SMS scnews item created by Tiangang Cui at Thu 13 Nov 2025 2150
Type: Seminar
Distribution: World
Expiry: 13 Nov 2026
Calendar1: 21 Nov 2025 1400-1500
CalLoc1: Carslaw 275
CalTitle1: Regression Tree and Clustering for Distributions, and Homogeneous Structure of Population Characteristics
Auth: tcui@128.250.48.206 (tcui0786) in SMS-SAML

Seminar

Regression Tree and Clustering for Distributions, and Homogeneous Structure of Population Characteristics

Minami

The next statistics seminar will be presented by Professor Mihoko Minami from Keio University.

Title: Regression Tree and Clustering for Distributions, and Homogeneous Structure of Population Characteristics
Speaker: Professor Mihoko Minami
Time and location : 2-3pm in Carslaw Lecture Theatre 275 or Zoom
Abstract :

Scientists often collect samples on characteristics of different observation units and wonder whether those characteristics have similar distributional structure. We consider methods to find homogeneous subpopulations in a multidimensional space using regression tree and clustering methods for distributions of a population characteristic. We present a new methodology to estimate a standardized measure of distance between clusters of distributions and for hierarchical testing to find the minimal homogeneous or near-homogeneous tree structure. In addition, we introduce hierarchical clustering with adjacency constraints, which is useful for clustering georeferenced distributions. We conduct simulation studies to compare clustering performance with three measures: Modified Jensen-Shannon divergence (MJS), Earth Mover's distance and Cram\'er Von-Mises distance to validate the proposed testing procedure for homogeneity.

As a motivational example, we introduce georeferenced yellowfin tuna fork length data collected from the catch of purse-seine vessels that operated in the eastern Pacific Ocean. Hierarchical clustering, with and without spatial adjacency constraints, and regression tree methods were applied to the density estimates of length. While the results from the two methods showed some similarities, hierarchical clustering with spatial adjacency produced a more flexible partition structure, without requiring additional covariate information. Clustering with MJS produced more stable results than clustering with the other measures.


Actions:
ball Calendar (ICS file) download, for import into your favourite calendar application
ball UNCLUTTER for printing
ball AUTHENTICATE to mark the scnews item as read
School members may try to .