Method and Apparatus for Selecting Clusterings to Classify A Predetermined Data Set
Gary King, Justin Grimmer. 2013.
"Method and Apparatus for Selecting Clusterings to Classify A Predetermined Data Set".
United States of America 8,438,162.

Abstract
A method for selecting clusterings to classify a predetermined data set of numerical data comprises five steps. First, a plurality of known clustering methods are applied, one at a time, to the data set to generate clusterings for each method. Second, a metric space of clusterings is generated using a metric that measures the similarity between two clusterings. Third, the metric space is projected to a lower dimensional representation useful for visualization. Fourth, a “local cluster ensemble” method generates a clustering for each point in the lower dimensional space. Fifth, an animated visualization method uses the output of the local cluster ensemble method to display the lower dimensional space and to allow a user to move around and explore the space of clustering.
See Also
- [Patent] Method and Apparatus for Selecting Clusterings to Classify a Data Set (2016)
- [Presentation] Big Data Is Not About the Data! (2018)
- [Presentation] Big Data Reveals Made Up Data: How the Chinese Government Fabricates Social Media Posts for Strategic Distraction, Not Engaged Argument (2017)
- [Presentation] Big Data Is Not About the Data! The Power of Modern Analytics (2016)
- [Book] Preface: Big Data Is Not About the Data! (2016)
- [Presentation] Big Data Is Not About the Data, With Applications (2015)
- [Presentation] Big Data Is Not About The Data! (2013)
- [Paper] Preserving Quantitative Research-Elicited Data for Longitudinal Analysis. New Developments in Archiving Survey Data in the U.S. (2009)