Scientific information extraction is a crucial step for understanding scientific publications. In this paper, we focus on scientific keyphrase extraction, which aims to identify keyphrases from scientific articles and classify them into predefined categories. We present a neural network based approach for this task, which employs the bidirectional long short-memory (LSTM) to represent the sentences in the article. On top of the bidirectional LSTM layer in our neural model, conditional random field (CRF) is used to predict the label sequence for the whole sentence. Considering the expensive annotated data for supervised learning methods, we introduce self-training method into our neural model to leverage the unlabeled articles. Experimental ...
Abstract—The paper presents three machine learning based keyphrase extraction methods that respectiv...
Given the large amounts of online textual documents available these days, e.g., news articles, weblo...
We present NTNU’s systems for Task A (prediction of keyphrases) and Task B (labelling as Material, P...
To achieve state-of-the-art performance, keyphrase extraction systems rely on domain-specific knowle...
Abstract. Many academic journals and conferences require that each article will in-clude a list of k...
Keyphrase extraction is one of the most complex research fields of Natural Language Processing. This...
Keyphrases that efficiently summarize a document’s content are used in various document processing a...
This paper describes our approach to the SemEval 2017 Task 10: “Extracting Keyphrases and Rela...
Automatic keyphrases extraction (AKE) is a principal task in natural language processing (NLP). Seve...
With the currently growing interest in the Semantic Web, keywords/metadata extraction is coming to p...
International audienceState of the art of deep learning methods for automatic keyphrase extraction T...
Keyword extraction is vital for Knowledge Management System, Information Retrieval System, and Digit...
Keyphrases play a key role in text indexing, summariza-tion and categorization. However, most of the...
Keywords have become integral to many Knowledge Management Systems, Information Retrieval Systems, a...
Keyphrase generation aims to summarize long documents with a collection of salient phrases. Deep neu...
Abstract—The paper presents three machine learning based keyphrase extraction methods that respectiv...
Given the large amounts of online textual documents available these days, e.g., news articles, weblo...
We present NTNU’s systems for Task A (prediction of keyphrases) and Task B (labelling as Material, P...
To achieve state-of-the-art performance, keyphrase extraction systems rely on domain-specific knowle...
Abstract. Many academic journals and conferences require that each article will in-clude a list of k...
Keyphrase extraction is one of the most complex research fields of Natural Language Processing. This...
Keyphrases that efficiently summarize a document’s content are used in various document processing a...
This paper describes our approach to the SemEval 2017 Task 10: “Extracting Keyphrases and Rela...
Automatic keyphrases extraction (AKE) is a principal task in natural language processing (NLP). Seve...
With the currently growing interest in the Semantic Web, keywords/metadata extraction is coming to p...
International audienceState of the art of deep learning methods for automatic keyphrase extraction T...
Keyword extraction is vital for Knowledge Management System, Information Retrieval System, and Digit...
Keyphrases play a key role in text indexing, summariza-tion and categorization. However, most of the...
Keywords have become integral to many Knowledge Management Systems, Information Retrieval Systems, a...
Keyphrase generation aims to summarize long documents with a collection of salient phrases. Deep neu...
Abstract—The paper presents three machine learning based keyphrase extraction methods that respectiv...
Given the large amounts of online textual documents available these days, e.g., news articles, weblo...
We present NTNU’s systems for Task A (prediction of keyphrases) and Task B (labelling as Material, P...