The Convergent Indian Buffet Process

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초록

We propose a new Bayesian nonparametric prior for latent feature models, called the Convergent Indian Buffet Process (CIBP). We show that under the CIBP, the number of latent features is distributed as a Poisson distribution, with the mean monotonically increasing but converging to a certain value as the number of objects goes to infinity. That is, the expected number of features is bounded above even when the number of objects goes to infinity, unlike the standard Indian Buffet Process, under which the expected number of features increases with the number of objects. We provide two alternative representations of the CIBP based on a hierarchical distribution and a completely random measure, which are of independent interest. The proposed CIBP is assessed on a high-dimensional sparse factor model.

키워드

Indian buffet processlatent feature modelscompletely random measuresparse factor models
제목
The Convergent Indian Buffet Process
저자
Ohn, Ilsang
DOI
10.3390/math13233881
발행일
2025-12-03
유형
Article
저널명
MATHEMATICS
13
23