to(X,\delta) is a metric (i.e. 1-Lipschitz) map between metric spaces satisfying whenever x \sim y, then the induced function \overline\,\colon \to X, given by \overline([x])=f(x), is a metric map \overline\,\colon (M/\sim,d')\to (X,\delta). The quotient metric does not always induce the quotient topology. For example, the topological quotient of the metric space \N \times [0,1] identifying all points of the form (n, 0) is not metrizable since it is not first-countable space, first-countable, but the quotient metric is a well-defined metric on the same set which induces a comparison of topologies, coarser topology. Moreover, different metrics on the original topological space (a disjoint union of countably many intervals) lead to different topologies on the quotient. A topological space is sequential space, sequential if and only if it is a (topological) quotient of a metric space.


Generalizations of metric spaces

There are several notions of spaces which have less structure than a metric space, but more than a topological space. * Uniform spaces are spaces in which distances are not defined, but uniform continuity is. * Approach spaces are spaces in which point-to-set distances are defined, instead of point-to-point distances. They have particularly good properties from the point of view of category theory. * Continuity spaces are a generalization of metric spaces and posets that can be used to unify the notions of metric spaces and Domain theory, domains. There are also numerous ways of relaxing the axioms for a metric, giving rise to various notions of generalized metric spaces. These generalizations can also be combined. The terminology used to describe them is not completely standardized. Most notably, in functional analysis pseudometrics often come from seminorms on vector spaces, and so it is natural to call them "semimetrics". This conflicts with the use of the term in topology.


Extended metrics

Some authors define metrics so as to allow the distance function to attain the value ∞, i.e. distances are non-negative numbers on the extended real number line. Such a function is also called an ''extended metric'' or "∞-metric". Every extended metric can be replaced by a finite metric which is topologically equivalent. This can be done using a Subadditive function, subadditive monotonically increasing bounded function which is zero at zero, e.g. d'(x, y) = d(x, y) / (1 + d(x, y)) or d''(x, y) = \min(1, d(x, y)).


Metrics valued in structures other than the real numbers

The requirement that the metric take values in [0,\infty) can be relaxed to consider metrics with values in other structures, including: * Ordered fields, yielding the notion of a generalised metric. * More general directed sets. In the absence of an addition operation, the triangle inequality does not make sense and is replaced with an ultrametric space, ultrametric inequality. This leads to the notion of a ''generalized ultrametric''. These generalizations still induce a uniform space, uniform structure on the space.


Pseudometrics

A ''pseudometric'' on X is a function d: X \times X \to \R which satisfies the axioms for a metric, except that instead of the second (identity of indiscernibles) only d(x,x)=0 for all ''x'' is required. In other words, the axioms for a pseudometric are: # d(x, y) \geq 0 # d(x,x)=0 # d(x,y)=d(y,x) # d(x,z)\leq d(x,y) + d(y,z). In some contexts, pseudometrics are referred to as ''semimetrics'' because of their relation to seminorms.


Quasimetrics

Occasionally, a quasimetric is defined as a function that satisfies all axioms for a metric with the possible exception of symmetry. The name of this generalisation is not entirely standardized. # d(x, y) \geq 0 # d(x,y)=0 \iff x=y # d(x,z) \leq d(x,y) + d(y,z) Quasimetrics are common in real life. For example, given a set of mountain villages, the typical walking times between elements of form a quasimetric because travel uphill takes longer than travel downhill. Another example is the taxicab geometry, length of car rides in a city with one-way streets: here, a shortest path from point to point goes along a different set of streets than a shortest path from to and may have a different length. A quasimetric on the reals can be defined by setting d(x,y)=\begin x-y & \textx\geq y,\\ 1 & \text \end The 1 may be replaced, for example, by infinity or by 1 + \sqrt or any other subadditivity, subadditive function of . This quasimetric describes the cost of modifying a metal stick: it is easy to reduce its size by Filing (metalworking), filing it down, but it is difficult or impossible to grow it. Given a quasimetric on , one can define an -ball around to be the set \. As in the case of a metric, such balls form a basis for a topology on , but this topology need not be metrizable. For example, the topology induced by the quasimetric on the reals described above is the (reversed) Sorgenfrey line.


Metametrics or partial metrics

In a ''metametric'', all the axioms of a metric are satisfied except that the distance between identical points is not necessarily zero. In other words, the axioms for a metametric are: # d(x,y)\geq 0 # d(x,y)=0 \implies x=y # d(x,y)=d(y,x) # d(x,z)\leq d(x,y)+d(y,z). Metametrics appear in the study of Δ-hyperbolic space, Gromov hyperbolic metric spaces and their boundaries. The ''visual metametric'' on such a space satisfies d(x,x)=0 for points x on the boundary, but otherwise d(x,x) is approximately the distance from ''x'' to the boundary. Metametrics were first defined by Jussi Väisälä. In other work, a function satisfying these axioms is called a ''partial metric'' or a ''dislocated metric''.


