In
metric geometry
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), functi ...
, the metric envelope or tight span of a
metric space
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), functi ...
''M'' is an
injective metric space In metric geometry, an injective metric space, or equivalently a hyperconvex metric space, is a metric space with certain properties generalizing those of the real line and of L∞ distances in higher- dimensional vector spaces. These properties c ...
into which ''M'' can be embedded. In some sense it consists of all points "between" the points of ''M'', analogous to the
convex hull
In geometry, the convex hull, convex envelope or convex closure of a shape is the smallest convex set that contains it. The convex hull may be defined either as the intersection of all convex sets containing a given subset of a Euclidean space, ...
of a point set in a
Euclidean space
Euclidean space is the fundamental space of geometry, intended to represent physical space. Originally, in Euclid's ''Elements'', it was the three-dimensional space of Euclidean geometry, but in modern mathematics there are ''Euclidean spaces ...
. The tight span is also sometimes known as the injective envelope or hyperconvex hull of ''M''. It has also been called the injective hull, but should not be confused with the
injective hull
In mathematics, particularly in algebra, the injective hull (or injective envelope) of a module is both the smallest injective module containing it and the largest essential extension of it. Injective hulls were first described in .
Definition
...
of a
module in
algebra
Algebra is a branch of mathematics that deals with abstract systems, known as algebraic structures, and the manipulation of expressions within those systems. It is a generalization of arithmetic that introduces variables and algebraic ope ...
, a concept with a similar description relative to the
category
Category, plural categories, may refer to:
General uses
*Classification, the general act of allocating things to classes/categories Philosophy
* Category of being
* ''Categories'' (Aristotle)
* Category (Kant)
* Categories (Peirce)
* Category ( ...
of ''R''-modules rather than metric spaces.
The tight span was first described by , and it was studied and applied by
Holsztyński in the 1960s. It was later independently rediscovered by and ; see for this history. The tight span is one of the central constructions of
T-theory.
Definition
The tight span of a metric space can be defined as follows. Let (''X'',''d'') be a metric space, and let ''T''(''X'') be the set of extremal functions on ''X'', where we say an extremal function on ''X'' to mean a function ''f'' from ''X'' to R such that
# For any ''x'', ''y'' in ''X'', ''d''(''x'',''y'') ≤ ''f''(''x'') + ''f''(''y''), and
# For each ''x'' in ''X'', ''f(x)'' = sup.
In particular (taking ''x'' = ''y'' in property 1 above) ''f''(''x'') ≥ 0 for all ''x''. One way to interpret the first requirement above is that ''f'' defines a set of possible distances from some new point to the points in ''X'' that must satisfy the
triangle inequality
In mathematics, the triangle inequality states that for any triangle, the sum of the lengths of any two sides must be greater than or equal to the length of the remaining side.
This statement permits the inclusion of Degeneracy (mathematics)#T ...
together with the distances in (''X'',''d''). The second requirement states that none of these distances can be reduced without violating the triangle inequality.
The tight span of ''(X,d)'' is the metric space ''(T(X),δ),'' where
is analogous to the metric induced by the
norm. (If ''d'' is bounded, then δ is the subspace metric induced by the metric induced by the
norm. If ''d'' is not bounded, then every extremal function on ''X'' is unbounded and so
Regardless, it will be true that for any ''f,g'' in ''T(X)'', the difference
belongs to
, i.e., is bounded.)
Equivalent definitions of extremal functions
For a function ''f'' from ''X'' to R satisfying the first requirement, the following versions of the second requirement are equivalent:
* For each ''x'' in ''X'', ''f(x)'' = sup.
* ''f'' is pointwise minimal with respect to the aforementioned first requirement, i.e., for any function ''g'' from ''X'' to R such that ''d(x,y) ≤ g(x) + g(y)'' for all ''x,y'' in ''X'', if ''g≤f'' pointwise, then ''f=g''.
[Khamsi and Kirk use this condition in their definition.][Khamsi and Kirk's proof shows one implication of the equivalence to the condition immediately above. The other implication is not difficult to show.]
Basic properties and examples
* For all ''x'' in ''X'',
* For each ''x'' in ''X'',
is extremal. (Proof: Use symmetry and the
triangle inequality
In mathematics, the triangle inequality states that for any triangle, the sum of the lengths of any two sides must be greater than or equal to the length of the remaining side.
This statement permits the inclusion of Degeneracy (mathematics)#T ...
.)
[I.e., the Kuratowski map We will introduce the Kuratowski map below.]
