多模态情感分析:多任务学习方法

M. Fortin, B. Chaib-draa
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引用次数: 20

摘要

多模态情感分析近年来受到越来越多的关注。然而,大多数方法都认为文本和图像模式在测试时总是可用的。这个假设在现实环境中经常被违反(例如社交媒体),因为用户并不总是发布带有图像的文本。在本文中,我们提出了一种基于多任务框架的方法,在多模态信息可用时进行组合,同时能够处理模态缺失的情况。我们的模型包含一个用于分析文本的分类器,另一个用于分析图像的分类器,另一个通过融合两种模式来执行预测。除了为缺少模态的问题提供解决方案之外,我们的实验表明,这个多任务框架通过充当正则化机制来提高泛化。我们还证明了该模型可以在训练时处理缺失的模态,从而能够使用纯图像和纯文本示例进行训练。
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Multimodal Sentiment Analysis: A Multitask Learning Approach
Multimodal sentiment analysis has recently received an increasing interest. However, most methods have considered that text and image modalities are always available at test time. This assumption is often violated in real environments (e.g. social media) since users do not always publish a text with an image. In this paper we propose a method based on a multitask framework to combine multimodal information when it is available, while being able to handle the cases where a modality is missing. Our model contains one classifier for analyzing the text, another for analyzing the image, and another performing the prediction by fusing both modalities. In addition to offer a solution to the problem of a missing modality, our experiments show that this multitask framework improves generalization by acting as a regularization mechanism. We also demonstrate that the model can handle a missing modality at training time, thus being able to be trained with image-only and text-only examples.
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