Fully dynamic hierarchical diameter k-clustering and k-center (1908.02645v1)
Abstract: We develop dynamic data structures for maintaining a hierarchical k-center clustering when the points come from a discrete space ${1,\ldots,\Delta}d$. Our first data structure is for the low dimensional setting, i.e., d is a constant, and processes insertions, deletions and cluster representative queries in $\log{O(1)} (\Delta n)$ time, where $n$ is the current size of the point set. For the high dimensional case and an integer parameter $\ell > 1$, we provide a randomized data structure that maintains an $O(d \ell)$-approximation. The amortized expected insertion time is $O(d2 \ell \log n \log \Delta)$. The amortized expected deletion time is $O(d2 n{1/\ell} \log2 n \log \Delta)$. At any point of time, with probability at least $1-1/n$, the data structure can correctly answer all queries for cluster representatives in $O(d \ell \log n \log \Delta)$ time per query.