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AI_ML_NIT_Patna @ TRAC - 2: Deep Learning Approach for Multi-lingual Aggression Identification

机译:AI_ML_NIT_Patna @ TRAC-2:用于多语言攻击识别的深度学习方法

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This paper describes the details of developed models and results of team AI_ML_NIT.Patna for the shared task of TRAC - 2. The main objective of the said task is to identify the level of aggression and whether the comment is gendered based or not. The aggression level of each comment can be marked as either Overtly aggressive or Covertly aggressive or Non-aggressive. We have proposed two deep learning systems: Convolutional Neural Network and Long Short Term Memory with two different input text representations, FastText and One-hot embeddings. We have found that the LSTM model with FastText embedding is performing better than other models for Hindi and Bangla datasets but for the English dataset, the CNN model with FastText embedding has performed better. We have also found that the performances of One-hot embedding and pre-trained FastText embedding are comparable. Our system got 11th and 10th positions for English Sub-task A and Sub-task B, respectively, 8th and 7th positions, respectively for Hindi Sub-task A and Sub-task B and 7th and 6th positions for Bangla Sub-task A and Sub-task B, respectively among the total submitted systems.
机译:本文描述了TRAC-2共同任务的AI_ML_NIT.Patna团队开发模型的详细信息和结果,该任务的主要目的是确定侵略程度以及评论是否基于性别。每个评论的攻击性级别可以标记为公开攻击性或秘密攻击性或非攻击性。我们提出了两种深度学习系统:卷积神经网络和长短期记忆,具有两种不同的输入文本表示形式,即FastText和One-hot嵌入。我们发现,具有FastText嵌入的LSTM模型在Hindi和Bangla数据集上的性能优于其他模型,但对于英语数据集,具有FastText嵌入的CNN模型的性能更好。我们还发现,单热嵌入和预训练的FastText嵌入的性能是可比的。我们的系统在英语子任务A和子任务B上分别获得第11和10位,在印地语子任务A和子任务B上分别获得第8和7位,而孟加拉子任务A和B分别获得第7和第6位。子任务B分别位于提交的系统总数中。

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