Semimetrics

A semimetric on X is a function d: X \times X \to \R that satisfies the first three axioms, but not necessarily the triangle inequality: # d(x,y)\geq 0 # d(x,y)=0 \iff x=y # d(x,y)=d(y,x) Some authors work with a weaker form of the triangle inequality, such as: : The ρ-inframetric inequality implies the ρ-relaxed triangle inequality (assuming the first axiom), and the ρ-relaxed triangle inequality implies the 2ρ-inframetric inequality. Semimetrics satisfying these equivalent conditions have sometimes been referred to as ''quasimetrics'', ''nearmetrics'' or inframetrics. The ρ-inframetric inequalities were introduced to model round-trip delay times in the internet. The triangle inequality implies the 2-inframetric inequality, and the ultrametric inequality is exactly the 1-inframetric inequality.


Premetrics

Relaxing the last three axioms leads to the notion of a premetric, i.e. a function satisfying the following conditions: # d(x,y)\geq 0 # d(x,x)=0 This is not a standard term. Sometimes it is used to refer to other generalizations of metrics such as pseudosemimetrics or pseudometrics; in translations of Russian books it sometimes appears as "prametric". A premetric that satisfies symmetry, i.e. a pseudosemimetric, is also called a distance. Any premetric gives rise to a topology as follows. For a positive real r, the centered at a point p is defined as :B_r(p)=\. A set is called ''open'' if for any point ''p'' in the set there is an centered at ''p'' which is contained in the set. Every premetric space is a topological space, and in fact a sequential space. In general, the themselves need not be open sets with respect to this topology. As for metrics, the distance between two sets A and ''B'', is defined as :d(A,B)=\underset\inf d(x,y). This defines a premetric on the power set of a premetric space. If we start with a (pseudosemi-)metric space, we get a pseudosemimetric, i.e. a symmetric premetric. Any premetric gives rise to a preclosure operator cl as follows: :cl(A)=\.


Pseudoquasimetrics

The prefixes ''pseudo-'', ''quasi-'' and ''semi-'' can also be combined, e.g., a pseudoquasimetric (sometimes called hemimetric) relaxes both the indiscernibility axiom and the symmetry axiom and is simply a premetric satisfying the triangle inequality. For pseudoquasimetric spaces the open form a basis of open sets. A very basic example of a pseudoquasimetric space is the set \ with the premetric given by d(0,1) = 1 and d(1,0) = 0. The associated topological space is the Sierpiński space. Sets equipped with an extended pseudoquasimetric were studied by William Lawvere as "generalized metric spaces".; From a Category theory, categorical point of view, the extended pseudometric spaces and the extended pseudoquasimetric spaces, along with their corresponding nonexpansive maps, are the best behaved of the category of metric spaces, metric space categories. One can take arbitrary products and coproducts and form quotient objects within the given category. If one drops "extended", one can only take finite products and coproducts. If one drops "pseudo", one cannot take quotients. Lawvere also gave an alternate definition of such spaces as enriched category, enriched categories. The ordered set (\mathbb,\geq) can be seen as a Category (mathematics), category with one morphism a\to b if a\geq b and none otherwise. Using as the tensor product and 0 as the Identity element, identity makes this category into a monoidal category R^*. Every (extended pseudoquasi-)metric space (M,d) can now be viewed as a category M^* enriched over R^*: * The objects of the category are the points of . * For every pair of points and such that d(x,y)<\infty, there is a single morphism which is assigned the object d(x,y) of R^*. * The triangle inequality and the fact that d(x,x)=0 for all points derive from the properties of composition and identity in an enriched category. * Since R^* is a poset, all Diagram (category theory), diagrams that are required for an enriched category commute automatically.


Metrics on multisets

The notion of a metric can be generalized from a distance between two elements to a number assigned to a multiset of elements. A multiset is a generalization of the notion of a set (mathematics), set in which an element can occur more than once. Define the multiset union U=XY as follows: if an element occurs times in and times in then it occurs times in . A function on the set of nonempty finite multisets of elements of a set is a metric if # d(X)=0 if all elements of are equal and d(X) > 0 otherwise (positive definiteness) # d(X) depends only on the (unordered) multiset (symmetry) # d(XY) \leq d(XZ)+d(ZY) (triangle inequality) By considering the cases of axioms 1 and 2 in which the multiset has two elements and the case of axiom 3 in which the multisets , , and have one element each, one recovers the usual axioms for a metric. That is, every multiset metric yields an ordinary metric when restricted to sets of two elements. A simple example is the set of all nonempty finite multisets X of integers with d(X)=\max (X)- \min (X). More complex examples are information distance in multisets; and normalized compression distance (NCD) in multisets.


See also

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Notes


Citations


References

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External links

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Far and near — several examples of distance functions
at cut-the-knot. Metric spaces, Mathematical analysis Mathematical structures Topology Topological spaces Uniform spaces