基于深度主动学习的智能手机评分预测情绪分析框架

IF 1.8 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Foundations of Computing and Decision Sciences Pub Date : 2023-06-01 DOI:10.2478/fcds-2023-0008
Rathan Muralidhar, Vishwanath R. Hulipalled
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引用次数: 0

摘要

社交媒体是用户生成内容的丰富来源,人们在其中表达对他们遇到的产品和服务的看法。然而,使用机器学习模型的情感分析不容易以时间和成本有效的方式实现,因为需要专家的人类注释者来标记训练数据。该方法采用基于词典的方法和人工相结合的方法来去除中性语句。然后使用深度主动学习模型来执行情感分析,以减少注释工作。将其与基线方法进行比较,基线方法表示中立推文也是数据的一部分。考虑到品牌需要对其产品或服务进行基于方面的评级,所提出的方法还对移动设备的每个方面进行分类预测评级。
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Sentiment Analysis Framework using Deep Active Learning for Smartphone Aspect Based Rating Prediction
Abstract Social media are a rich source of user generated content where people express their views towards the products and services they encounter. However, sentiment analysis using machine learning models are not easy to implement in a time and cost effective manner due to the requirement of expert human annotators to label the training data. The proposed approach uses a novel method to remove the neutral statements using a combination of lexicon based approach and human effort. This is followed by using a deep active learning model to perform sentiment analysis to reduce annotation efforts. It is compared with the baseline approach representing the neutral tweets also as a part of the data. Considering brands require aspect based ratings towards their products or services, the proposed approach also categorizes predicting ratings of each aspect of mobile device.
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来源期刊
Foundations of Computing and Decision Sciences
Foundations of Computing and Decision Sciences COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
2.20
自引率
9.10%
发文量
16
审稿时长
29 weeks
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