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A BERT Fine-tuning Model for Targeted Sentiment Analysis of Chinese Online Course Reviews

Huibing Zhang, Junchao Dong, Liang Min, Peng Bi

2020International Journal of Artificial Intelligence Tools24 citationsDOI

Abstract

Accurate analysis of targeted sentiment in online course reviews helps in understanding emotional changes of learners and improving the course quality. In this paper, we propose a fine-tuned bidirectional encoder representation from transformers (BERT) model for targeted sentiment analysis of course reviews. Specifically, it consists of two parts: binding corporate rules — conditional random field (BCR-CRF) target extraction model and a binding corporate rules — double attention (BCR-DA) target sentiment analysis model. Firstly, based on a large-scale Chinese review corpus, intra-domain unsupervised training of a BERT pre-trained model (BCR) is performed. Then, a Conditional Random Field (CRF) layer is introduced to add grammatical constraints to the output sequence of the semantic representation layer in the BCR model. Finally, a BCR-DA model containing double attention layers is constructed to express the sentiment polarity of the course review targets in a classified manner. Experiments are performed on Chinese online course review datasets of China MOOC. The experimental results show that the F1 score of the BCR-CRF model reaches above 92%, and the accuracy of the BCR-DA model reaches above 72%.

Topics & Concepts

Conditional random fieldComputer scienceSentiment analysisArtificial intelligencebreakpoint cluster regionNatural language processingEncoderRepresentation (politics)Machine learningPoliticsLawChemistryOperating systemBiochemistryGenePolitical scienceSentiment Analysis and Opinion MiningOnline Learning and AnalyticsAdvanced Computing and Algorithms
A BERT Fine-tuning Model for Targeted Sentiment Analysis of Chinese Online Course Reviews | Litcius