English

Adaptive Wavelet Clustering for Highly Noisy Data

Databases 2019-01-08 v2 Information Retrieval

Abstract

In this paper we make progress on the unsupervised task of mining arbitrarily shaped clusters in highly noisy datasets, which is a task present in many real-world applications. Based on the fundamental work that first applies a wavelet transform to data clustering, we propose an adaptive clustering algorithm, denoted as AdaWave, which exhibits favorable characteristics for clustering. By a self-adaptive thresholding technique, AdaWave is parameter free and can handle data in various situations. It is deterministic, fast in linear time, order-insensitive, shape-insensitive, robust to highly noisy data, and requires no pre-knowledge on data models. Moreover, AdaWave inherits the ability from the wavelet transform to cluster data in different resolutions. We adopt the "grid labeling" data structure to drastically reduce the memory consumption of the wavelet transform so that AdaWave can be used for relatively high dimensional data. Experiments on synthetic as well as natural datasets demonstrate the effectiveness and efficiency of our proposed method.

Keywords

Cite

@article{arxiv.1811.10786,
  title  = {Adaptive Wavelet Clustering for Highly Noisy Data},
  author = {Zengjian Chen and Jiayi Liu and Yihe Deng and Kun He and John E. Hopcroft},
  journal= {arXiv preprint arXiv:1811.10786},
  year   = {2019}
}

Comments

11 pages,13 figures,ICDE

R2 v1 2026-06-23T06:21:27.740Z