Modelling taxonomic and thematic relatedness is important for building AI with comprehensive natural language understanding. The goal of this paper is to learn more about how taxonomic information is structurally encoded in embeddings. To do this, we design a new hypernym-hyponym probing task and perform a comparative probing study of taxonomic and thematic SGNS and GloVe embeddings. Our experiments indicate that both types of embeddings encode some taxonomic information, but the amount, as well as the geometric properties of the encodings, are independently related to both the encoder architecture, as well as the embedding training data. Specifically, we find that only taxonomic embeddings carry taxonomic information in their norm, which i...
We introduce HyperLex — a dataset and evaluation resource that quantifies the extent of of the seman...
In this paper we explain the difference between two aspects of semantic relatedness: taxonomic and t...
Preprint of chapter appearing in "Studies on the Semantic Web: Volume 33: Application of Semantic Te...
The semantic relatedness of words has two key dimensions: it can be based on taxonomic information o...
Word embeddings trained on natural corpora (e.g., newspaper collections, Wikipedia or the Web) excel...
Semantic taxonomies are powerful tools that provide structured knowledge to Natural Language Process...
Modelling semantic similarity plays a fundamental role in lexical semantic applications. A natural w...
In this paper, we provide a novel way to generate low dimensional vector embeddings for the noun and...
Hypernymy is a basic semantic relation in computational linguistics that expresses the “is-a” relati...
Cimiano P, Schmidt-Thieme L, Pivk A, Staab S. Learning Taxonomic Relations from Heterogeneous Eviden...
Taxonomies represent hierarchical relations between entities, frequently applied in various software...
Taxonomy is a knowledge management tool that presents useful information in a well-ordered structur...
We report the results of a study comparing the temporal dynamics of thematic and taxonomic knowledge...
Evidence from behavior, computational linguistics, and neuroscience studies supported that semantic ...
We propose a novel algorithm for inducing semantic taxonomies. Previous algorithms for taxonomy indu...
We introduce HyperLex — a dataset and evaluation resource that quantifies the extent of of the seman...
In this paper we explain the difference between two aspects of semantic relatedness: taxonomic and t...
Preprint of chapter appearing in "Studies on the Semantic Web: Volume 33: Application of Semantic Te...
The semantic relatedness of words has two key dimensions: it can be based on taxonomic information o...
Word embeddings trained on natural corpora (e.g., newspaper collections, Wikipedia or the Web) excel...
Semantic taxonomies are powerful tools that provide structured knowledge to Natural Language Process...
Modelling semantic similarity plays a fundamental role in lexical semantic applications. A natural w...
In this paper, we provide a novel way to generate low dimensional vector embeddings for the noun and...
Hypernymy is a basic semantic relation in computational linguistics that expresses the “is-a” relati...
Cimiano P, Schmidt-Thieme L, Pivk A, Staab S. Learning Taxonomic Relations from Heterogeneous Eviden...
Taxonomies represent hierarchical relations between entities, frequently applied in various software...
Taxonomy is a knowledge management tool that presents useful information in a well-ordered structur...
We report the results of a study comparing the temporal dynamics of thematic and taxonomic knowledge...
Evidence from behavior, computational linguistics, and neuroscience studies supported that semantic ...
We propose a novel algorithm for inducing semantic taxonomies. Previous algorithms for taxonomy indu...
We introduce HyperLex — a dataset and evaluation resource that quantifies the extent of of the seman...
In this paper we explain the difference between two aspects of semantic relatedness: taxonomic and t...
Preprint of chapter appearing in "Studies on the Semantic Web: Volume 33: Application of Semantic Te...