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Multi-domain sentiment analysis with mimicked and polarized word embeddings for human-robot interaction

机译:多域情感分析与模仿和偏振词嵌入式人机交互

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This paper presents a state-of-the-art approach for sentiment polarity classification. Our approach relies on an ensemble of Bidirectional Long Short-Term Memory networks equipped with a neural attention mechanism. The system makes use of pre-trained word embeddings, and is capable of predicting new vectors for out-of-vocabulary words, by learning distributional representations based on word spellings. Also, during the training process the recurrent neural network is used to perform a fine-tuning of the original word embeddings, taking into account information about sentiment polarity. This step can be particularly helpful for sentiment analysis, as word embeddings are usually built based on context information, while words with opposite sentiment polarity often occur in similar contexts. The system described in this paper is an improved version of an approach that competed in a recent challenge on semantic sentiment analysis. We evaluate the performance of the system on the same multi-domain test set used by the organizers of the challenge, showing that our approach allows reaching better results with respect to the previous top-scoring system. Last but not least, we embedded the proposed sentiment polarity approach on top of a humanoid robot to lively identify the sentiment of the speaking user.
机译:本文提出了一种最先进的情感极性分类方法。我们的方法依赖于配备神经关注机制的双向长短期内存网络的集合。该系统利用预先训练的单词嵌入,并且能够通过基于Word拼写学习分配表示来预测对词汇外单词的新载体。此外,在训练过程中,经常性神经网络用于执行原始单词嵌入的微调,考虑到情绪极性的信息。该步骤可以特别有助于情感分析,因为嵌入词嵌入式通常基于上下文信息构建,而具有相反情绪极性的单词通常在类似的环境中发生。本文描述的系统是一种改进的方法,其参与最近对语义情感分析的挑战。我们评估系统对挑战组织者使用的相同多域测试集的性能,表明我们的方法允许对以前的彩色评分系统达到更好的结果。最后但并非最不重要的是,我们嵌入了人形机器人顶部的建议情感极性方法,以热闹地识别说话用户的情绪。

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