NJUxlj/bert-gpt2-ecommerce-review-ner

基于Bert+MoE+Qwen2拼接后的模型和LoRA微调的电商评论NER模型。使用transformers+deepspeed进行训练,swanlab进行监控。

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Experimental

This project helps e-commerce businesses automatically identify and extract key product-related information from customer reviews. It takes raw customer reviews as input and outputs structured data, highlighting entities like product names, brands, models, and other relevant terms. This allows product managers, marketing analysts, and customer service teams to quickly understand customer sentiment and product feedback.

No commits in the last 6 months.

Use this if you need to automatically extract specific pieces of information, such as product names or brands, from a large volume of e-commerce customer reviews.

Not ideal if your primary goal is to analyze general sentiment or topics in reviews, rather than extracting specific named entities.

e-commerce customer-feedback product-analysis review-mining natural-language-processing
No License Stale 6m No Package No Dependents
Maintenance 0 / 25
Adoption 4 / 25
Maturity 8 / 25
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Python

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Last pushed

Apr 01, 2025

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