In this paper, we present an unsupervised hybrid text-mining approach to automatic acquisition of domain relevant terms and their relations. We deploy the TFIDF-based term classification method to acquire domain relevant single-word terms. Further, we apply two strategies in order to learn lexico-syntatic patterns which indicate paradigmatic and domain relevant syntagmatic relations between the extracted terms. The first one uses an existing ontology as initial knowledge for learning lexico-syntactic patterns, while the second is based on different collocation acquisition methods to deal with the free-word order languages like German. This domain-adaptive method yields good results even when trained on relatively small training corpora. It ...
This paper illustrates how efficient text mining may be achieved by means of syntactic ontology buil...
In this thesis we propose an unsupervised system for semantic relation extraction from texts. The au...
It is very costly to build up lexical resources and domain ontologies. Especially when confronted wi...
We discuss an approach to the automatic expansion of domain-specific lexicons by means of term categ...
Studies on ontologies are receiving a growing attention due to their well-known nature of explicit k...
There is a huge body of domain-specific knowledge embedded in free-text repositories such as enginee...
This paper addresses the problem of categorizing terms or lexical entities into a predefined set of ...
Though the utility of domain Ontologies is now widely acknowledged in the IT (Information Technol...
We discuss work in progress in the semi-automatic generation of \emph{thematic lexicons} by means of...
We present a bootstrapping algorithm to create a semantic lexicon from a list of seed words and a co...
Creating domain ontologies is usually performed by teams of knowledge engineers and domain experts, ...
Ontology term recognition is a key task of ontology-based text mining. Previous approaches of statis...
In this article we present an approach to the automatic discovery of term similarities, which may se...
In this work we present a robust approach for dynami-cally harvesting domain knowledge from open dom...
Some approaches to automatic terminology extraction from corpora imply the use of existing semantic ...
This paper illustrates how efficient text mining may be achieved by means of syntactic ontology buil...
In this thesis we propose an unsupervised system for semantic relation extraction from texts. The au...
It is very costly to build up lexical resources and domain ontologies. Especially when confronted wi...
We discuss an approach to the automatic expansion of domain-specific lexicons by means of term categ...
Studies on ontologies are receiving a growing attention due to their well-known nature of explicit k...
There is a huge body of domain-specific knowledge embedded in free-text repositories such as enginee...
This paper addresses the problem of categorizing terms or lexical entities into a predefined set of ...
Though the utility of domain Ontologies is now widely acknowledged in the IT (Information Technol...
We discuss work in progress in the semi-automatic generation of \emph{thematic lexicons} by means of...
We present a bootstrapping algorithm to create a semantic lexicon from a list of seed words and a co...
Creating domain ontologies is usually performed by teams of knowledge engineers and domain experts, ...
Ontology term recognition is a key task of ontology-based text mining. Previous approaches of statis...
In this article we present an approach to the automatic discovery of term similarities, which may se...
In this work we present a robust approach for dynami-cally harvesting domain knowledge from open dom...
Some approaches to automatic terminology extraction from corpora imply the use of existing semantic ...
This paper illustrates how efficient text mining may be achieved by means of syntactic ontology buil...
In this thesis we propose an unsupervised system for semantic relation extraction from texts. The au...
It is very costly to build up lexical resources and domain ontologies. Especially when confronted wi...