Identifying semantic relations in natural language text is an important component of many knowledge extraction systems. This thesis studies the task of hypernym discovery, i.e discovering terms that are related by the hypernymy (is-a) relation. Specifically, this thesis explores how state-of-the-art methods for hypernym discovery perform when applied in specific language domains. In recent times, state-of-the-art methods for hypernym discovery are mostly made up by supervised machine learning models that leverage distributional word representations such as word embeddings. These models require labeled training data in the form of term pairs that are known to be related by hypernymy. Such labeled training data is often not available when worki...
HypoTerm is a data-driven semantic relation finder that starts from a list of automatically extracte...
One key property of word embeddings currently under study is their capacity to encode hypernymy. Pre...
The task of finding hypernyms from large text corpora is a fundamental problem in NLP. It provides a...
Identifying semantic relations in natural language text is an important component of many knowledge ...
Abstract Hypernym discovery is challenging because it aims to find suitable instances for a given hy...
University of Minnesota M.S. thesis.July 2018. Major: Computer Science. Advisor: Ted Pedersen. 1 com...
The automatic detection of hypernymy relationships represents a challenging problem in NLP. The succ...
Comunicació presentada a la 16th International Conference, (CICLing) celebrada del 14 al 20 d'abril...
Comunicació presentada a la 16th International Conference, (CICLing) celebrada del 14 al 20 d'abril...
International audienceExtracting hypernym relations from text is one of the key steps in the automat...
In this research, we evaluate different approaches for the automatic extraction of hypernym relation...
In this research, we evaluate different approaches for the automatic extraction of hypernym relation...
Comunicació presentada a la Conference on Empirical Methods in Natural Language Processing celebrada...
Hypernymy is a basic semantic relation in computational linguistics that expresses the “is-a” relati...
HypoTerm is a data-driven semantic relation finder that starts from a list of automatically extracte...
HypoTerm is a data-driven semantic relation finder that starts from a list of automatically extracte...
One key property of word embeddings currently under study is their capacity to encode hypernymy. Pre...
The task of finding hypernyms from large text corpora is a fundamental problem in NLP. It provides a...
Identifying semantic relations in natural language text is an important component of many knowledge ...
Abstract Hypernym discovery is challenging because it aims to find suitable instances for a given hy...
University of Minnesota M.S. thesis.July 2018. Major: Computer Science. Advisor: Ted Pedersen. 1 com...
The automatic detection of hypernymy relationships represents a challenging problem in NLP. The succ...
Comunicació presentada a la 16th International Conference, (CICLing) celebrada del 14 al 20 d'abril...
Comunicació presentada a la 16th International Conference, (CICLing) celebrada del 14 al 20 d'abril...
International audienceExtracting hypernym relations from text is one of the key steps in the automat...
In this research, we evaluate different approaches for the automatic extraction of hypernym relation...
In this research, we evaluate different approaches for the automatic extraction of hypernym relation...
Comunicació presentada a la Conference on Empirical Methods in Natural Language Processing celebrada...
Hypernymy is a basic semantic relation in computational linguistics that expresses the “is-a” relati...
HypoTerm is a data-driven semantic relation finder that starts from a list of automatically extracte...
HypoTerm is a data-driven semantic relation finder that starts from a list of automatically extracte...
One key property of word embeddings currently under study is their capacity to encode hypernymy. Pre...
The task of finding hypernyms from large text corpora is a fundamental problem in NLP. It provides a...