Words are not detached individuals but part of a beautiful interconnected web of related concepts, and to capture the full complexity of this web they need to be represented in a way that encapsulates all the semantic and syntactic facets of the language. Further, to enable computational processing they need to be expressed in a consistent manner so that similar properties are encoded in a similar way. In this thesis dense real valued vector representations, i.e. word embeddings, are extended and studied for their applicability to natural language processing (NLP). Word embeddings of two distinct flavors are presented as part of this thesis, sense aware word representations where different word senses are represented as distinct objects, an...
When the field of natural language processing (NLP) entered the era of deep neural networks, the tas...
The representation of written language semantics is a central problem of language technology and a c...
Word embeddings are vectorial semantic representations built with either counting or predicting tech...
Words are not detached individuals but part of a beautiful interconnected web of related concepts, a...
Vector representations of text are an essential tool for modern Natural Language Processing (NLP), a...
Word embeddings are widely used in Nat-ural Language Processing, mainly due totheir success in captu...
Over the past years, distributed semantic representations have proved to be effective and flexible k...
Representation learning lies at the core of Artificial Intelligence (AI) and Natural Language Proces...
Word embedding is a feature learning technique which aims at mapping words from a vocabulary into ve...
Word embeddings are widely used in Natural Language Processing, mainly due to their success in captu...
Recent years have seen a dramatic growth in the popularity of word embeddings mainly owing to t...
Real-valued word embeddings have transformed natural language processing (NLP) applications, recogni...
While word embeddings are now a de facto standard representation of words in most NLP tasks, recentl...
The task of listing all semantic properties of a single word might seem manageable at first but as y...
Word embeddings have recently gained considerable popularity for modeling words in different Natural...
When the field of natural language processing (NLP) entered the era of deep neural networks, the tas...
The representation of written language semantics is a central problem of language technology and a c...
Word embeddings are vectorial semantic representations built with either counting or predicting tech...
Words are not detached individuals but part of a beautiful interconnected web of related concepts, a...
Vector representations of text are an essential tool for modern Natural Language Processing (NLP), a...
Word embeddings are widely used in Nat-ural Language Processing, mainly due totheir success in captu...
Over the past years, distributed semantic representations have proved to be effective and flexible k...
Representation learning lies at the core of Artificial Intelligence (AI) and Natural Language Proces...
Word embedding is a feature learning technique which aims at mapping words from a vocabulary into ve...
Word embeddings are widely used in Natural Language Processing, mainly due to their success in captu...
Recent years have seen a dramatic growth in the popularity of word embeddings mainly owing to t...
Real-valued word embeddings have transformed natural language processing (NLP) applications, recogni...
While word embeddings are now a de facto standard representation of words in most NLP tasks, recentl...
The task of listing all semantic properties of a single word might seem manageable at first but as y...
Word embeddings have recently gained considerable popularity for modeling words in different Natural...
When the field of natural language processing (NLP) entered the era of deep neural networks, the tas...
The representation of written language semantics is a central problem of language technology and a c...
Word embeddings are vectorial semantic representations built with either counting or predicting tech...