2024
DOI: 10.3390/electronics13061149
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Text-Centric Multimodal Contrastive Learning for Sentiment Analysis

Heng Peng,
Xue Gu,
Jian Li
et al.

Abstract: Multimodal sentiment analysis aims to acquire and integrate sentimental cues from different modalities to identify the sentiment expressed in multimodal data. Despite the widespread adoption of pre-trained language models in recent years to enhance model performance, current research in multimodal sentiment analysis still faces several challenges. Firstly, although pre-trained language models have significantly elevated the density and quality of text features, the present models adhere to a balanced design st… Show more

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Cited by 1 publication
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“…One common approach to improve the performance of a text categorization assignment is to employ ensemble learning by utilizing multiple classi cation models (Peng et al 2024). We employed various models in our project, subjecting them to rigorous testing using multiple datasets and ne-tuning their hyperparameters to attain optimal outcomes.…”
Section: Classi Cation Modelsmentioning
confidence: 99%
“…One common approach to improve the performance of a text categorization assignment is to employ ensemble learning by utilizing multiple classi cation models (Peng et al 2024). We employed various models in our project, subjecting them to rigorous testing using multiple datasets and ne-tuning their hyperparameters to attain optimal outcomes.…”
Section: Classi Cation Modelsmentioning
confidence: 99%