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Understanding Emotions in Text Using Deep Learning and Big Data

机译:使用深度学习和大数据了解文本中的情感

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Big Data and Deep Learning algorithms combined with enormous computing power have paved ways for significant technological advancements. Technology is evolving to anticipate, understand and address our unmet needs. However, to fully meet human needs, machines or computers must deeply understand human behavior including emotions. Emotions are physiological states generated in humans as a reaction to internal or external events. They are complex and studied across numerous fields including computer science. As humans, on reading "Why don't you ever text me!", we can either interpret it as a sad or an angry emotion and the same ambiguity exists for machines as well. Lack of facial expressions and voice modulations make detecting emotions in text a challenging problem. However, in today's online world, humans are increasingly communicating using text messaging applications and digital agents. Hence, it is imperative for machines to understand emotions in textual dialogue to provide emotionally aware responses to users. In this paper, we propose a novel Deep Learning based approach to detect emotions- Happy, Sad and Angry in textual dialogues. The essence of our approach lies in combining both semantic and sentiment based representations for more accurate emotion detection. We use semi-automated techniques to gather large scale training data with diverse ways of expressing emotions to train our model. Evaluation of our approach on real world dialogue datasets reveals that it significantly outperforms traditional Machine Learning baselines as well as other off-the-shelf Deep Learning models.
机译:大数据和深度学习算法与强大的计算能力相结合,为重大的技术进步铺平了道路。技术正在不断发展,以预测,理解和满足我们未满足的需求。但是,为了完全满足人类的需求,机器或计算机必须深刻理解人类的行为,包括情感。情绪是人类对内部或外部事件的反应而产生的生理状态。它们是复杂的,并且在包括计算机科学在内的许多领域进行了研究。作为人类,在阅读“为什么不给我发短信!”时,我们可以将其解释为悲伤或愤怒的情绪,并且机器也存在相同的歧义。缺乏面部表情和语音调制使检测文本中的情绪成为一个具有挑战性的问题。但是,在当今的在线世界中,人们越来越多地使用文本消息传递应用程序和数字代理进行通信。因此,对于机器而言,必须理解文本对话中的情绪以向用户提供情绪感知的响应。在本文中,我们提出了一种基于深度学习的新颖方法来检测文本对话中的情绪-快乐,悲伤和愤怒。我们方法的本质在于结合基于语义和情感的表示,以实现更准确的情感检测。我们使用半自动化技术来收集大规模的训练数据,并通过多种表达情绪的方式来训练我们的模型。对我们在现实世界中的对话数据集上的方法的评估表明,它大大优于传统的机器学习基准以及其他现成的深度学习模型。

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