Traditional sentence representations such as bag-of-words (BOW) and term frequency-inverse document frequency (tf-idf) face the problem of data sparsity and may not generalize well. Neural network based representations such as word/sentence vectors are usually trained in an unsupervised way and lack the topic information which is important for story segmentation. In this paper, we propose to learn sentence representation by using deep neural network (DNN) to directly predict the topic class of the input sentence. By using supervised training, the learned vector representation of sentences contains more topic information and is more suitable for the story segmentation task. The input of the DNN is BOW vector computed from a context window. M...
In the Baoule language, several sentences express the same fact. Classification of sentences is a ta...
Neural topic models (NTMs) apply deep neural networks to topic modelling. Despite their success, NTM...
Topic modeling techniques have the benefits of modeling words and documents uniformly under a probab...
Traditional sentence representations such as bag-of-words (BOW) and term frequency-inverse document ...
Automated story generation is the problem of automatically selecting a sequence of events, actions, ...
Neural sentence encoders (NSE) are effective in many NLP tasks, including topic segmentation. Howeve...
We introduce a type of 2-tier convolutional neural network model for learning distributed paragraph ...
Vector-space distributed representations of words can capture syntactic and semantic regularities in...
Topic segmentation plays an important role for discourse analysis and document understanding.Previou...
Topic segmentation plays an important role for discourse analysis and document understanding. Previo...
In the Natural Language Understanding field, one of the important tasks is topic detection. Given th...
In this paper we present a new algorithm for text segmentation based on deep sentence encoders and t...
Abstract. Topic modeling techniques have been widely used to uncover dominant themes hidden inside a...
Topic modeling techniques have the benefits of modeling words and documents uniformly under a probab...
Many machine learning algorithms require the input to be represented as a fixed-length feature vecto...
In the Baoule language, several sentences express the same fact. Classification of sentences is a ta...
Neural topic models (NTMs) apply deep neural networks to topic modelling. Despite their success, NTM...
Topic modeling techniques have the benefits of modeling words and documents uniformly under a probab...
Traditional sentence representations such as bag-of-words (BOW) and term frequency-inverse document ...
Automated story generation is the problem of automatically selecting a sequence of events, actions, ...
Neural sentence encoders (NSE) are effective in many NLP tasks, including topic segmentation. Howeve...
We introduce a type of 2-tier convolutional neural network model for learning distributed paragraph ...
Vector-space distributed representations of words can capture syntactic and semantic regularities in...
Topic segmentation plays an important role for discourse analysis and document understanding.Previou...
Topic segmentation plays an important role for discourse analysis and document understanding. Previo...
In the Natural Language Understanding field, one of the important tasks is topic detection. Given th...
In this paper we present a new algorithm for text segmentation based on deep sentence encoders and t...
Abstract. Topic modeling techniques have been widely used to uncover dominant themes hidden inside a...
Topic modeling techniques have the benefits of modeling words and documents uniformly under a probab...
Many machine learning algorithms require the input to be represented as a fixed-length feature vecto...
In the Baoule language, several sentences express the same fact. Classification of sentences is a ta...
Neural topic models (NTMs) apply deep neural networks to topic modelling. Despite their success, NTM...
Topic modeling techniques have the benefits of modeling words and documents uniformly under a probab...