Ebru Arısoy (MEF Author)Continuous space language models (CSLMs) have been proven to be successful in speech recognition. With proper training of the word embeddings, words that are semantically or syntactically related are expected to be mapped to nearby locations in the continuous space. In agglutinative languages, words are made up of concatenation of stems and suffixes and, as a result, compositional modeling is important. However, when trained on word tokens, CSLMs do not explicitly consider this structure. In this paper, we explore compositional modeling of stems and suffixes in a long short-term memory neural network language model. Our proposed models jointly learn distributed representations for stems and endings (concatenation of ...
For languages with fast vocabulary growth and limited resources, data sparsity leads to challenges i...
This paper presents a scalable method for integrating compositional morphological representations in...
The mathematical representation of semantics is a key issue for Natural Language Processing (NLP). A...
Ebru Arısoy (MEF Author)Continuous space language models (CSLMs) have been proven to be successful i...
Abstract Models of morphologically rich languages suffer from data sparsity when words are treated a...
Artificial neural networks have become the state-of-the-art in the task of language modelling wherea...
While most theories regarding the various aspects of human language are couched in the language of d...
Abstract. Recent advancements in unsupervised feature learning have developed powerful latent repres...
Virtually any modern speech recognition system relies on count-based language models. In this thesis...
Language modeling has been widely used in the application of natural language processing, and there...
We describe a simple neural language model that re-lies only on character-level inputs. Predictions ...
Recent advances in deep learning have provided fruitful applications for natural language processing...
Statistical language modeling is one of the fundamental problems in natural language processing. In ...
Neural network language models, or continuous-space language models (CSLMs), have been shown to impr...
Neural network language models, or continuous-space language models (CSLMs), have been shown to impr...
For languages with fast vocabulary growth and limited resources, data sparsity leads to challenges i...
This paper presents a scalable method for integrating compositional morphological representations in...
The mathematical representation of semantics is a key issue for Natural Language Processing (NLP). A...
Ebru Arısoy (MEF Author)Continuous space language models (CSLMs) have been proven to be successful i...
Abstract Models of morphologically rich languages suffer from data sparsity when words are treated a...
Artificial neural networks have become the state-of-the-art in the task of language modelling wherea...
While most theories regarding the various aspects of human language are couched in the language of d...
Abstract. Recent advancements in unsupervised feature learning have developed powerful latent repres...
Virtually any modern speech recognition system relies on count-based language models. In this thesis...
Language modeling has been widely used in the application of natural language processing, and there...
We describe a simple neural language model that re-lies only on character-level inputs. Predictions ...
Recent advances in deep learning have provided fruitful applications for natural language processing...
Statistical language modeling is one of the fundamental problems in natural language processing. In ...
Neural network language models, or continuous-space language models (CSLMs), have been shown to impr...
Neural network language models, or continuous-space language models (CSLMs), have been shown to impr...
For languages with fast vocabulary growth and limited resources, data sparsity leads to challenges i...
This paper presents a scalable method for integrating compositional morphological representations in...
The mathematical representation of semantics is a key issue for Natural Language Processing (NLP). A...