Department of Mathematics

Seminar / Workshop

Image
globo con formule matematiche

A Bayesian nonparametric approach to discriminant analysis

2 February 2026, start time 11:30 - 12:30
PovoZero, Via Sommarive 14, Povo (Trento)
Seminar Room "1"
Free
Organizer: Department of Mathematics
Target audience: University community
Referent: Claudio Agostinelli e Veronica Vinciotti
Contacts: 
Staff of the Department of Mathematics
Image
globo con formule matematiche
Speaker: Laura D’Angelo (Milano Bicocca)

We introduce a Bayesian nonparametric framework to improve classical discriminant analysis, particularly in scenarios with limited sample sizes. The proposed method provides a flexible approach that encompasses both linear and quadratic discriminant analysis as special cases. Its key innovation lies in allowing information sharing across classes to improve the estimation of the class-specific covariance matrices. This is accomplished through a scale-only nonparametric mixture model defined on the space of positive definite matrices. A conjugate nonparametric prior ensures remarkable ease of implementation and tractability, allowing the analytical derivation of posterior distributions for several quantities of interest and facilitating the study of their large-sample properties. Applications to both simulated and real datasets demonstrate the adaptability and effectiveness of the proposed methodology.