Information extraction from legal documents is an important and open problem. A mixed approach, using linguistic information and machine learning techniques, is described in this paper. In this approach, top-level legal concepts are identified and used for document classifica- tion using Support Vector Machines. Named entities, such as, locations, organizations, dates, and document references, are identified using se- mantic information from the output of a natural language parser. This information, legal concepts and named entities, may be used to popu- late a simple ontology, allowing the enrichment of documents and the creation of high-level legal information retrieval systems. The proposed methodology was applied to a corpus of legal do...
This thesis seeks to address the problem of the 'resource consumption bottleneck' of creating (legal...
The goal of this thesis is to present a multifaceted way of inducing semantic representation from le...
A proposal for legal information extraction is described, aiming to auto- matically populate an onto...
This paper deals with accuracy and performance of var- ious machine learning algorithms in the recog...
In order to automatically extract information from legal texts we propose the use of a mixed approac...
Text classification is an important task in the legal domain. In fact, most of the legal information...
Abstract. Legal text retrieval traditionally relies upon external knowledge sources such as thesauri...
The bureaucratic domain and the legal one, in particular, are characterized by a huge amount of info...
The paper reports on methodology and preliminary results of a case study in automatically extracting...
International audienceIn this paper, we try to improve Information Extraction in legal texts by crea...
Portuguese juridical documents from Supreme Courts and the Attorney General’s Office are manually cl...
The paper reports on the methodology and preliminary results of a case study in automatically extrac...
Named Entity Recognition over texts belonging to the legal domain focuses on cat- egories (legal en...
Exploring legal documents such as laws, judgments, and contracts is known to be a time-consuming tas...
This paper examines impressive new applications of legal text analytics in automated contract review...
This thesis seeks to address the problem of the 'resource consumption bottleneck' of creating (legal...
The goal of this thesis is to present a multifaceted way of inducing semantic representation from le...
A proposal for legal information extraction is described, aiming to auto- matically populate an onto...
This paper deals with accuracy and performance of var- ious machine learning algorithms in the recog...
In order to automatically extract information from legal texts we propose the use of a mixed approac...
Text classification is an important task in the legal domain. In fact, most of the legal information...
Abstract. Legal text retrieval traditionally relies upon external knowledge sources such as thesauri...
The bureaucratic domain and the legal one, in particular, are characterized by a huge amount of info...
The paper reports on methodology and preliminary results of a case study in automatically extracting...
International audienceIn this paper, we try to improve Information Extraction in legal texts by crea...
Portuguese juridical documents from Supreme Courts and the Attorney General’s Office are manually cl...
The paper reports on the methodology and preliminary results of a case study in automatically extrac...
Named Entity Recognition over texts belonging to the legal domain focuses on cat- egories (legal en...
Exploring legal documents such as laws, judgments, and contracts is known to be a time-consuming tas...
This paper examines impressive new applications of legal text analytics in automated contract review...
This thesis seeks to address the problem of the 'resource consumption bottleneck' of creating (legal...
The goal of this thesis is to present a multifaceted way of inducing semantic representation from le...
A proposal for legal information extraction is described, aiming to auto- matically populate an onto...