Online Clustering
Online clustering focuses on dynamically grouping data points as they arrive, without requiring the entire dataset beforehand. Current research emphasizes developing robust and efficient algorithms, often integrating deep learning models (like restricted Boltzmann machines or contrastive learning networks) with online clustering techniques (such as k-means or probability aggregation clustering) to handle high-dimensional data streams and address challenges like cluster collapse and misspecified models. These advancements are significant for various applications, including malware analysis, speaker diarization, and activity recognition, enabling real-time processing and improved adaptability to evolving data patterns.
Papers
September 25, 2024
July 7, 2024
July 5, 2024
May 6, 2024
February 14, 2024
January 3, 2024
December 6, 2023
October 26, 2023
October 4, 2023
June 27, 2023
May 17, 2023
May 1, 2023
March 29, 2023
March 22, 2023
February 13, 2023
October 21, 2022
August 31, 2022
July 6, 2022
June 7, 2022