Clustering of Modal Valued Symbolic Data
This work addresses the need for clustering methods that preserve detailed distributional information in symbolic data, which is incremental as it builds on existing symbolic data analysis frameworks.
The authors tackled the problem of clustering symbolic data with modal values by proposing a new clustering criterion and compatible leaders and agglomerative hierarchical methods, showing that these methods efficiently handle large datasets and enable determination of the optimal number of clusters through dendrograms, with results demonstrated on ESS data.
Symbolic Data Analysis is based on special descriptions of data - symbolic objects (SO). Such descriptions preserve more detailed information about units and their clusters than the usual representations with mean values. A special kind of symbolic object is a representation with frequency or probability distributions (modal values). This representation enables us to consider in the clustering process the variables of all measurement types at the same time. In the paper a clustering criterion function for SOs is proposed such that the representative of each cluster is again composed of distributions of variables' values over the cluster. The corresponding leaders clustering method is based on this result. It is also shown that for the corresponding agglomerative hierarchical method a generalized Ward's formula holds. Both methods are compatible - they are solving the same clustering optimization problem. The leaders method efficiently solves clustering problems with large number of units; while the agglomerative method can be applied alone on the smaller data set, or it could be applied on leaders, obtained with compatible nonhierarchical clustering method. Such a combination of two compatible methods enables us to decide upon the right number of clusters on the basis of the corresponding dendrogram. The proposed methods were applied on different data sets. In the paper, some results of clustering of ESS data are presented.