Federated learning (FL) demonstrates its advantages in integrating
distr...
Gaussian process state-space models (GPSSMs) provide a principled and
fl...
The Binary Space Partitioning-Tree (BSP-Tree) process was recently propo...
Bayesian nonparametric space partition (BNSP) models provide a variety o...
Metric learning has been successful in learning new metrics adapted to
n...
Modelling exchangeable relational data can be described by graphon
theor...
The Dirichlet Belief Network (DirBN) has been recently proposed as a
pro...
We propose a probabilistic framework for modelling and exploring the lat...
In this paper, we consider the sigmoid Gaussian Hawkes process model: th...
The stationarity is assumed in vanilla Hawkes process, which reduces the...
The Binary Space Partitioning (BSP)-Tree process is proposed to produce
...
The Mondrian process represents an elegant and powerful approach for spa...
Stochastic partition models divide a multi-dimensional space into a numb...
Stochastic partition models tailor a product space into a number of
rect...
Effectively modelling hidden structures in a network is very practical b...
It has always been a great challenge for clustering algorithms to
automa...
Graph Shift (GS) algorithms are recently focused as a promising approach...
Directional and pairwise measurements are often used to model
inter-rela...
The Mixed-Membership Stochastic Blockmodel (MMSB) is a popular
framework...
This paper proposes a generative model, the latent Dirichlet hidden Mark...