Title of article :
Cascade model with Dirichlet process for analyzing multiple dyadic matrices
Author/Authors :
Hongxia Yang، نويسنده , , Jun Wang&Alexsandra Mojslovic، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
Dyadic matrices are natural data representations in a wide range of domains.Adyadic matrix often involves
two types of abstract objects and is based on observations of pairs of elements with one element from each
object. Owing to the increasing needs from practical applications, dyadic data analysis has recently attracted
increasing attention and many techniques have been developed. However, most existing approaches, such
as co-clustering and relational reasoning, only handle a single dyadic table and lack flexibility to perform
prediction using multiple dyadic matrices. In this article, we propose a general nonparametric Bayesian
framework with a cascaded structure to model multiple dyadic matrices and then describe an efficient hybrid
Gibbs sampling algorithm for posterior inference and analysis. Empirical evaluations using both synthetic
data and real data show that the proposed model captures the hidden structure of data and generalizes the
predictive inference in a unique way.
Keywords :
Cascade model , Dirichlet process , ANOVA model , interaction , hybrid Gibbs sampler
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS