News Classifier Litigation
A news classification model fine-tuned based on distilbert-base-uncased, focusing on the classification task of litigation-related news.
Downloads 22
Release Time : 8/3/2023
Model Overview
This model is a text classification model primarily used for classifying news texts, with a special focus on litigation-related news categories.
Model Features
Efficient and Lightweight
Based on the DistilBERT architecture, it reduces model size and computational requirements while maintaining high performance.
High Accuracy
Achieved a training accuracy of 99.44% on the validation set, demonstrating excellent performance.
Fast Convergence
Requires only 4 training epochs to achieve high performance, with high training efficiency.
Model Capabilities
News Text Classification
Litigation-related Text Recognition
English Text Processing
Use Cases
News Media
Automatic Classification of Litigation News
Automatically identify and classify litigation-related reports on news websites
Accuracy 99.44%
Legal Research
Legal Case Screening
Filter litigation-related cases from a large number of news articles
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