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Merging $K$-means with hierarchical clustering for identifying general-shaped groups
Anna D. Peterson; Arka P. Ghosh; Ranjan Maitra

Abstract
Clustering partitions a dataset such that observations placed together in a group are similar but different from those in other groups. Hierarchical and $K$-means clustering are two approaches but have different strengths and weaknesses. For instance, hierarchical clustering identifies groups in a tree-like structure but suffers from computational complexity in large datasets while $K$-means clustering is efficient but designed to identify homogeneous spherically-shaped clusters. We present a hybrid non-parametric clustering approach that amalgamates the two methods to identify general-shaped clusters and that can be applied to larger datasets. Specifically, we first partition the dataset into spherical groups using $K$-means. We next merge these groups using hierarchical methods with a data-driven distance measure as a stopping criterion. Our proposal has the potential to reveal groups with general shapes and structure in a dataset. We demonstrate good performance on several simulated and real datasets.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| speech-synthesis-on-north-american-english | means | Mean Opinion Score: 0 |
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