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Aspect-Based Sentiment Analysis of User Reviews in 5G Networks

Yin Zhang⋆, Huimin Lu, Chi Jiang, Xin Li, Xinliang Tian

2021IEEE Network15 citationsDOI

Abstract

Aspect-based sentiment analysis can help consumers provide clear and objective sentiment recommendations through massive amounts of data and is conducive to overcoming ambiguous human weaknesses in subjective judgments. However, the robustness and accuracy of existing sentiment analysis methods must still be improved. In this article, deep learning and machine learning techniques are combined to construct a sentiment analysis model based on ensemble learning ideas. Furthermore, the proposed model is applied to a sentiment classification for user reviews about restaurants, which are the representative location-based and user-oriented applications in 5G networks. Specifically, a multi-aspect-labeling model is established, and an ensemble aspect-based model is proposed based on the concept of ensemble learning to predict the consumer's true consumption feelings and willingness to consume again, and to improve machine learning based on the developed model. The predictive performance of the algorithm lies within a single domain.

Topics & Concepts

Sentiment analysisComputer scienceRobustness (evolution)Artificial intelligenceMachine learningConstruct (python library)Ensemble learningDeep learningDomain (mathematical analysis)Ensemble forecastingMathematicsChemistryMathematical analysisGeneProgramming languageBiochemistrySentiment Analysis and Opinion MiningDigital Marketing and Social MediaWeb Data Mining and Analysis
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