{"title":"Aspect-based Text Classification for Sentimental Analysis using Attention mechanism with RU-BiLSTM","authors":"Sandeep Yelisetti, None Nellore Geethanjali","doi":"10.12694/scpe.v24i3.2122","DOIUrl":null,"url":null,"abstract":"Sentiment analysis has gained increasing attention from an educational and social perspective with the huge expansion of user interactions due to the Web’s significant improvement. The connection between an opinion target’s polarity scores and other aspects of the content is defined by aspect-based sentiment analysis. Identifying aspects and determining their different polarities is quite complicated because they are frequently implicit. To overcome these difficulties, efficient hybrid methods are used in aspect-based text classification in sentiment analysis. The existing process evaluates the aspects of polarity by using a Convolutional neural network, and it does not work with Big data. In this work, aspect-based text classification and attention mechanisms are used to assist in filtering out irrelevant information and quickly locating the essential features in big data. Initially, the data is collected, and then the data is preprocessed by using Tokenization, Stop word removal, Stemming, and Lemmatization. After preprocessing, the features are vectorized and extracted using Bag-of-Words and TF-IDF. Then, the extracted features are given into word embeddings by GloVe and Word2vec. It uses Deep Recurrent based Bidirectional Long Short Term Memory (RUBiLSTM) for aspect-based sentiment analysis. The RU-Bi-LSTM method integrates aspect-based embeddings and an attention mechanism for text classification. The attention mechanism focuses on more crucial aspects and the bidirectional LSTM to maintain context in both ways. Finally, the binary and ternary classification outcomes are obtained using the final dense softmax output layer. The proposed RU-BiLSTM uses four reviews and two Twitter datasets. The results of the studies demonstrate the efficacy of the RU-BiLSTM model, which outperformed aspect-based classifications on lengthy reviews and short tweets in terms of evaluation.","PeriodicalId":0,"journal":{"name":"","volume":null,"pages":null},"PeriodicalIF":0.0,"publicationDate":"2023-09-10","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.12694/scpe.v24i3.2122","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Sentiment analysis has gained increasing attention from an educational and social perspective with the huge expansion of user interactions due to the Web’s significant improvement. The connection between an opinion target’s polarity scores and other aspects of the content is defined by aspect-based sentiment analysis. Identifying aspects and determining their different polarities is quite complicated because they are frequently implicit. To overcome these difficulties, efficient hybrid methods are used in aspect-based text classification in sentiment analysis. The existing process evaluates the aspects of polarity by using a Convolutional neural network, and it does not work with Big data. In this work, aspect-based text classification and attention mechanisms are used to assist in filtering out irrelevant information and quickly locating the essential features in big data. Initially, the data is collected, and then the data is preprocessed by using Tokenization, Stop word removal, Stemming, and Lemmatization. After preprocessing, the features are vectorized and extracted using Bag-of-Words and TF-IDF. Then, the extracted features are given into word embeddings by GloVe and Word2vec. It uses Deep Recurrent based Bidirectional Long Short Term Memory (RUBiLSTM) for aspect-based sentiment analysis. The RU-Bi-LSTM method integrates aspect-based embeddings and an attention mechanism for text classification. The attention mechanism focuses on more crucial aspects and the bidirectional LSTM to maintain context in both ways. Finally, the binary and ternary classification outcomes are obtained using the final dense softmax output layer. The proposed RU-BiLSTM uses four reviews and two Twitter datasets. The results of the studies demonstrate the efficacy of the RU-BiLSTM model, which outperformed aspect-based classifications on lengthy reviews and short tweets in terms of evaluation.
随着网络的显著改进,用户交互的巨大扩展,情感分析从教育和社会的角度得到了越来越多的关注。意见目标的极性得分与内容的其他方面之间的联系是由基于方面的情感分析定义的。识别方面并确定它们的不同极性是相当复杂的,因为它们通常是隐含的。为了克服这些困难,情感分析中基于方面的文本分类采用了高效的混合方法。现有的方法是通过使用卷积神经网络来评估极性的各个方面,而且它不适用于大数据。在这项工作中,使用基于方面的文本分类和注意机制来帮助过滤掉不相关的信息,并快速定位大数据中的基本特征。首先收集数据,然后使用Tokenization、Stop word removal、词干化和词形化对数据进行预处理。预处理后,使用Bag-of-Words和TF-IDF对特征进行矢量化提取。然后,将提取的特征用GloVe和Word2vec进行词嵌入。它使用基于深度循环的双向长短期记忆(RUBiLSTM)进行基于方面的情感分析。RU-Bi-LSTM方法集成了基于方面的嵌入和文本分类的注意机制。注意机制关注更关键的方面,双向LSTM在两种方式下维持语境。最后,利用最终的密集softmax输出层得到二值和三值分类结果。提出的RU-BiLSTM使用四个评论和两个Twitter数据集。研究结果证明了RU-BiLSTM模型的有效性,在评估方面优于基于方面的分类,在长评论和短推文中。