* If ''X'' is finite, then for any function ''f'' from ''X'' to R that satisfies the first requirement, the second requirement is equivalent to the condition that for each ''x'' in ''X'', there exists ''y'' in ''X'' such that ''f''(''x'') + ''f''(''y'') = ''d''(''x'',''y''). (If
then both conditions are true. If
then the supremum is achieved, and the first requirement implies the equivalence.)
* Say '', X, =2,'' and choose distinct ''a, b'' such that ''X=.'' Then
is the convex hull of ''.''
T(X)=\ is the convex hull of ''.''">dd a picture. Caption: If ''X=,'' then is the convex hull of ''.''ref name=HRS>
* Every extremal function ''f'' on ''X'' is ''Katetov'': ''f'' satisfies the first requirement and
or equivalently, ''f'' satisfies the first requirement and
(is 1-
Lipschitz), or equivalently, ''f'' satisfies the first requirement and
[The supremum is achieved with ''y=x''.]
* ''T(X)⊆ C(X)''. (Lipschitz functions are continuous.)
* ''T(X)'' is equicontinuous. (Follows from every extremal function on ''X'' being 1-Lipschitz; cf. Equicontinuity#Examples.)
* Not every Katetov function on ''X'' is extremal. For example, let ''a'', ''b'' be distinct, let ''X = ,'' let ''d = ( ≠y''''x,y'' in ''X'' be the discrete metric
Discrete may refer to:
*Discrete particle or quantum in physics, for example in quantum theory
*Discrete device, an electronic component with just one circuit element, either passive or active, other than an integrated circuit
*Discrete group, a g ...
on ''X'', and let ''f = .'' Then ''f'' is Katetov but not extremal. (It is almost immediate that ''f'' is Katetov. ''f'' is not extremal because it fails the property in the third bullet of this section.)
* If ''d'' is bounded, then every ''f'' in ''T(X)'' is bounded. In fact, for every ''f'' in ''T(X)'', (Note ) (Follows from the third equivalent property in the above section.)
* If ''d'' is unbounded, then every ''f'' in ''T(X)'' is unbounded. (Follows from the first requirement.)
* is closed under pointwise limits. For any pointwise convergent
* If ''(X,d)'' is compact, then ''(T(X),δ)'' is compact.[ (Proof: The extreme-value theorem implies that ''d'', being continuous as a function is bounded, so (see previous bullet) is a bounded subset of ''C(X).'' We have shown ''T(X)'' is equicontinuous, so the ]Arzelà –Ascoli theorem
The Arzelà –Ascoli theorem is a fundamental result of mathematical analysis giving necessary and sufficient conditions to decide whether every sequence of a given family of real-valued continuous functions defined on a closed and bounded inte ...
implies that ''T(X)'' is relatively compact
In mathematics, a relatively compact subspace (or relatively compact subset, or precompact subset) of a topological space is a subset whose closure is compact.
Properties
Every subset of a compact topological space is relatively compact (sinc ...
. However, the previous bullet implies ''T(X)'' is closed under the norm, since convergence implies pointwise convergence. Thus ''T(X)'' is compact.)
* For any function ''g'' from ''X'' to R that satisfies the first requirement, there exists ''f'' in ''T(X)'' such that ''f≤g'' pointwise.[
* For any extremal function ''f'' on ''X'', ][The supremum is achieved with ''y=x''.]
* For any ''f,g'' in ''T(X)'', the difference belongs to , i.e., is bounded. (Use the above bullet.)
* The ''Kuratowski map''[ is an ]isometry
In mathematics, an isometry (or congruence, or congruent transformation) is a distance-preserving transformation between metric spaces, usually assumed to be bijective. The word isometry is derived from the Ancient Greek: ἴσος ''isos'' me ...
. (When ''X''=∅, the result is obvious. When X≠∅, the reverse triangle inequality
In mathematics, the triangle inequality states that for any triangle, the sum of the lengths of any two sides must be greater than or equal to the length of the remaining side.
This statement permits the inclusion of degenerate triangles, but ...
implies the result.)
* Let ''f'' in ''T(X)''. For any ''a'' in ''X'', if ''f(a)=0'', then ''f=e(a).''[ (For every ''x'' in ''X'' we have From minimality (second equivalent characterization in above section) of ''f'' and the fact that satisfies the first requirement it follows that )
*''(X,d)'' is ]hyperbolic
Hyperbolic may refer to:
* of or pertaining to a hyperbola, a type of smooth curve lying in a plane in mathematics
** Hyperbolic geometry, a non-Euclidean geometry
** Hyperbolic functions, analogues of ordinary trigonometric functions, defined u ...
if and only if ''(T(X),δ)'' is hyperbolic.[
]
Hyperconvexity properties
* ''(T(X),δ)'' and are both hyperconvex.[
* For any ''Y'' such that is not hyperconvex.][ ("''(T(X),δ)'' is a hyperconvex hull of ''(X,d)''.")
