Deberta V3 Large Absa V1.1
A fine-tuned aspect-level sentiment analysis model based on DeBERTa-v3-large, supporting sentiment polarity classification across multiple domains
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Release Time : 3/19/2022
Model Overview
This model is specifically designed for Aspect-Based Sentiment Analysis (ABSA), capable of identifying sentiment tendencies towards specific aspects in text. Based on the FAST-LCF-BERT architecture, trained on 180,000 ABSA samples, it is suitable for multi-domain text analysis including laptops, restaurants, and social media.
Model Features
Multi-domain Applicability
Trained on datasets from multiple domains including laptops, restaurants, and social media, ensuring broad applicability
Efficient Architecture
Utilizes FAST-LCF-BERT architecture, optimizing performance for aspect sentiment analysis
Large-scale Training Data
Trained on 180,000 ABSA samples (including augmented data), covering various application scenarios
Model Capabilities
Aspect-level sentiment polarity classification
Multi-domain text sentiment analysis
Specific entity sentiment recognition
Use Cases
Customer Feedback Analysis
Restaurant Review Analysis
Analyze customers' sentiment tendencies towards specific aspects like service quality and food quality
Accurately identifies positive/negative evaluations of different aspects in reviews
Product Review Analysis
Extract sentiment tendencies towards specific features like screen and battery from electronic product reviews
Helps manufacturers understand user satisfaction with various product components
Social Media Monitoring
Brand Reputation Monitoring
Analyze public sentiment towards different aspects of a brand on social media
Timely detection of negative public opinion and identification of specific issues
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