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Sentiment analysis of multimodal twitter data

机译:多模式推特数据的情感分析

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摘要

Text-driven sentiment analysis has been widely studied in the past decade, on both random and benchmark textual Twitter datasets. Few pertinent studies have also reported visual analysis of images to predict sentiment, but much of the work has analyzed a single modality data, that is either text or image or GIF video. More recently, as the images, memes and GIFs dominate the social feeds; typographic/infographic visual content has become a non-trivial element of social media. This multimodal text combines both text and image defining a novel visual language which needs to be analyzed as it has the potential to modify, confirm or grade the polarity of the sentiment. We propose a multimodal sentiment analysis model to determine the sentiment polarity and score for any incoming tweet, i.e., textual, image or info-graphic and typographic. Image sentiment scoring is done using SentiBank and SentiStrength scoring for Regions with convolution neural network (R-CNN). Text sentiment scoring is done using a novel context-aware hybrid (lexicon and machine learning) technique. Multimodal sentiment scoring is done by separating text from image using an optical character recognizer and then aggregating the independently processed image and text sentiment scores. High performance accuracy of 91.32% is observed for the random multimodal tweet dataset used to evaluate the proposed model. The research further demonstrates that combining both textual and image features outperforms separate models that rely exclusively on either images or text analysis.
机译:文本驱动的情绪分析已在过去十年中广泛研究,在随机和基准文本Twitter数据集中。几个相关的研究还报告了对图像的视觉分析,以预测情绪,但大部分工作已经分析了单个模态数据,即文本或图像或GIF视频。最近,作为图像,模因和GIF主导社会饲料;排版/信息图表视觉内容已成为社交媒体的非琐碎元素。该多模式文本结合了定义新型视觉语言的文本和图像,这需要分析,因为它有可能修改,确认或级感的极性。我们提出了一种多模式情绪分析模型,以确定任何传入推文的情感极性和得分,即文本,图像或信息图形和印刷。图像情绪评分是使用Sentibank和Sentistrength的区域完成与卷积神经网络(R-CNN)的区域进行完成。文本情绪评分是使用新颖的上下文感知混合(词典和机器学习)技术完成的。通过使用光学字符识别器将文本与图像分离,然后聚合独立处理的图像和文本情感分数来完成多式化情绪评分。对于用于评估所提出的模型的随机多模式推文数据集,观察到91.32%的高性能精度。该研究进一步展示了组合文本和图像特征优于依赖于图像或文本分析的单独模型。

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