© Springer International Publishing Switzerland 2015. In recommender systems, matrix decompositions, in particular singular value decomposition (SVD), represent users and items as vectors of features and allow for additional terms in the decomposition to account for other available information. In text mining, topic modeling, in particular latent Dirichlet allocation (LDA), are designed to extract topical content of a large corpus of documents. In this work, we present a unified SVD-LDA model that aims to improve SVD-based recommendations for items with textual content with topic modeling of this content. We develop a training algorithm for SVD-LDA based on a first order approximation to Gibbs sampling and show significant improvements in r...
Most of the existing recommender systems are based only on the rating data, and they ignore other so...
Abstract-Text categorization is the task of automatically assigning unlabeled text documents to some...
Presentation at the 2018 Meeting of the Academy of Human Resource Development. The aim of this prese...
© Springer International Publishing Switzerland 2015. In recommender systems, matrix decompositions,...
© Springer International Publishing Switzerland 2015. In recommender systems, matrix decompositions,...
© Springer International Publishing Switzerland 2015. In recommender systems, matrix decompositions,...
In this work, we compare two extensions of two different topic models for the same problem of recomm...
In this work, we compare two extensions of two different topic models for the same problem of recomm...
We propose fLDA, a novel matrix factorization method to predict ratings in recommender system applic...
Automatic text categorization is one of the key techniques in information retrieval and the data min...
In this work, we compare two extensions of two different topic models for the same problem of recomm...
The probabilistic topic model imposes a low-rank structure on the expectation of the corpus matrix. ...
With the rapid development of Internet, the amount of information on the Web grows explosively, peop...
Text mining has a wide range of applications in education. In this paper, we review Latent Dirichlet...
Text mining has a wide range of applications in education. In this paper, we review Latent Dirichlet...
Most of the existing recommender systems are based only on the rating data, and they ignore other so...
Abstract-Text categorization is the task of automatically assigning unlabeled text documents to some...
Presentation at the 2018 Meeting of the Academy of Human Resource Development. The aim of this prese...
© Springer International Publishing Switzerland 2015. In recommender systems, matrix decompositions,...
© Springer International Publishing Switzerland 2015. In recommender systems, matrix decompositions,...
© Springer International Publishing Switzerland 2015. In recommender systems, matrix decompositions,...
In this work, we compare two extensions of two different topic models for the same problem of recomm...
In this work, we compare two extensions of two different topic models for the same problem of recomm...
We propose fLDA, a novel matrix factorization method to predict ratings in recommender system applic...
Automatic text categorization is one of the key techniques in information retrieval and the data min...
In this work, we compare two extensions of two different topic models for the same problem of recomm...
The probabilistic topic model imposes a low-rank structure on the expectation of the corpus matrix. ...
With the rapid development of Internet, the amount of information on the Web grows explosively, peop...
Text mining has a wide range of applications in education. In this paper, we review Latent Dirichlet...
Text mining has a wide range of applications in education. In this paper, we review Latent Dirichlet...
Most of the existing recommender systems are based only on the rating data, and they ignore other so...
Abstract-Text categorization is the task of automatically assigning unlabeled text documents to some...
Presentation at the 2018 Meeting of the Academy of Human Resource Development. The aim of this prese...