(New page: == Numeric Version of Example Given in Lecture == It's easier for me to follow numerical examples than qualitative, so here is the same example Dr. Boutin gave in lecture of a distance fu...)
 
 
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=Not all dissimilarity measures satisfy the triangle inequality...=
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== Numeric Version of Example Given in Lecture ==
 
== Numeric Version of Example Given in Lecture ==
  
 
It's easier for me to follow numerical examples than qualitative,
 
It's easier for me to follow numerical examples than qualitative,
so here is the same example Dr. Boutin gave in lecture of a
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so here is the same example [[User:mboutin|Dr. Boutin]] gave in lecture of a
 
distance function for which the triangle inequality fails to
 
distance function for which the triangle inequality fails to
 
hold reframed in a numeric context.
 
hold reframed in a numeric context.
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Note that the first 3 axioms apply.  By definition <math>D</math> is
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Note that the first 3 axioms hold.  By definition <math>D</math> is
 
either 0 or the minimum of the absolute value of non-zero values, hence
 
either 0 or the minimum of the absolute value of non-zero values, hence
 
<math>D</math> is non-negative.  By symmetry of absolute value,
 
<math>D</math> is non-negative.  By symmetry of absolute value,
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--[[User:Jvaught|Jvaught]] 17:29, 25 March 2010 (UTC)
 
--[[User:Jvaught|Jvaught]] 17:29, 25 March 2010 (UTC)
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[[2010_Spring_ECE_662_mboutin|Back to ECE662 Spring 2010]]

Latest revision as of 08:29, 2 April 2010

Not all dissimilarity measures satisfy the triangle inequality...

Numeric Version of Example Given in Lecture

It's easier for me to follow numerical examples than qualitative, so here is the same example Dr. Boutin gave in lecture of a distance function for which the triangle inequality fails to hold reframed in a numeric context.

Let a semimetric $ D $ be defined on $ \mathbb{R}^2 $ as $ D:\mathbb{R}^2 \times \mathbb{R}^2 \to \mathbb{R} $ by $ (\vec{x_1}, \vec{x_2}) \mapsto d $ where $ d $ is the minimal magnitude non-zero element of the difference vector $ \vec{x_1} - \vec{x_2} $ if such exists or 0 otherwise.


For example, $ D((1, 7), (-3, 12)) = \min\{|4|, |-5|\} = 4 $. $ D((1, 7), (1, 12)) = 5 $. $ D((1, 7), (1, 7)) = 0 $.


Note that the first 3 axioms hold. By definition $ D $ is either 0 or the minimum of the absolute value of non-zero values, hence $ D $ is non-negative. By symmetry of absolute value, $ D $ is symmetric. And $ D $ can only be 0 if the set of non-zero elements of the difference vector is empty, which implies that the vectors are equal. However, consider the following counter-example to the triangle inequality (which is the numerical equivalent of the example given in lecture, where the first component is the level of detail of the image and the second component is the subject of the image).


$ \vec{x_1} = (1, 10), \vec{x_2} = (2, 20), \vec{x_3} = (12, 21) $

Then $ D(\vec{x_1}, \vec{x_2}) = 1, D(\vec{x_2}, \vec{x_3}) = 1, D(\vec{x_1}, \vec{x_3}) = 11 $ and $ 1 + 1 < 11 $.

So the triangle inequality doesn't hold and $ D $ is only a semimetric.

--Jvaught 17:29, 25 March 2010 (UTC)


Back to ECE662 Spring 2010

Alumni Liaison

Ph.D. on Applied Mathematics in Aug 2007. Involved on applications of image super-resolution to electron microscopy

Francisco Blanco-Silva