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Two-Way Feature Extraction Using Sequential and Multimodal Approach for Hateful Meme Classification

机译:双向特征提取利用仇恨模因分类的顺序和多式联法方法

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摘要

Millions of memes are created and shared every day on social media platforms. Memes are a great tool to spread humour. However, some people use it to target an individual or a group generating offensive content in a polite and sarcastic way. Lack of moderation of such memes spreads hatred and can lead to depression like psychological conditions. Many successful studies related to analysis of language such as sentiment analysis and analysis of images such as image classification have been performed. However, most of these studies rely only upon either one of these components. As classifying meme is one problem which cannot be solved by relying upon only any one of these aspects, the present work identifies, addresses, and ensembles both the aspects for analyzing such data. In this research, we propose a solution to the problems in which the classification depends on more than one model. This paper proposes two different approaches to solve the problem of identifying hate memes. The first approach uses sentiment analysis based on image captioning and text written on the meme. The second approach is to combine features from different modalities. These approaches utilize a combination of glove, encoder-decoder, and OCR with Adamax optimizer deep learning algorithms. Facebook Challenge Hateful Meme Dataset is utilized which contains approximately 8500 meme images. Both the approaches are implemented on the live challenge competition by Facebook and predicted quite acceptable results. Both approaches are tested on the validation dataset, and results are found to be promising for both models.
机译:每天在社交媒体平台上创建和共享数百万MEMES。模因是传播幽默的伟大工具。然而,有些人用它以礼貌和讽刺的方式瞄准一个人或一组产生冒犯内容的团体。这些模因缺乏审核蔓延仇恨,可以导致抑郁症等心理条件。已经进行了与诸如图像分类等图像的语言分析相关的许多成功研究,例如图像分类。然而,大多数研究依赖于这些组件中的任何一个。作为分类MEME是通过仅依赖于这些方面中的任何一个不能解决的一个问题,本工作识别,地址和集合用于分析这些数据的方面。在这项研究中,我们提出了解决分类取决于多种模型的问题的解决方案。本文提出了两种不同的方法来解决识别仇恨模因的问题。第一种方法使用基于图像标题和写在MEME上的文本的情感分析。第二种方法是将来自不同方式的特征组合。这些方法利用手套,编码器 - 解码器和OCR的组合与AdAmax优化器深度学习算法。 Facebook挑战使用仇恨MEME数据集,其中包含大约8500个MEME图像。这两种方法都在Facebook的实时挑战竞争中实施,并预测了相当可接受的结果。这两种方法都在验证数据集上进行了测试,并找到了两种模型的结果。

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