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Affects in Tweets with Real Time Emotions using Deep Learning Techniques: A Novel Approach

机译:使用深度学习技术的实时情感对推文的影响:一种新颖的方法

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Twitter is an online microblogging tool that has 400 million messages per day. SemEval-2018 Tasks have already been presented and explored in the previous years by the name of “Affect in Tweets” but the scope for improvement never ends. So, in this research paper, we come up with deep learning architecture which is extremely coherent for the given task of extracting emotion intensity and classes from tweets (description of the task is given on www.codalab.com for details). Deep learning models are productive due to their automatic learning capability and automatic feature extraction. This research paper highlights the implementation of deep learning-based models such as convolutional neural networks and LSTM for classifications. The implemented tasks are-:1. emotion intensity regression 2. Emotion intensity ordinal classification,z 3. Multilabel emotion classification. We have expressed that the fine-grained intensity scores that we have obtained are reliable. Our dataset is beneficial for testing supervised machine learning algorithms for multi-label classification, intensity regression, sleuthing ordinal category of intensity of feeling (low, moderate, etc.). We have implemented various machine learning and deep learning-based models and achieved an accuracy of 77.64% in E-oc (Emotion ordinal classification) task, which is the highest among all competitors.
机译:Twitter是一种在线微博工具,每天有4亿条消息。 SemEval-2018任务在前几年已经以“ Awet in Tweets”的名称进行了介绍和探索,但是改进的范围永无止境。因此,在本研究论文中,我们提出了深度学习架构,该架构对于从推文中提取情绪强度和类别的既定任务非常一致(有关详细信息,请参见该任务的说明)。深度学习模型具有自动学习功能和自动特征提取功能,因此具有很高的生产力。本研究论文重点介绍了基于深度学习的模型的实现,例如卷积神经网络和LSTM用于分类。已执行的任务是:1.。情绪强度回归2.情绪强度序数分类,z 3.多标签情绪分类。我们已经表示,我们获得的细粒度强度评分是可靠的。我们的数据集有利于测试监督式机器学习算法,以进行多标签分类,强度回归,筛选感觉强度的序数类别(低,中等)。我们已经实现了各种基于机器学习和深度学习的模型,并且在E-oc(情感序号分类)任务中的准确性达到了77.64%,在所有竞争对手中都是最高的。

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