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An approach to detect offence in Memes using Natural Language Processing(NLP) and Deep learning

机译:使用自然语言处理(NLP)和深度学习检测模因中冒犯的方法

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Social media is one of the most popular form of platform which is most common with people of our age. With passage of time, memes have gained a significant popularity and are often shared on social media platforms. Memes usually have hilarious content but can be offensive sometimes, containing some hateful message or character image. Such memes may have detrimental social impact in our society or to any individual. [1] Thus, an automated system for evaluation of offensiveness in the meme content is required. This paper presents an approach to detect offense in memes using Natural Language Processing (NLP) and deep learning. Due to the increasing number of memes over the internet, it is not an easy task to evaluate each meme before it spreads all around. This raises a demand for a system that can automate the process of evaluating memes before they agitate a crowd or spread a humour. This paper presents a model to detect offensive memes, in three steps. First, it will extract the text from the given image, then it will classify the given text as offensive or not offensive. If the text is found to be offensive then in the third step it will further classify offensive text in three categories namely slight offensive, very offensive and hateful offensive. The dataset used for this work consists of 6,992 memes which were labeled as not offensive, slightly offensive, very offensive, and hateful offensive. The model uses very simple architecture with a multi-layer dense network structure involving NLP with RNN and LSTM along with word embeddings such as GloVe and FastText.
机译:社交媒体是最受欢迎的平台形式之一,与我们时代的人最常见。随着时间的推移,MEMES已经获得了重大普及,并且通常在社交媒体平台上共享。 MEMES通常具有搞笑内容,但有时可能是令人反感的,包含一些可恶的消息或字符形象。这些模型可能对我们的社会或任何个人都有不利的社会影响。因此,需要用于评估MEME内容中的攻击性的自动化系统。本文介绍了一种使用自然语言处理(NLP)和深度学习来检测模型中的冒犯方法的方法。由于互联网上的MEMEN数量越来越多,在其周围传播之前评估每个MEME并不一致。这提高了对系统可以自动化在搅动人群或传播幽默之前自动化评估模因的过程的系统的需求。本文介绍了一种探测冒犯模型的模型,三个步骤。首先,它将从给定图像中提取文本,然后它将给定文本分类为冒犯或不冒犯。如果发现文本是令人攻击性的,那么在第三步中,它将进一步分类三个类别的攻击性,即轻微的冒犯,非常令人反感和可恶的攻击性。用于此工作的数据集由6,992个模因组成,标有不令人反感,略微令人反感,非常令人反感,令人遗憾的攻击性。该模型使用具有多层密集网络结构的非常简单的架构,涉及带有RNN和LSTM的NLP以及Word Embedding,如手套和FastText。

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