We study the performance of two representations of word meaning in learning noun-modifier semantic relations. One representation is based on lexical resources, in particular WordNet, the other – on a corpus. We experimented with decision trees, instance-based learning and Support Vector Machines. All these methods work well in this learning task. We report high precision, recall and F-score, and small variation in performance across several 10-fold cross-validation runs. The corpus-based method has the advantage of working with data without word-sense annotations and performs well over the baseline. The WordNet-based method, requiring wordsense annotated data, has higher precision
Text and Knowledge Bases are complementary sources of information. Given the success of distributed ...
This thesis describes an approach to handle word sense in natural language processing. If we want la...
In this paper, we empirically evaluate the utility of transfer and multi-task learning on a challeng...
This paper investigates the use of machine learning algorithms to label modifier-noun compounds with...
Methods for learning word representations using large text corpora have received much attention late...
We describe a WordNet-based system for the extraction of semantic relations between pairs of nominal...
A long time passed from the first word said by Homo sapiens to the first word said by a machine. The...
Incorporating semantic features from the WordNet lexical database is among one of the many approache...
For our system we use the SMO implementation of a support vector machine provided with the WEKA mac...
Incorporating semantic features from the WordNet lexical database is among one of the many approache...
WordNet is a lexical database describing English words and their senses. We propose a method for aut...
This paper focuses on a system, Wolfie (WOrd Learning From Interpreted Examples), that acquires a se...
Abstract. The paper introduces a method for interpreting novel noun compounds with semantic relation...
Lexical databases following the wordnet paradigm capture information about words, word senses, and t...
This paper describes a semi-automatic method of inducing underspecified semantic classes from WordNe...
Text and Knowledge Bases are complementary sources of information. Given the success of distributed ...
This thesis describes an approach to handle word sense in natural language processing. If we want la...
In this paper, we empirically evaluate the utility of transfer and multi-task learning on a challeng...
This paper investigates the use of machine learning algorithms to label modifier-noun compounds with...
Methods for learning word representations using large text corpora have received much attention late...
We describe a WordNet-based system for the extraction of semantic relations between pairs of nominal...
A long time passed from the first word said by Homo sapiens to the first word said by a machine. The...
Incorporating semantic features from the WordNet lexical database is among one of the many approache...
For our system we use the SMO implementation of a support vector machine provided with the WEKA mac...
Incorporating semantic features from the WordNet lexical database is among one of the many approache...
WordNet is a lexical database describing English words and their senses. We propose a method for aut...
This paper focuses on a system, Wolfie (WOrd Learning From Interpreted Examples), that acquires a se...
Abstract. The paper introduces a method for interpreting novel noun compounds with semantic relation...
Lexical databases following the wordnet paradigm capture information about words, word senses, and t...
This paper describes a semi-automatic method of inducing underspecified semantic classes from WordNe...
Text and Knowledge Bases are complementary sources of information. Given the success of distributed ...
This thesis describes an approach to handle word sense in natural language processing. If we want la...
In this paper, we empirically evaluate the utility of transfer and multi-task learning on a challeng...