Proposed Analyses: ------------------ k-means clustering correlation PCA dimension reduction - done hierarchical clustering - In single-linkage clustering (also called the connectedness or minimum method), we consider the distance between one cluster and another cluster to be equal to the shortest distance from any member of one cluster to any member of the other cluster. If the data consist of similarities, we consider the similarity between one cluster and another cluster to be equal to the greatest similarity from any member of one cluster to any member of the other cluster. - In complete-linkage clustering (also called the diameter or maximum method), we consider the distance between one cluster and another cluster to be equal to the greatest distance from any member of one cluster to any member of the other cluster. - In average-linkage clustering, we consider the distance between one cluster and another cluster to be equal to the average distance from any member of one cluster to any member of the other cluster. - http://www.elet.polimi.it/upload/matteucc/Clustering/tutorial_html/hierarchical.html Proposed Results: ----------------- TotalResults - done MeanResults - done VarianceResults - done StDevResults - done MinResults - done MaxResults - done