We empirically characterize the performance of discriminative and generative LSTM models for text classification. We find that although RNN-based generative models are more powerful than their bag-of-words ancestors (e.g., they account for conditional dependencies across words in a document), they have higher asymptotic error rates than discriminatively trained RNN models. However we also find that generative models approach their asymptotic error rate more rapidly than their discriminative counterparts---the same pattern that Ng & Jordan (2001) proved holds for linear classification models that make more naive conditional independence assumptions. Building on this finding, we hypothesize that RNN-based generative classification models ...
Neural language models based on recurrent neural networks (RNNLM) have significantly improved the pe...
Neural language models (LMs) based on recurrent neural networks (RNN) are some of the most successfu...
Text classification has become very serious problem for big organization to manage the large amount ...
Recurrent Neural Networks (RNNs) represent a natural paradigm for modeling sequential data like text...
Despite the widespread application of recurrent neural networks (RNNs) across a variety of tasks, a ...
Text classification is a foundational task in many NLP applications. Traditional text classifiers of...
Text classification is a foundational task in many NLP applications. Traditional text classifiers of...
A recurrent neural network language model (RNN-LM) can use a long word context more than can an n-gr...
Natural language processing has many important applications in today, such as translations, spam fil...
Recurrent Neural Networks (RNNs) are theoretically Turing-complete and established themselves as a d...
Text-to-text generation is a fundamental task in natural language processing. Traditional models rel...
Recurrent neural network language models (RNNLMs) are an essential component for many language gener...
Text classification is a fundamental task in several areas of natural language processing (NLP), inc...
Deep learning is a relatively new area in the field of machine learning, and its full potential has ...
We consider the task of training a neural network to classify natural language sentences as grammati...
Neural language models based on recurrent neural networks (RNNLM) have significantly improved the pe...
Neural language models (LMs) based on recurrent neural networks (RNN) are some of the most successfu...
Text classification has become very serious problem for big organization to manage the large amount ...
Recurrent Neural Networks (RNNs) represent a natural paradigm for modeling sequential data like text...
Despite the widespread application of recurrent neural networks (RNNs) across a variety of tasks, a ...
Text classification is a foundational task in many NLP applications. Traditional text classifiers of...
Text classification is a foundational task in many NLP applications. Traditional text classifiers of...
A recurrent neural network language model (RNN-LM) can use a long word context more than can an n-gr...
Natural language processing has many important applications in today, such as translations, spam fil...
Recurrent Neural Networks (RNNs) are theoretically Turing-complete and established themselves as a d...
Text-to-text generation is a fundamental task in natural language processing. Traditional models rel...
Recurrent neural network language models (RNNLMs) are an essential component for many language gener...
Text classification is a fundamental task in several areas of natural language processing (NLP), inc...
Deep learning is a relatively new area in the field of machine learning, and its full potential has ...
We consider the task of training a neural network to classify natural language sentences as grammati...
Neural language models based on recurrent neural networks (RNNLM) have significantly improved the pe...
Neural language models (LMs) based on recurrent neural networks (RNN) are some of the most successfu...
Text classification has become very serious problem for big organization to manage the large amount ...