The tensor Ising model is a discrete exponential family used for modeling binary data on networks with not just pairwise, but higher-order dependencies. A particularly important class of tensor Ising models are the tensor Curie-Weiss models, where all tuples of nodes of a particular order interact with the same intensity. The maximum likelihood estimator (MLE) is not explicit in this model, due to the presence of an intractable normalizing constant in the likelihood, and a computationally efficient alternative is to use the maximum pseudolikelihood estimator (MPLE). In this paper, we show that the MPLE is in fact as efficient as the MLE (in the Bahadur sense) in the $2$-spin model, and for all values of the null parameter above $\log 2$ in ...
The $\boldsymbol{\beta}$-model for random graphs is commonly used for representing pairwise interact...
8 pages, 3 figures, 1 tableWe consider tensor factorizations using a generative model and a Bayesian...
Motivated by the recent success of tensor networks to calculate the residual entropy of spin ice and...
The Ising model is a celebrated example of a Markov random field, which was introduced in statistica...
The Ising model is a celebrated example of a Markov random field, which was introduced in statistica...
In this paper we consider the problem of parameter estimation in the $p$-spin Curie-Weiss model, for...
We revisit the problem of efficiently learning the underlying parameters of Ising models from data. ...
The Ising model is important in statistical modeling and inference in many applications, however its...
We theoretically analyze the model selection consistency of least absolute shrinkage and selection o...
This paper studies the statistical and computational limits of high-order clustering with planted st...
Reconstruction of interaction network between random events is a critical problem arising from stati...
In this thesis, we consider optimization problems that involve statistically estimating signals from...
We consider the Principal Component Analysis problem for large tensors of ar-bitrary order k under a...
The aim of this thesis is to systematically study the statistical guarantee for two representative n...
The exponential-family random graph models (ERGMs) have emerged as an important framework for modeli...
The $\boldsymbol{\beta}$-model for random graphs is commonly used for representing pairwise interact...
8 pages, 3 figures, 1 tableWe consider tensor factorizations using a generative model and a Bayesian...
Motivated by the recent success of tensor networks to calculate the residual entropy of spin ice and...
The Ising model is a celebrated example of a Markov random field, which was introduced in statistica...
The Ising model is a celebrated example of a Markov random field, which was introduced in statistica...
In this paper we consider the problem of parameter estimation in the $p$-spin Curie-Weiss model, for...
We revisit the problem of efficiently learning the underlying parameters of Ising models from data. ...
The Ising model is important in statistical modeling and inference in many applications, however its...
We theoretically analyze the model selection consistency of least absolute shrinkage and selection o...
This paper studies the statistical and computational limits of high-order clustering with planted st...
Reconstruction of interaction network between random events is a critical problem arising from stati...
In this thesis, we consider optimization problems that involve statistically estimating signals from...
We consider the Principal Component Analysis problem for large tensors of ar-bitrary order k under a...
The aim of this thesis is to systematically study the statistical guarantee for two representative n...
The exponential-family random graph models (ERGMs) have emerged as an important framework for modeli...
The $\boldsymbol{\beta}$-model for random graphs is commonly used for representing pairwise interact...
8 pages, 3 figures, 1 tableWe consider tensor factorizations using a generative model and a Bayesian...
Motivated by the recent success of tensor networks to calculate the residual entropy of spin ice and...