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IIIT_DWD@EACL2021: Identifying Troll Meme in Tamil using a hybrid deep learning approach

机译:IIIT_DWD @ EACL2021:使用混合深度学习方法识别泰米尔中的Troll Meme

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Social media are an open forum that allows people to share their knowledge, abilities, talents, ideas, or expressions. Simultaneously, it also allows people to post disrespectful, trolling, defamation, or negative content targeting users or the community based on their gender, race, religious beliefs, etc. Such posts are available in the form of text, image, video, and meme. Among them, memes are currently widely used to disseminate offensive material amongst people. It is primarily in the form of pictures and text. In the present paper, troll memes are identified, which is necessary to create a healthy society. To do so, a hybrid deep learning model combining convolutional neural networks and bidirectional long short term memory is proposed to identify trolled memes. The dataset used in the study is a part of the competition EACL 2021: Troll Meme classification in Tamil. The proposed model obtained 10th rank in the competition and reported a precision of 0.52, recall 0.59, and weighted F1 0.3.
机译:社交媒体是一个开放论坛,允许人们分享他们的知识,能力,人才,想法或表达。同时,它还允许人们根据他们的性别,种族,宗教信仰等地发布不尊重,拖钓,诽谤或负面内容,或者社区,这些帖子以文本,图像,视频和模因的形式提供。其中,模因目前广泛用于在人们中传播冒犯性材料。它主要是图片和文本的形式。在本文中,确定了巨魔模因,这是创造健康社会所必需的。为此,提出了一种混合深度学习模型,组合卷积神经网络和双向短期内记忆来识别绞射模因。该研究中使用的数据集是竞争EACL 2021的一部分:泰米尔的Troll Meme分类。拟议的模型在竞争中获得了第10位,报告了0.52,召回0.59和加权F1 0.3的精度。

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