In this paper, we present ContrastMedium, an algorithm that transforms noisy semantic networks into full-fledged, clean taxonomies. ContrastMedium is able to identify the embedded taxonomy structure from a noisy knowledge graph without explicit human supervision such as, for instance, a set of manually selected input root and leaf concepts. This is achieved by leveraging structural information from a companion reference taxonomy, to which the input knowledge graph is linked (either automatically or manually). When used in conjunction with methods for hypernym acquisition and knowledge base linking, our methodology provides a complete solution for end-to-end taxonomy induction. We conduct experiments using automatically acquired knowledge gr...
Extracting lexico-semantic relations as graph-structured taxonomies, also known as taxonomy construc...
We introduce ExTaSem!, a novel approach for the automatic learning of lexical taxonomies from domain...
We introduce EXTASEM!, a novel approach for the automatic learning of lexical taxonomies from domain...
In this paper we present a graph-based approach aimed at learning a lexical taxonomy automatically s...
In 2004 we published in this journal an article describing OntoLearn, one of the first systems to au...
In 2004 we published in this journal an article describing OntoLearn, one of the first systems to au...
Abstract. The spread and abundance of electronic documents requires automatic techniques for extract...
We propose a novel, semi-supervised approach towards domain taxonomy induction from an input vocabul...
We propose a novel algorithm for inducing semantic taxonomies. Previous algorithms for taxonomy indu...
The spread and abundance of electronic documents requires automatic techniques for extracting useful...
We propose a novel, semi-supervised approach towards domain taxonomy induction from an input vocabul...
In this paper we present CrumbTrail, an algorithm to clean large and dense knowledge graphs. CrumbTr...
This paper describes the system submitted by the TALN-UPF team to SEMEVAL Task 17 (Taxonomy Extracti...
Semantic taxonomies are powerful tools that provide structured knowledge to Natural Language Process...
Supplementary Material can be found on http:// ssm-vm011.mit.edu/henschel/IIT09/.We compare a famil...
Extracting lexico-semantic relations as graph-structured taxonomies, also known as taxonomy construc...
We introduce ExTaSem!, a novel approach for the automatic learning of lexical taxonomies from domain...
We introduce EXTASEM!, a novel approach for the automatic learning of lexical taxonomies from domain...
In this paper we present a graph-based approach aimed at learning a lexical taxonomy automatically s...
In 2004 we published in this journal an article describing OntoLearn, one of the first systems to au...
In 2004 we published in this journal an article describing OntoLearn, one of the first systems to au...
Abstract. The spread and abundance of electronic documents requires automatic techniques for extract...
We propose a novel, semi-supervised approach towards domain taxonomy induction from an input vocabul...
We propose a novel algorithm for inducing semantic taxonomies. Previous algorithms for taxonomy indu...
The spread and abundance of electronic documents requires automatic techniques for extracting useful...
We propose a novel, semi-supervised approach towards domain taxonomy induction from an input vocabul...
In this paper we present CrumbTrail, an algorithm to clean large and dense knowledge graphs. CrumbTr...
This paper describes the system submitted by the TALN-UPF team to SEMEVAL Task 17 (Taxonomy Extracti...
Semantic taxonomies are powerful tools that provide structured knowledge to Natural Language Process...
Supplementary Material can be found on http:// ssm-vm011.mit.edu/henschel/IIT09/.We compare a famil...
Extracting lexico-semantic relations as graph-structured taxonomies, also known as taxonomy construc...
We introduce ExTaSem!, a novel approach for the automatic learning of lexical taxonomies from domain...
We introduce EXTASEM!, a novel approach for the automatic learning of lexical taxonomies from domain...