Enum kodama::Method

source ·
pub enum Method {
    Single,
    Complete,
    Average,
    Weighted,
    Ward,
    Centroid,
    Median,
}
Expand description

A method for computing the dissimilarities between clusters.

The method selected dictates how the dissimilarities are computed whenever a new cluster is formed. In particular, when clusters a and b are merged into a new cluster ab, then the pairwise dissimilarity between ab and every other cluster is computed using one of the methods variants in this type.

Variants§

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Single

Assigns the minimum dissimilarity between all pairs of observations.

Specifically, if AB is a newly merged cluster and X is every other cluster, then the pairwise dissimilarity between AB and X is computed by

min(d[ab, x] for ab in AB for x in X)

where ab and x correspond to all observations in AB and X, respectively.

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Complete

Assigns the maximum dissimilarity between all pairs of observations.

Specifically, if AB is a newly merged cluster and X is every other cluster, then the pairwise dissimilarity between AB and X is computed by

max(d[ab, x] for ab in AB for x in X)

where ab and x correspond to all observations in AB and X, respectively.

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Average

Assigns the average dissimilarity between all pairs of observations.

Specifically, if AB is a newly merged cluster and X is every other cluster, then the pairwise dissimilarity between AB and X is computed by

sum(d[ab, x] for ab in AB for x in X) / (|AB| * |X|)

where ab and x correspond to all observations in AB and X, respectively, and |AB| and |X| correspond to the total number of observations in AB and X, respectively.

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Weighted

Assigns the weighted dissimilarity between clusters.

Specifically, if AB is a newly merged cluster and X is every other cluster, then the pairwise dissimilarity between AB and X is computed by

0.5 * (d(A, X) + d(B, X))

where A and B correspond to the clusters that merged to create AB.

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Ward

Assigns the Ward dissimilarity between clusters.

Specifically, if AB is a newly merged cluster and X is every other cluster, then the pairwise dissimilarity between AB and X is computed by

let t1 = d(A, X)^2 * (|A| + |X|);
let t2 = d(B, X)^2 * (|B| + |X|);
let t3 = d(A, B)^2 * |X|;
let T = |A| + |B| + |X|;
sqrt(t1/T + t2/T + t3/T)

where A and B correspond to the clusters that merged to create AB.

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Centroid

Assigns the centroid dissimilarity between clusters.

Specifically, if AB is a newly merged cluster and X is every other cluster, then the pairwise dissimilarity between AB and X is computed by

let t1 = |A| * d(A, X)^2 + |B| * d(B, X)^2);
let t2 = |A| * |B| * d(A, B)^2;
let size = |A| + |B|;
sqrt(t1/size - t2/size^2)

where A and B correspond to the clusters that merged to create AB.

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Median

Assigns the median dissimilarity between clusters.

Specifically, if AB is a newly merged cluster and X is every other cluster, then the pairwise dissimilarity between AB and X is computed by

sqrt(d(A, X)^2/2 + d(B, X)^2/2 - d(A, B)^2/4)

where A and B correspond to the clusters that merged to create AB.

Implementations§

Convert this linkage method into a nearest neighbor chain method.

More specifically, if this method is a method that the nnchain algorithm can compute, then this returns the corresponding MethodChain value. Otherwise, this returns None.

Trait Implementations§

Returns a copy of the value. Read more
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The associated error which can be returned from parsing.
Parses a string s to return a value of this type. Read more
This method tests for self and other values to be equal, and is used by ==.
This method tests for !=. The default implementation is almost always sufficient, and should not be overridden without very good reason.

Auto Trait Implementations§

Blanket Implementations§

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That is, this conversion is whatever the implementation of From<T> for U chooses to do.

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The type returned in the event of a conversion error.
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Performs the conversion.