科学研究
报告题目:

Cluster analysis on locally asymptotically self-similar processes

报告人:

饶楠(苏州大学)

报告时间:

报告地点:

金沙9001cc诚为本东北楼四楼报告厅(404)

报告摘要:

We introduce a new unsupervised learning problem: clustering locally asymptotically self-similar processes. Covariance-based dissimilarity measures and asymptotically consistent algorithms are designed for clustering in offline and online data settings, respectively. We discuss an approach to improve the efficiency of clustering algorithms when they are applied to cluster self-similar processes. In a simulation study, several excellent examples are provided to show the efficiency and consistency of the clustering algorithms. In a real world project, we successfully apply these algorithms to cluster the global equity markets of different regions.