Talks
Spring 2017
A Cost Function for Similarity-Based Hierarchical Clustering
Wednesday, May 3rd, 2017, 11:45 am–12:30 pm
Speaker:
The development of algorithms for hierarchical clustering has been hampered by a shortage of precise objective functions. To help address this situation, we introduce a simple cost function on hierarchies over a set of points, given pairwise similarities between those points. We show that this criterion behaves sensibly in canonical instances and that it admits a top-down construction procedure with a provably good approximation ratio.
We show, moreover, that this procedure lends itself naturally to an interactive setting in which the user is repeatedly shown snapshots of the hierarchy and makes corrections to these.