1 research outputs found
Local algorithms for interactive clustering
We study the design of interactive clustering algorithms for data sets
satisfying natural stability assumptions. Our algorithms start with any initial
clustering and only make local changes in each step; both are desirable
features in many applications. We show that in this constrained setting one can
still design provably efficient algorithms that produce accurate clusterings.
We also show that our algorithms perform well on real-world data