Document classification has a broad application in the field of sentiment classification, document ranking and topic labeling, etc. Previous neural network-based work has mainly focused on investigating a so-called forward implication, i.e., the preceding text segments are taken as the context of the following text segments when generating the text representation. Such a scenario typically ignores the fact that the semantics of a document are a product of the mutual implication of all text segments in a document. Thus, in this paper, we introduce a concept of interaction and propose a text representation model with Self-interaction Attention Mechanism (TextSAM) for document classification. In particular, we design three aggregated strategie...
Neural attention mechanism has achieved many successes in various tasks in natural language processi...
Neural network models with attention mechanism have shown their efficiencies on various tasks. Howev...
A wide variety of text analysis applications are based on statistical machine learning techniques. T...
Document classification has a broad application in the field of sentiment classification, document r...
University of Technology Sydney. Faculty of Engineering and Information Technology.This research stu...
Self-attention mechanisms have recently caused many concerns on Natural Language Processing (NLP) ta...
Text classification is one of the fundamental tasks in natural language processing. Recently, deep n...
In this paper we describe a new on-line document categorization strategy that can be integrated with...
Automatic document classification is of paramount importance to knowledge management in the informat...
This paper proposes a bi-level attention neural network model (TBAM) that incorporates topic informa...
Text classification is one of the most widely-used and important NLP (Natural Language Processing) t...
Text archives may be regarded as an almost optimal application arena for unsupervised neural network...
Document classification is a basic problem in the field of natural language processing (NLP). In rec...
Attention is an increasingly popular mechanism used in a wide range of neural architectures. The mec...
Text classification is a fundamental language task in Natural Language Processing. A variety of sequ...
Neural attention mechanism has achieved many successes in various tasks in natural language processi...
Neural network models with attention mechanism have shown their efficiencies on various tasks. Howev...
A wide variety of text analysis applications are based on statistical machine learning techniques. T...
Document classification has a broad application in the field of sentiment classification, document r...
University of Technology Sydney. Faculty of Engineering and Information Technology.This research stu...
Self-attention mechanisms have recently caused many concerns on Natural Language Processing (NLP) ta...
Text classification is one of the fundamental tasks in natural language processing. Recently, deep n...
In this paper we describe a new on-line document categorization strategy that can be integrated with...
Automatic document classification is of paramount importance to knowledge management in the informat...
This paper proposes a bi-level attention neural network model (TBAM) that incorporates topic informa...
Text classification is one of the most widely-used and important NLP (Natural Language Processing) t...
Text archives may be regarded as an almost optimal application arena for unsupervised neural network...
Document classification is a basic problem in the field of natural language processing (NLP). In rec...
Attention is an increasingly popular mechanism used in a wide range of neural architectures. The mec...
Text classification is a fundamental language task in Natural Language Processing. A variety of sequ...
Neural attention mechanism has achieved many successes in various tasks in natural language processi...
Neural network models with attention mechanism have shown their efficiencies on various tasks. Howev...
A wide variety of text analysis applications are based on statistical machine learning techniques. T...