Researchers and scientists increasingly find themselves in the position of having to quickly understand large amounts of technical material. Our goal is to effectively serve this need by using bibliometric text mining and summarization techniques to generate summaries of scientific literature. We show how we can use citations to produce automatically generated, readily consumable, technical extractive summaries. We first propose C-LexRank, a model for summarizing single scientific articles based on citations, which employs community detection and extracts salient information-rich sentences. Next, we further extend our experiments to summarize a set of papers, which cover the same scientific topic. We generate extractive summaries of a set o...
Current approaches to automatic summarization of scientific papers generate informative summaries in...
Comunicació presentada al International Workshop on Semantic, Analytics, Visualization (SAVE-SD 2016...
In this paper we present the first steps toward improving summarization of scientific documents thr...
Comunicació presentada a la NLDB 2016, 21st International Conference on Applications of Natural Lang...
The number of research publications in var-ious disciplines is growing exponentially. Researchers an...
We investigate the task of generating coherent survey articles for scientific topics. We introduce a...
Despite the exponential growth in scientific textual content, research publications are still the pr...
This paper presents an unsupervised extractive approach to summarize scientific long documents based...
In order to cope with the growing number of relevant scientific publications to consider at a given ...
The number of publications is rapidly growing and it is essential to enable fast access and analysis...
Scientific article summarization is challenging: large, annotated corpora are not available, and the...
Despite the exponential growth in scientific textual content, research publications are still the pr...
Previous work for text summarization in scientific domain mainly focused on the content of the input...
In this study, we propose textual summarization for scientific publications and mobile phone usage p...
Recent advances in natural language processing have enabled automation of a wide range of tasks, inc...
Current approaches to automatic summarization of scientific papers generate informative summaries in...
Comunicació presentada al International Workshop on Semantic, Analytics, Visualization (SAVE-SD 2016...
In this paper we present the first steps toward improving summarization of scientific documents thr...
Comunicació presentada a la NLDB 2016, 21st International Conference on Applications of Natural Lang...
The number of research publications in var-ious disciplines is growing exponentially. Researchers an...
We investigate the task of generating coherent survey articles for scientific topics. We introduce a...
Despite the exponential growth in scientific textual content, research publications are still the pr...
This paper presents an unsupervised extractive approach to summarize scientific long documents based...
In order to cope with the growing number of relevant scientific publications to consider at a given ...
The number of publications is rapidly growing and it is essential to enable fast access and analysis...
Scientific article summarization is challenging: large, annotated corpora are not available, and the...
Despite the exponential growth in scientific textual content, research publications are still the pr...
Previous work for text summarization in scientific domain mainly focused on the content of the input...
In this study, we propose textual summarization for scientific publications and mobile phone usage p...
Recent advances in natural language processing have enabled automation of a wide range of tasks, inc...
Current approaches to automatic summarization of scientific papers generate informative summaries in...
Comunicació presentada al International Workshop on Semantic, Analytics, Visualization (SAVE-SD 2016...
In this paper we present the first steps toward improving summarization of scientific documents thr...