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Multilogue-Net: A Context Aware RNN for Multi-modal Emotion Detection and Sentiment Analysis in Conversation

机译:Multibugue-net:用于多模态情绪检测和谈话情绪分析的上下文意识RNN

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Sentiment Analysis and Emotion Detection in conversation is key in several real-world applications, with an increase in modalities available aiding a better understanding of the underlying emotions. Multi-modal Emotion Detection and Sentiment Analysis can be particularly useful, as applications will be able to use specific subsets of available modalities, as per the available data. Current systems dealing with Multi-modal functionality fail to leverage and capture - the context of the conversation through all modalities, the dependency between the listener(s) and speaker emotional states, and the relevance and relationship between the available modalities. In this paper, we propose an end to end RNN architecture that attempts to take into account all the mentioned drawbacks. Our proposed model, at the time of writing, out-performs the state of the art on a benchmark dataset on a variety of accuracy and regression metrics.
机译:谈话中的情感分析和情感检测是若干现实世界应用的关键,随着对潜在情绪的更好理解,可以增加方式。多模态情绪检测和情感分析可能特别有用,因为应用程序将能够根据可用数据使用可用模态的特定子集。处理多模态功能的当前系统未能利用和捕获 - 通过所有方式的对话的上下文,侦听器与扬声器情绪状态之间的依赖关系以及可用模式之间的相关性和关系。在本文中,我们建议结束终端RNN架构,该架构试图考虑所有提到的缺点。我们提出的模型,在写作时,在各种精度和回归度量上的基准数据集中出现了最先进的。

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