作者
Chenquan Gan, Lu Wang, Zufan Zhang, Zhangyi Wang
发表日期
2019
期刊
Knowledge-Based Systems
简介
Long short-term memory networks (LSTM) and classical convolutional neural networks (CNN) are two critical methods for the task of targeted sentiment analysis, but LSTM are difficult to parallelize and time-inefficient, and classical CNN can only capture local semantic features. To this end, this paper first proposes a sparse attention based separable dilated convolutional neural network (SA-SDCCN), which consists of multichannel embedding layer, separable dilated convolution module, sparse attention layer, and output layer. Specifically, our work is mainly concentrated on the first three parts. In multichannel embedding layer, semantic and sentiment embeddings are incorporated into an embedding tensor, which builds richer representations over the input sequence. In separable dilated convolution module, long-range contextual semantic information is explored and multi-scale contextual semantic dependencies …
引用总数
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