基于增强卷积神经网络的情感分类方法

M. Saini, Mala Kalra
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引用次数: 0

摘要

情感分析是一种从人们在Facebook和Twitter等社交媒体上发布的文本或图像中分析他们的观点和观点的方法。情感分析是一项具有挑战性的任务,因为分析文本的确切观点、观点和感受并不容易。在不同的语境和话题中,人们表达感情的方式也各不相同。这个问题可以通过结合文本和先验知识来解决。本研究提出了一种深度卷积神经网络,利用字符到句子级的信息对推文进行情感分析。提出了一种新的卷积神经网络权值初始化方法,可以有效地训练卷积神经网络并找到有效的特征。该模型通过深度学习模型进一步调整,减少了分类误差。它通过卷积神经网络将词向量特征与特征工程相结合。此外,这个过程涉及到软最大分类器的学习。实验使用三种不同的数据集进行,分别有3K、10K和100K条推文。与现有方法相比,所提出的方法在准确性、精密度和召回率方面都有显著提高。
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An Enhanced Convolution Neural Network Based Approach for Classification of Sentiments
Sentiment analysis is an approach to analyse the opinion and views of the people from the text or images posted by them on social media like Facebook and Twitter. Sentiment analysis is a challenging task because it is not easy to analyse the exact views, opinions, and feelings of the text. The way of expressing feelings varies with people in different contexts and topics. This issue can be resolved by combining the text and prior knowledge. This research work proposes a deep convolutional neural network that uses the character to sentence-level information to perform sentiment analysis of tweets. A new approach for the initialization of the weights of the convolutional neural network is suggested which helps to train the network efficiently and helps to find effective features. The model is further tuned by a deep learning model which reduces the classification error. It uses word vector features with feature engineering by means of a convolution neural network. Further, the process involves learning by the soft-max classifier. The experiments are performed using three different datasets with 3K,10K and 100K tweets. The proposed approach represents a significant improvement in accuracy, precision, and recall in comparison to existing approaches.
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