Automated social text annotation is the task of suggesting a set of tags for shared documents on social media platforms. The automated annotation process can reduce users' cognitive overhead in tagging and improve tag management for better search, browsing, and recommendation of documents. It can be formulated as a multilabel classification problem. We propose a novel deep learning-based method for this problem and design an attention-based neural network with semantic-based regularization, which can mimic users' reading and annotation behavior to formulate better document representation, leveraging the semantic relations among labels. The network separately models the title and the content of each document and injects an explicit, title-gu...
As the web evolves even faster than expected, the exponential growth of data becomes overwhelming. T...
Credit attribution is the task of associating individual parts in a document with their most appropr...
The multi-label text categorization is supervised learning, where a document is associated with mult...
We propose a novel attention network for document annotation with user-generated tags. The network i...
In this paper, we focus on the popularity prediction for marketer-generated content (MGC), which has...
Social networks have become a popular medium for people to communicate and distribute ideas, content...
This dissertation is focused on the task of multi-label visual recognition, a fundamental task of co...
The emergence of Web 2.0 and the consequent success of social network websites such as del.icio.us a...
International audienceWe consider the problem of learning to annotate documents with concepts or key...
Social Networks has become one of the most popular platforms to allow users to communicate, and shar...
[[abstract]]Social tags are annotations for Web pages collaboratively added by users. It will be muc...
Document classification has a broad application in the field of sentiment classification, document r...
Topic modeling based on latent Dirichlet allocation (LDA) has been a framework of choice to deal wit...
We introduce in this paper a new approach to improve deep learningbased architectures for multi-labe...
Social media has become an integral part of numerous individuals as well as organizations, with many...
As the web evolves even faster than expected, the exponential growth of data becomes overwhelming. T...
Credit attribution is the task of associating individual parts in a document with their most appropr...
The multi-label text categorization is supervised learning, where a document is associated with mult...
We propose a novel attention network for document annotation with user-generated tags. The network i...
In this paper, we focus on the popularity prediction for marketer-generated content (MGC), which has...
Social networks have become a popular medium for people to communicate and distribute ideas, content...
This dissertation is focused on the task of multi-label visual recognition, a fundamental task of co...
The emergence of Web 2.0 and the consequent success of social network websites such as del.icio.us a...
International audienceWe consider the problem of learning to annotate documents with concepts or key...
Social Networks has become one of the most popular platforms to allow users to communicate, and shar...
[[abstract]]Social tags are annotations for Web pages collaboratively added by users. It will be muc...
Document classification has a broad application in the field of sentiment classification, document r...
Topic modeling based on latent Dirichlet allocation (LDA) has been a framework of choice to deal wit...
We introduce in this paper a new approach to improve deep learningbased architectures for multi-labe...
Social media has become an integral part of numerous individuals as well as organizations, with many...
As the web evolves even faster than expected, the exponential growth of data becomes overwhelming. T...
Credit attribution is the task of associating individual parts in a document with their most appropr...
The multi-label text categorization is supervised learning, where a document is associated with mult...