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DOCUMENTATION CENTER SEARCH
Mathematica
>
Distance and Dissimilarity Measures
>
Built-in
Mathematica
Symbol
Partitioning Data into Clusters
Tutorials »
|
MatchingDissimilarity
DiceDissimilarity
SokalSneathDissimilarity
JaccardDissimilarity
RussellRaoDissimilarity
RogersTanimotoDissimilarity
See Also »
|
Distance and Dissimilarity Measures
More About »
YuleDissimilarity
YuleDissimilarity
[
u
,
v
]
gives the Yule dissimilarity between Boolean vectors
u
and
v
.
MORE INFORMATION
YuleDissimilarity
works for both
True
,
False
vectors and
vectors.
YuleDissimilarity
[
u
,
v
]
is equivalent to
, where
is the number of corresponding pairs of elements in
and
respectively equal to
and
.
EXAMPLES
CLOSE ALL
Basic Examples
(2)
Yule dissimilarity between two Boolean vectors:
In[1]:=
Out[1]=
The elements can also be
True
and
False
:
In[1]:=
Out[1]=
Scope
(2)
Applications
(2)
Properties & Relations
(1)
SEE ALSO
MatchingDissimilarity
DiceDissimilarity
SokalSneathDissimilarity
JaccardDissimilarity
RussellRaoDissimilarity
RogersTanimotoDissimilarity
TUTORIALS
Partitioning Data into Clusters
MORE ABOUT
Distance and Dissimilarity Measures
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