| Package | Description |
|---|---|
| weka.clusterers | |
| weka.core |
| Modifier and Type | Method and Description |
|---|---|
static Canopy |
Canopy.aggregateCanopies(List<Canopy> canopies,
double aggregationT1,
double aggregationT2,
NormalizableDistance finalDistanceFunction,
Filter missingValuesReplacer,
int finalNumCanopies)
Aggregate the canopies from a list of Canopy clusterers together into one
final model.
|
| Modifier and Type | Class and Description |
|---|---|
class |
ChebyshevDistance
Implements the Chebyshev distance.
|
class |
EuclideanDistance
Implementing Euclidean distance (or similarity) function.
One object defines not one distance but the data model in which the distances between objects of that data model can be computed. Attention: For efficiency reasons the use of consistency checks (like are the data models of the two instances exactly the same), is low. For more information, see: Wikipedia. |
class |
ManhattanDistance
Implements the Manhattan distance (or Taxicab geometry).
|
class |
MinkowskiDistance
Implementing Minkowski distance (or similarity)
function.
One object defines not one distance but the data model in which the distances between objects of that data model can be computed. Attention: For efficiency reasons the use of consistency checks (like are the data models of the two instances exactly the same), is low. For more information, see: Wikipedia. |
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