Fuzzy Clustering with Similarity Queries
Abstract
The fuzzy or soft $k$-means objective is a popular generalization of the well-known $k$-means problem, extending the clustering capability of the $k$-means to datasets that are uncertain, vague and otherwise hard to cluster. In this paper, we propose a semi-supervised active clustering framework, where the learner is allowed to interact with an oracle (domain expert), asking for the similarity between a certain set of chosen items. We study the query and computational complexities of clustering in this framework. We prove that having a few of such similarity queries enables one to get a polynomial-time approximation algorithm to an otherwise conjecturally NP-hard problem. In particular, we provide algorithms for fuzzy clustering in this setting that ask $O(\mathsf{poly}(k)\log n)$ similarity queries and run with polynomial-time-complexity, where $n$ is the number of items. The fuzzy $k$-means objective is nonconvex, with $k$-means as a special case, and is equivalent to some other generic nonconvex problem such as non-negative matrix factorization. The ubiquitous Lloyd-type algorithms (or alternating-minimization algorithms) can get stuck at a local minima. Our results show that by making few similarity queries, the problem becomes easier to solve. Finally, we test our algorithms over real-world datasets, showing their effectiveness in real-world applications.
Cite
Text
Huleihel et al. "Fuzzy Clustering with Similarity Queries." Neural Information Processing Systems, 2021.Markdown
[Huleihel et al. "Fuzzy Clustering with Similarity Queries." Neural Information Processing Systems, 2021.](https://mlanthology.org/neurips/2021/huleihel2021neurips-fuzzy/)BibTeX
@inproceedings{huleihel2021neurips-fuzzy,
title = {{Fuzzy Clustering with Similarity Queries}},
author = {Huleihel, Wasim and Mazumdar, Arya and Pal, Soumyabrata},
booktitle = {Neural Information Processing Systems},
year = {2021},
url = {https://mlanthology.org/neurips/2021/huleihel2021neurips-fuzzy/}
}