Litcius/Paper detail

A semi-supervised short text sentiment classification method based on improved Bert model from unlabelled data

Haochen Zou, Zitao Wang

2023Journal Of Big Data30 citationsDOIOpen Access PDF

Abstract

Abstract Short text information has considerable commercial value and immeasurable social value. Natural language processing and short text sentiment analysis technology can organize and analyze short text information on the Internet. Natural language processing tasks such as sentiment classification have achieved satisfactory performance under a supervised learning framework. However, traditional supervised learning relies on large-scale and high-quality manual labels and obtaining high-quality label data costs a lot. Therefore, the strong dependence on label data hinders the application of the deep learning model to a large extent, which is the bottleneck of supervised learning. At the same time, short text datasets such as product reviews have an imbalance in the distribution of data samples. To solve the above problems, this paper proposes a method to predict label data according to semi-supervised learning mode and implements the MixMatchNL data enhancement method. Meanwhile, the Bert pre-training model is updated. The cross-entropy loss function in the model is improved to the Focal Loss function to alleviate the data imbalance in short text datasets. Experimental results based on public datasets indicate the proposed model has improved the accuracy of short text sentiment recognition compared with the previous update and other state-of-the-art models.

Topics & Concepts

Computer scienceBottleneckSentiment analysisArtificial intelligenceSemi-supervised learningMachine learningBig dataSupervised learningLanguage modelFunction (biology)Natural language processingData miningArtificial neural networkEvolutionary biologyEmbedded systemBiologySentiment Analysis and Opinion MiningText and Document Classification TechnologiesTopic Modeling