Modeling the structure of coherent texts is a key NLP problem. The task of coherently organizing a given set of sentences has been commonly used to build and evaluate models that understand such structure. We propose an end-to-end unsupervised deep learning approach based on the set-to-sequence framework to address this problem. Our model strongly outperforms prior methods in the order discrimination task and a novel task of ordering abstracts from scientific articles. Furthermore, our work shows that useful text representations can be obtained by learning to order sentences. Visualizing the learned sentence representations shows that the model captures high-level logical structure in paragraphs. Our representations perform comparably to st...
Recent work on word ordering has argued that syntactic structure is important, or even required, for...
In Natural Language Processing (NLP), it is important to detect the relationship between two sequenc...
Dominant sentence ordering models use a pointer network decoder to generate ordering sequences in a ...
Ordering texts is an important task for many NLP applications. Most previous works on summary senten...
As the novel web social media emerges on the web, large scale unordered sentences are springing up i...
Modeling discourse coherence is an important problem in natural language generation and understandin...
We present an attention-based ranking framework for learning to order sentences given a paragraph. O...
Sentence ordering aims at arranging a list of sentences in the correct order. Based on the observati...
Over the past decade, there have been promising developments in Natural Language Processing (NLP) wi...
We compare several language models for the word-ordering task and propose a new bag- to-sequence neu...
Models of text structure are necessary for applications that generate text. These models provide inf...
Headline generation is an important problem in natural language processing, which aims to describe a...
Generating texts from structured data (e.g., a table) is important for various natural language proc...
Coherence is what makes a multi-sentence text meaningful, both logically and syn-tactically. To solv...
In Natural Language Processing (NLP), it is important to detect the relationship between two sequenc...
Recent work on word ordering has argued that syntactic structure is important, or even required, for...
In Natural Language Processing (NLP), it is important to detect the relationship between two sequenc...
Dominant sentence ordering models use a pointer network decoder to generate ordering sequences in a ...
Ordering texts is an important task for many NLP applications. Most previous works on summary senten...
As the novel web social media emerges on the web, large scale unordered sentences are springing up i...
Modeling discourse coherence is an important problem in natural language generation and understandin...
We present an attention-based ranking framework for learning to order sentences given a paragraph. O...
Sentence ordering aims at arranging a list of sentences in the correct order. Based on the observati...
Over the past decade, there have been promising developments in Natural Language Processing (NLP) wi...
We compare several language models for the word-ordering task and propose a new bag- to-sequence neu...
Models of text structure are necessary for applications that generate text. These models provide inf...
Headline generation is an important problem in natural language processing, which aims to describe a...
Generating texts from structured data (e.g., a table) is important for various natural language proc...
Coherence is what makes a multi-sentence text meaningful, both logically and syn-tactically. To solv...
In Natural Language Processing (NLP), it is important to detect the relationship between two sequenc...
Recent work on word ordering has argued that syntactic structure is important, or even required, for...
In Natural Language Processing (NLP), it is important to detect the relationship between two sequenc...
Dominant sentence ordering models use a pointer network decoder to generate ordering sequences in a ...