Learning task specific distributed paragraph representations using a 2-tier convolutional neural network


Autoria(s): Chen, Tao; Xu, Ruifeng; He, Yulan; Wang, Xuan
Data(s)

12/11/2015

Resumo

We introduce a type of 2-tier convolutional neural network model for learning distributed paragraph representations for a special task (e.g. paragraph or short document level sentiment analysis and text topic categorization). We decompose the paragraph semantics into 3 cascaded constitutes: word representation, sentence composition and document composition. Specifically, we learn distributed word representations by a continuous bag-of-words model from a large unstructured text corpus. Then, using these word representations as pre-trained vectors, distributed task specific sentence representations are learned from a sentence level corpus with task-specific labels by the first tier of our model. Using these sentence representations as distributed paragraph representation vectors, distributed paragraph representations are learned from a paragraph-level corpus by the second tier of our model. It is evaluated on DBpedia ontology classification dataset and Amazon review dataset. Empirical results show the effectiveness of our proposed learning model for generating distributed paragraph representations.

Formato

application/pdf

Identificador

http://eprints.aston.ac.uk/27560/1/Learning_task_specific_distributed_paragraph_representations.pdf

Chen, Tao; Xu, Ruifeng; He, Yulan and Wang, Xuan (2015). Learning task specific distributed paragraph representations using a 2-tier convolutional neural network. IN: Neural information processing. Lecture notes in computer science . Cham (CH): Springer.

Publicador

Springer

Relação

http://eprints.aston.ac.uk/27560/

Tipo

Book Section

NonPeerReviewed