Extracting structured information from text plays a crucial role in automatic knowledge acquisition and is at the core of any knowledge representation and reasoning system. Traditional methods rely on hand-crafted rules and are restricted by the performance of various linguistic pre-processing tools. More recent approaches rely on supervised learning of relations trained on labelled examples, which can be manually created or sometimes automatically generated (referred as distant supervision). We propose a supervised method for entity typing and alignment. We argue that a rich feature space can improve extraction accuracy and we propose to exploit Linked Open Data (LOD) for feature enrichment. Our approach is tested on task-2 of the Open Kno...
In this chapter we present the analysis of the Wikipedia collection by means of the ELiDa framework ...
In today's computerized and information-based society, text data is rich but often also "messy". We ...
In this work, we focus on the task of open-type relation argument extraction (ORAE): given a corpus,...
Extracting structured information from text plays a crucial role in automatic knowledge acquisition ...
Open domain information extraction (OIE) projects like Nell or ReVerb are often impaired by a schem...
Knowledge-rich Information Extraction (IE) methods aspire towards combining classical IE with backgr...
The Open Knowledge Extraction (OKE) challenge is aimed at promoting research in the automatic extrac...
We propose an approach for semantifying web extracted facts. In particular, we map subject and objec...
Thesis (Ph.D.)--University of Washington, 2015-12With the advent of the Web, textual information has...
In this paper we present a system for the 2016 edition of the Open Knowledge Extraction (OKE) Challe...
The Open Knowledge Extraction (OKE) challenge, at its second edition, has the ambition to provide a ...
International audienceThe extraction and the disambiguation of knowledge guided by textual resources...
The Web and its Semantic extension (i.e. Linked Open Data) contain open global-scale knowledge and m...
The two key aspects of natural language processing (NLP) applications based on machine learning tec...
We propose an approach for semantifying web extracted facts. In particular, we map subject and objec...
In this chapter we present the analysis of the Wikipedia collection by means of the ELiDa framework ...
In today's computerized and information-based society, text data is rich but often also "messy". We ...
In this work, we focus on the task of open-type relation argument extraction (ORAE): given a corpus,...
Extracting structured information from text plays a crucial role in automatic knowledge acquisition ...
Open domain information extraction (OIE) projects like Nell or ReVerb are often impaired by a schem...
Knowledge-rich Information Extraction (IE) methods aspire towards combining classical IE with backgr...
The Open Knowledge Extraction (OKE) challenge is aimed at promoting research in the automatic extrac...
We propose an approach for semantifying web extracted facts. In particular, we map subject and objec...
Thesis (Ph.D.)--University of Washington, 2015-12With the advent of the Web, textual information has...
In this paper we present a system for the 2016 edition of the Open Knowledge Extraction (OKE) Challe...
The Open Knowledge Extraction (OKE) challenge, at its second edition, has the ambition to provide a ...
International audienceThe extraction and the disambiguation of knowledge guided by textual resources...
The Web and its Semantic extension (i.e. Linked Open Data) contain open global-scale knowledge and m...
The two key aspects of natural language processing (NLP) applications based on machine learning tec...
We propose an approach for semantifying web extracted facts. In particular, we map subject and objec...
In this chapter we present the analysis of the Wikipedia collection by means of the ELiDa framework ...
In today's computerized and information-based society, text data is rich but often also "messy". We ...
In this work, we focus on the task of open-type relation argument extraction (ORAE): given a corpus,...