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We propose a novel two-layered attention network based on Bidirectional Long Short-Term Memory for sentiment analysis. The novel two-layered attention network takes advantage of the external knowledge bases to improve the sentiment prediction. It uses the Knowledge Graph Embedding generated using the WordNet. We build our model by combining the two-layered attention network with the supervised model based on Support Vector Regression using a Multilayer Perceptron network for sentiment analysis. We evaluate our model on the benchmark dataset of SemEval 2017 Task 5. Experimental results show that the proposed model surpasses the top system of SemEval 2017 Task 5. The model performs significantly better by improving the state-of-the-art system at SemEval 2017 Task 5 by 1.7 and 3.7 points for sub-tracks 1 and 2 respectively.

相關內容

狹義的情感分析(sentiment analysis)是指利用計算機實現對文本數據的觀點、情感、態度、情緒等的分析挖掘。廣義的情感分析則包括對圖像視頻、語音、文本等多模態信息的情感計算。簡單地講,情感分析研究的目標是建立一個有效的分析方法、模型和系統,對輸入信息中某個對象分析其持有的情感信息,例如觀點傾向、態度、主觀觀點或喜怒哀樂等情緒表達。

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