BERT Review
B
BERT Review
Developed by activebus
A post-trained BERT model based on review corpora, focusing on understanding sentiment, options, and various e-commerce-related dimensions
Downloads 484
Release Time : 3/2/2022
Model Overview
This model is a cross-domain language model post-trained with randomly mixed domain samples, suitable for understanding sentiment and e-commerce-related dimensions in reviews.
Model Features
Cross-domain adaptability
Trained with mixed review data from different domains, enhancing performance in cross-domain tasks
Sentiment understanding
Specially optimized for understanding sentiment and e-commerce-related dimensions in reviews
Large-scale training data
Utilized 22GB of Amazon and Yelp review data for post-training
Model Capabilities
Text sentiment analysis
Aspect extraction
Cross-domain sentiment classification
Review understanding
Use Cases
E-commerce analysis
Product review sentiment analysis
Analyze users' sentiment tendencies towards products
Outperforms domain-specific models in cross-domain tasks
Aspect extraction
Identify specific product aspects discussed in reviews
Comparable performance to BERT-DK
Restaurant reviews
Restaurant review analysis
Analyze restaurant evaluations on platforms like Yelp
Effectively understands evaluation dimensions in the food service domain
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