International audienceThis article presents an ontological and terminological resource guided process for targeted extraction of scientific experimental data. Our method relies on the scientific publication representation (SciPuRe) describing the extracted data through ontological, lexical and structural (using segments in the scientific documents) features. Relevance scores based on these features are computed to rank the results and filter out the numerous false positives. Linear and sequential combinations of these scores are presented and evaluated. Experiments were carried out on a corpus of 50 English language scientific papers in the food packaging field. They revealed that article segment are an effective criterion for filtering out...
We describe the SemEval task of extracting keyphrases and relations between them from scientific doc...
International audienceWe propose a hybrid method for the extraction and characterization of citation...
The Semantic Publishing Challenge aims to involve participants in extracting data from heterogeneous...
International audienceThis article presents an ontological and terminological resource guided proces...
International audienceRetrieving entities associated with experimental data in the textual content o...
International audienceA new method to extract knowledge structured as n-Ary relations from scientifi...
Scientific publications are the most important resources available to the research communities. Rese...
A major obstacle for reusing and integrating existing data is finding the data that is most relevant...
The administration of electronic publication in the Information Era congregates old and new problems...
International audienceWe present an Information Retrieval System for scientific publications that pr...
International audienceEach domain and its underlying communities evolve in time and each period is c...
International audienceDuring the last decade, the availability of scientific papers in full text and...
The administration of electronic publication in the Information Era congregates old and new problems...
Despite the popularity of data-driven research in scientific fields, we are intrigued by the combine...
The research described in this paper shows the use of lexical semantic techniques for automated scor...
We describe the SemEval task of extracting keyphrases and relations between them from scientific doc...
International audienceWe propose a hybrid method for the extraction and characterization of citation...
The Semantic Publishing Challenge aims to involve participants in extracting data from heterogeneous...
International audienceThis article presents an ontological and terminological resource guided proces...
International audienceRetrieving entities associated with experimental data in the textual content o...
International audienceA new method to extract knowledge structured as n-Ary relations from scientifi...
Scientific publications are the most important resources available to the research communities. Rese...
A major obstacle for reusing and integrating existing data is finding the data that is most relevant...
The administration of electronic publication in the Information Era congregates old and new problems...
International audienceWe present an Information Retrieval System for scientific publications that pr...
International audienceEach domain and its underlying communities evolve in time and each period is c...
International audienceDuring the last decade, the availability of scientific papers in full text and...
The administration of electronic publication in the Information Era congregates old and new problems...
Despite the popularity of data-driven research in scientific fields, we are intrigued by the combine...
The research described in this paper shows the use of lexical semantic techniques for automated scor...
We describe the SemEval task of extracting keyphrases and relations between them from scientific doc...
International audienceWe propose a hybrid method for the extraction and characterization of citation...
The Semantic Publishing Challenge aims to involve participants in extracting data from heterogeneous...