State of the Art Clustering

State-of-the-art clustering research focuses on developing robust and efficient algorithms capable of handling diverse data types (including images, time series, and mixed-type data) and complex structures, often without requiring prior knowledge of the number of clusters. Current efforts emphasize self-supervised learning, adaptive methods that optimize feature representations and cluster assignments, and the development of novel distance metrics tailored to specific data characteristics. These advancements are crucial for improving the accuracy and interpretability of clustering results across various scientific domains and practical applications, such as data mining, recommendation systems, and anomaly detection.

Papers