Automatic headline generation is a sub-task of document summarization with many reported applications. In this study we present a sequence-prediction technique for learning how editors title their news stories. The introduced technique models the problem as a discrete optimization task in a feature-rich space. In this space the global optimum can be found in polynomial time by means of dynamic programming. We train and test our model on an extensive corpus of financial news, and compare it against a number of baselines by using standard metrics from the document summarization domain, as well as some new ones proposed in this work. We also assess the readability and informativeness of the generated titles through human evaluation. Th...
We automatically generate headlines that are expected to comply with the specific styles of two diff...
In the current era, the amount of information from the Internet in general and the electronic press ...
In this paper, we implemented a set of title generation methods using training set of 21190 news sto...
Headline or short summary generation is an important problem in Text Summarization and has several p...
Abstract. This paper discusses fundamental issues involved in word selection for title generation. W...
With the rapid proliferation of online media sources and published news, headlines have become incre...
Natural Language Processing meets Journalism IJCAI-16 Workshop, New York, United States of America, ...
Neural headline generation models have recently shown great results since neural network methods hav...
International audienceFeature Maximization is a feature selection method that deals efficiently with...
This report describes the implementation and evaluation of two natural language models using the mac...
In this paper we present a creative system for producing news headlines based on well-known expressi...
We implemented several statistical title generation methods using a training set of 21190 news stori...
Headline generation is a task of generating an appropriate headline for a given article, which can b...
Automatic titling of text documents is an essential task for several applications (automatic heading...
This work proposes an approach to address automatic text summarization. This approach is a trainable...
We automatically generate headlines that are expected to comply with the specific styles of two diff...
In the current era, the amount of information from the Internet in general and the electronic press ...
In this paper, we implemented a set of title generation methods using training set of 21190 news sto...
Headline or short summary generation is an important problem in Text Summarization and has several p...
Abstract. This paper discusses fundamental issues involved in word selection for title generation. W...
With the rapid proliferation of online media sources and published news, headlines have become incre...
Natural Language Processing meets Journalism IJCAI-16 Workshop, New York, United States of America, ...
Neural headline generation models have recently shown great results since neural network methods hav...
International audienceFeature Maximization is a feature selection method that deals efficiently with...
This report describes the implementation and evaluation of two natural language models using the mac...
In this paper we present a creative system for producing news headlines based on well-known expressi...
We implemented several statistical title generation methods using a training set of 21190 news stori...
Headline generation is a task of generating an appropriate headline for a given article, which can b...
Automatic titling of text documents is an essential task for several applications (automatic heading...
This work proposes an approach to address automatic text summarization. This approach is a trainable...
We automatically generate headlines that are expected to comply with the specific styles of two diff...
In the current era, the amount of information from the Internet in general and the electronic press ...
In this paper, we implemented a set of title generation methods using training set of 21190 news sto...