The Gromov-Hausdorff distance is realized #
In this file, we construct of a good coupling between nonempty compact metric spaces, minimizing their Hausdorff distance. This construction is instrumental to study the Gromov-Hausdorff distance between nonempty compact metric spaces.
Given two nonempty compact metric spaces X
and Y
, we define OptimalGHCoupling X Y
as a
compact metric space, together with two isometric embeddings optimalGHInjl
and optimalGHInjr
respectively of X
and Y
into OptimalGHCoupling X Y
. The main property of the optimal
coupling is that the Hausdorff distance between X
and Y
in OptimalGHCoupling X Y
is smaller
than the corresponding distance in any other coupling. We do not prove completely this fact in this
file, but we show a good enough approximation of this fact in hausdorffDist_optimal_le_HD
, that
will suffice to obtain the full statement once the Gromov-Hausdorff distance is properly defined,
in hausdorffDist_optimal
.
The key point in the construction is that the set of possible distances coming from isometric
embeddings of X
and Y
in metric spaces is a set of equicontinuous functions. By Arzela-Ascoli,
it is compact, and one can find such a distance which is minimal. This distance defines a premetric
space structure on X ⊕ Y
. The corresponding metric quotient is OptimalGHCoupling X Y
.
The set of functions on X ⊕ Y
that are candidates distances to realize the
minimum of the Hausdorff distances between X
and Y
in a coupling.
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candidates give rise to elements of BoundedContinuousFunction
s
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The distance on X ⊕ Y
as a candidate
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We will then choose the candidate minimizing the Hausdorff distance. Except that we are not
in a metric space setting, so we need to define our custom version of Hausdorff distance,
called HD
, and prove its basic properties.
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Explicit bound on HD (dist)
. This means that when looking for minimizers it will
be sufficient to look for functions with HD(f)
bounded by this bound.
With the optimal candidate, construct a premetric space structure on X ⊕ Y
, on which the
predistance is given by the candidate. Then, we will identify points at 0
predistance
to obtain a genuine metric space.
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A metric space which realizes the optimal coupling between X
and Y
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- GromovHausdorff.instMetricSpaceOptimalGHCoupling X Y = id inferInstance
Injection of X
in the optimal coupling between X
and Y
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- GromovHausdorff.optimalGHInjl X Y x = Quotient.mk'' (Sum.inl x)
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The injection of X
in the optimal coupling between X
and Y
is an isometry.
Injection of Y
in the optimal coupling between X
and Y
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- GromovHausdorff.optimalGHInjr X Y y = Quotient.mk'' (Sum.inr y)
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The injection of Y
in the optimal coupling between X
and Y
is an isometry.
The optimal coupling between two compact spaces X
and Y
is still a compact space
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- (_ : CompactSpace (GromovHausdorff.OptimalGHCoupling X Y)) = (_ : CompactSpace (GromovHausdorff.OptimalGHCoupling X Y))
For any candidate f
, HD(f)
is larger than or equal to the Hausdorff distance in the
optimal coupling. This follows from the fact that HD
of the optimal candidate is exactly
the Hausdorff distance in the optimal coupling, although we only prove here the inequality
we need.