Title of article
Emergent clustering methods for empirical OM research
Author/Authors
Brusco، نويسنده , , Michael J. and Steinley، نويسنده , , Douglas and Cradit، نويسنده , , J. Dennis and Singh، نويسنده , , Renu، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2012
Pages
13
From page
454
To page
466
Abstract
To date, the vast majority of cluster analysis applications in OM research have relied on traditional hierarchical (e.g., Wardʹs algorithm) and nonhierarchical (e.g., K-means algorithms) methods. Although these venerable methods should continue to be employed effectively in the OM literature, we also believe there is a significant opportunity to expand the scope of clustering methods to emergent techniques. We provide an overview of some alternative clustering procedures (including advantages and disadvantages), identify software programs for implementing them, and discuss the circumstances where they might be employed gainfully in OM research. The implementation of emergent clustering methods in the OM literature should enable researchers to offer implications for practice that might not have been uncovered with traditional methods.
Keywords
Multivariate statistics , Cluster analysis , empirical research methods
Journal title
Journal of Operations Management
Serial Year
2012
Journal title
Journal of Operations Management
Record number
2130276
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