Nonnegative matrix factorization based methods provide one of the simplest and most effective approaches to text mining. However, their applicability is mainly limited to analyzing a single data source. In this chapter, we propose a novel joint matrix factorization framework which can jointly analyze multiple data sources by exploiting their shared and individual structures. The proposed framework is flexible to handle any arbitrary sharing configurations encountered in real world data. We derive an efficient algorithm for learning the factorization and show that its convergence is theoretically guaranteed. We demonstrate the utility and effectiveness of the proposed framework in two real-world applications—improving social media retrieval ...
The Web abounds with dyadic data that keeps increasing by every single second. Previous work has rep...
This study presents a methodology for automatically identifying and clustering semantic features or ...
Abstract Nonnegative Matrix Factorization (NMF) has been proved to be valuable in many ap-plications...
Nonnegative matrix factorization based methods provide one of the simplest and most effective approa...
Nonnegative matrix factorization based methods provide one of the simplest and most effective approa...
The growing number of information sources has given rise to joint analysis. While the research commu...
This paper presents a novel Bayesian formulation to exploit shared structures across multiple data s...
This paper presents a novel Bayesian formulation to exploit shared structures across multiple data s...
In this paper we face the problem of intelligently analyze Twitter data. We propose a novel workflow ...
Nonnegative matrix factorization (NMF) is a popular approach to model data, however, most models are...
Amongst all the social media platforms available, Twitter is rapidly becoming the main one used for ...
Although tagging has become increasingly popular in online image and video sharing systems, tags are...
Although tagging has become increasingly popular in online image and video sharing systems, tags are...
In this paper we discuss the development and use of low-rank approximate nonnega-tive matrix factori...
Joint modeling of related data sources has the potential to improve various data mining tasks such a...
The Web abounds with dyadic data that keeps increasing by every single second. Previous work has rep...
This study presents a methodology for automatically identifying and clustering semantic features or ...
Abstract Nonnegative Matrix Factorization (NMF) has been proved to be valuable in many ap-plications...
Nonnegative matrix factorization based methods provide one of the simplest and most effective approa...
Nonnegative matrix factorization based methods provide one of the simplest and most effective approa...
The growing number of information sources has given rise to joint analysis. While the research commu...
This paper presents a novel Bayesian formulation to exploit shared structures across multiple data s...
This paper presents a novel Bayesian formulation to exploit shared structures across multiple data s...
In this paper we face the problem of intelligently analyze Twitter data. We propose a novel workflow ...
Nonnegative matrix factorization (NMF) is a popular approach to model data, however, most models are...
Amongst all the social media platforms available, Twitter is rapidly becoming the main one used for ...
Although tagging has become increasingly popular in online image and video sharing systems, tags are...
Although tagging has become increasingly popular in online image and video sharing systems, tags are...
In this paper we discuss the development and use of low-rank approximate nonnega-tive matrix factori...
Joint modeling of related data sources has the potential to improve various data mining tasks such a...
The Web abounds with dyadic data that keeps increasing by every single second. Previous work has rep...
This study presents a methodology for automatically identifying and clustering semantic features or ...
Abstract Nonnegative Matrix Factorization (NMF) has been proved to be valuable in many ap-plications...