Cluster Structure
Cluster structure analysis aims to identify groups of similar data points, a fundamental task with applications across diverse fields. Current research focuses on developing robust and scalable algorithms, including graph neural networks and variations of spectral clustering, to handle challenges like high dimensionality, dynamic data, and privacy constraints in multi-site analyses. These advancements are improving the accuracy and efficiency of clustering, particularly in areas such as medical image analysis, music transcription, and wildfire prediction, leading to more insightful interpretations of complex datasets. Furthermore, research is actively addressing the evaluation and visualization of cluster results, particularly for overlapping clusters.
Papers
Human in-the-Loop Estimation of Cluster Count in Datasets via Similarity-Driven Nested Importance Sampling
Gustavo Perez, Daniel Sheldon, Grant Van Horn, Subhransu Maji
Scientific Preparation for CSST: Classification of Galaxy and Nebula/Star Cluster Based on Deep Learning
Yuquan Zhang, Zhong Cao, Feng Wang, Lam, Man I, Hui Deng, Ying Mei, Lei Tan