Text summarization has gained a considerable amount of research interest due to deep learning based techniques. We lever- age recent results in transfer learning for Natural Language Processing (NLP) using pre-trained deep contextualized word embeddings in a sequence-to-sequence architecture based on pointer-generator networks. We evaluate our approach on the two largest summarization datasets: CNN/Daily Mail and the recent Newsroom dataset. We show how using pre-trained contextualized embeddings on Newsroom improves significantly the state-of-the-art ROUGE-1 measure and obtains comparable scores on the other ROUGE values
Automatic text summarization is a process of extracting important information from texts and present...
Summarization is the notion of abstracting key content from information sources. The task of summari...
This project explores extractive text summarization using the capabilities of Deep Learning. The goa...
Text summarization has gained a considerable amount of research interest due to deep learning based ...
This project aims at applying neural network-based deep learning to the problem of extractive text s...
International audienceExtractive summarization consists of generating a summary by ranking sentences...
As the growth of online data continues, automatic summarization is integral in generating a condens...
Automatic text summarization extracts important information from texts and presents the information ...
Automatic text summarization is a mechanism for converting longer text into smaller text while retai...
With the Internet becoming widespread, countless articles and multimedia content have been filled in...
Recent results show that deep neural networks using contextual embeddings significantly outperform n...
A class of neural networks known as Recurrent Neural Networks (RNNs) are capable of processing seque...
In questa tesi saranno usate tecniche di deep learning per affrontare unodei problemi più difficili ...
Recent deep learning and sequence-to-sequence learning technology have produced impressive results o...
Summarization is a complex task whose goal is to generate a concise version of a text without necess...
Automatic text summarization is a process of extracting important information from texts and present...
Summarization is the notion of abstracting key content from information sources. The task of summari...
This project explores extractive text summarization using the capabilities of Deep Learning. The goa...
Text summarization has gained a considerable amount of research interest due to deep learning based ...
This project aims at applying neural network-based deep learning to the problem of extractive text s...
International audienceExtractive summarization consists of generating a summary by ranking sentences...
As the growth of online data continues, automatic summarization is integral in generating a condens...
Automatic text summarization extracts important information from texts and presents the information ...
Automatic text summarization is a mechanism for converting longer text into smaller text while retai...
With the Internet becoming widespread, countless articles and multimedia content have been filled in...
Recent results show that deep neural networks using contextual embeddings significantly outperform n...
A class of neural networks known as Recurrent Neural Networks (RNNs) are capable of processing seque...
In questa tesi saranno usate tecniche di deep learning per affrontare unodei problemi più difficili ...
Recent deep learning and sequence-to-sequence learning technology have produced impressive results o...
Summarization is a complex task whose goal is to generate a concise version of a text without necess...
Automatic text summarization is a process of extracting important information from texts and present...
Summarization is the notion of abstracting key content from information sources. The task of summari...
This project explores extractive text summarization using the capabilities of Deep Learning. The goa...