Word embedding is a feature learning technique which aims at mapping words from a vocabulary into vectors of real numbers in a low-dimensional space. By leveraging large corpora of unlabeled text, such continuous space representations can be computed for capturing both syntactic and semantic information about words. Word embeddings, when used as the underlying input representation, have been shown to be a great asset for a large variety of natural language processing (NLP) tasks. Recent techniques to obtain such word embeddings are mostly based on neural network language models (NNLM). In such systems, the word vectors are randomly initialized and then trained to predict optimally the contexts in which the corresponding words tend to appear...
Word embeddings are a key component of high-performing natural language processing (NLP) systems, bu...
Despite the recent popularity of word embedding methods, there is only a small body of work explorin...
The recent tremendous success of unsupervised word embeddings in a multitude of applications raises ...
Real-valued word embeddings have transformed natural language processing (NLP) applications, recogni...
There has been an exponential surge of text data in the recent years. As a consequence, unsupervised...
The digital era floods us with an excessive amount of text data. To make sense of such data automati...
Thesis (D. Phi)--Stellenbosch University, 2016.ENGLISH ABSTRACT: In contrast to only a decade ago, i...
In this paper we propose the application of feature hashing to create word embeddings for natural la...
When the field of natural language processing (NLP) entered the era of deep neural networks, the tas...
Word Embeddings are low-dimensional distributed representations that encompass a set of language mod...
What is a word embedding? Suppose you have a dictionary of words. The i th word in the dictionary is...
Distributional semantics has been revolutionized by neural-based word embeddings methods such as wor...
Words are not detached individuals but part of a beautiful interconnected web of related concepts, a...
Word embedding algorithms produce very reliable feature representations of words that are used by ne...
Research on word representation has always been an important area of interest in the antiquity of Na...
Word embeddings are a key component of high-performing natural language processing (NLP) systems, bu...
Despite the recent popularity of word embedding methods, there is only a small body of work explorin...
The recent tremendous success of unsupervised word embeddings in a multitude of applications raises ...
Real-valued word embeddings have transformed natural language processing (NLP) applications, recogni...
There has been an exponential surge of text data in the recent years. As a consequence, unsupervised...
The digital era floods us with an excessive amount of text data. To make sense of such data automati...
Thesis (D. Phi)--Stellenbosch University, 2016.ENGLISH ABSTRACT: In contrast to only a decade ago, i...
In this paper we propose the application of feature hashing to create word embeddings for natural la...
When the field of natural language processing (NLP) entered the era of deep neural networks, the tas...
Word Embeddings are low-dimensional distributed representations that encompass a set of language mod...
What is a word embedding? Suppose you have a dictionary of words. The i th word in the dictionary is...
Distributional semantics has been revolutionized by neural-based word embeddings methods such as wor...
Words are not detached individuals but part of a beautiful interconnected web of related concepts, a...
Word embedding algorithms produce very reliable feature representations of words that are used by ne...
Research on word representation has always been an important area of interest in the antiquity of Na...
Word embeddings are a key component of high-performing natural language processing (NLP) systems, bu...
Despite the recent popularity of word embedding methods, there is only a small body of work explorin...
The recent tremendous success of unsupervised word embeddings in a multitude of applications raises ...