Sparse regression has emerged as a popular technique for learning dynami...
In this paper we propose univariate volatility models for irregularly sp...
In this paper we describe fast Bayesian statistical analysis of vector
p...
Time-course gene expression datasets provide insight into the dynamics o...
We propose NonStGGM, a general nonparametric graphical modeling framewor...
High-dimensional time series datasets are becoming increasingly common i...
Random forest (RF) is one of the most popular methods for estimating
reg...
Tree ensembles such as Random Forests have achieved impressive empirical...
Network modeling of high-dimensional time series data is a key learning ...
Spectral density matrix estimation of multivariate time series is a clas...
Advances in supervised learning have enabled accurate prediction in
biol...
The purpose of this paper is to re-investigate the estimation of multipl...
The Vector AutoRegressive (VAR) model is fundamental to the study of
mul...
Genomics has revolutionized biology, enabling the interrogation of whole...