* Let be a hyperconvex metric space with and . If for all ''I'' with is not hyperconvex, then and ''(T(X),δ)'' are isometric.][ ("Every hyperconvex hull of ''(X,d)'' is isometric with ''(T(X),δ).''")
]
Examples
* Say '', X, =3,'' choose distinct ''a, b, c'' such that ''X=,'' and let ''i=d(a,b), j=d(a,c), k=d(b,c).'' Then where dd a picture. Caption: If ''X=,'' then ''T(X)=conv u conv u conv'' is shaped like the letter Y.(Cf. )
* The figure shows a set ''X'' of 16 points in the plane; to form a finite metric space from these points, we use the Manhattan distance
Taxicab geometry or Manhattan geometry is geometry where the familiar Euclidean distance is ignored, and the distance between two point (geometry), points is instead defined to be the sum of the absolute differences of their respective Cartesian ...
( distance). The blue region shown in the figure is the orthogonal convex hull, the set of points ''z'' such that each of the four closed quadrants with ''z'' as apex contains a point of ''X''. Any such point ''z'' corresponds to a point of the tight span: the function ''f''(''x'') corresponding to a point ''z'' is ''f''(''x'') = ''d''(''z'',''x''). A function of this form satisfies property 1 of the tight span for any ''z'' in the Manhattan-metric plane, by the triangle inequality for the Manhattan metric. To show property 2 of the tight span, consider some point ''x'' in ''X''; we must find ''y'' in ''X'' such that ''f''(''x'')+''f''(''y'')=''d''(''x'',''y''). But if ''x'' is in one of the four quadrants having ''z'' as apex, ''y'' can be taken as any point in the opposite quadrant, so property 2 is satisfied as well. Conversely it can be shown that every point of the tight span corresponds in this way to a point in the orthogonal convex hull of these points. However, for point sets with the Manhattan metric in higher dimensions, and for planar point sets with disconnected orthogonal hulls, the tight span differs from the orthogonal convex hull.
Dimension of the tight span when ''X'' is finite
The definition above embeds the tight span ''T''(''X'') of a set of ''n'' () points into R''X'', a real vector space of dimension ''n''. On the other hand, if we consider the dimension of ''T''(''X'') as a polyhedral complex, showed that, with a suitable general position assumption on the metric, this definition leads to a space with dimension between ''n''/3 and ''n''/2.
Alternative definitions
An alternative definition based on the notion of a metric space aimed at its subspace was described by , who proved that the injective envelope of a Banach space, in the category of Banach spaces, coincides (after forgetting the linear structure) with the tight span. This theorem allows to reduce certain problems from arbitrary Banach spaces to Banach spaces of the form C(X), where X is a compact space.
attempted to provide an alternative definition of the tight span of a finite metric space as the tropical convex hull of the vectors of distances from each point to each other point in the space. However, later the same year they acknowledged in an ''Erratum'' that, while the tropical convex hull always contains the tight span, it may not coincide with it.
Applications
* describe applications of the tight span in reconstructing evolutionary trees from biological data.
*The tight span serves a role in several online algorithm
In computer science, an online algorithm is one that can process its input piece-by-piece in a serial fashion, i.e., in the order that the input is fed to the algorithm, without having the entire input available from the start. In contrast, an of ...
s for the K-server problem
The -server problem is a problem of theoretical computer science in the category of online algorithms, one of two abstract problems on metric spaces that are central to the theory of competitive analysis (the other being metrical task systems). ...
.[.]
* uses the tight span to classify metric spaces on up to six points.
* uses the tight span to prove results about packing cut metrics into more general finite metric spaces.
See also
* Kuratowski embedding, an embedding of any metric space into a Banach space
In mathematics, more specifically in functional analysis, a Banach space (, ) is a complete normed vector space. Thus, a Banach space is a vector space with a metric that allows the computation of vector length and distance between vectors and ...
defined similarly to the Kuratowski map
*Injective metric space In metric geometry, an injective metric space, or equivalently a hyperconvex metric space, is a metric space with certain properties generalizing those of the real line and of L∞ distances in higher- dimensional vector spaces. These properties c ...
Notes
References
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External links
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{{Metric spaces
Metric geometry