Tornar a Working Papers

Paper #1271

Títol:
A simple permutation test for clusteredness
Autor:
Michael Greenacre
Data:
Abril 2011
Resum:
Hierarchical clustering is a popular method for finding structure in multivariate data, resulting in a binary tree constructed on the particular objects of the study, usually sampling units. The user faces the decision where to cut the binary tree in order to determine the number of clusters to interpret and there are various ad hoc rules for arriving at a decision. A simple permutation test is presented that diagnoses whether non-random levels of clustering are present in the set of objects and, if so, indicates the specific level at which the tree can be cut. The test is validated against random matrices to verify the type I error probability and a power study is performed on data sets with known clusteredness to study the type II error.
Paraules clau:
Hierarchical clustering, distance, permutation test
Codis JEL:
C19, C88
Àrea de Recerca:
Estadística, Econometria i Mètodes Quantitatius

Descarregar el paper en format PDF (61 Kb)

Cercar Working Papers


Per data:
-cal seleccionar un valor a les quatre llistes desplegables-



Consultes Predefinides