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Deberta V3 Base Zeroshot V2.0

Developed by MoritzLaurer
Zero-shot classification model based on DeBERTa-v3-base architecture, designed for text classification tasks without training data
Downloads 7,845
Release Time : 3/28/2024

Model Overview

This model is part of the zeroshot-v2.0 series, trained using business-friendly synthetic data and NLI datasets, capable of efficiently performing zero-shot classification tasks on both GPU and CPU.

Model Features

Business-friendly data training
Trained using synthetic data generated by Mixtral-8x7B-Instruct and business-friendly NLI datasets
Zero-shot classification capability
Performs text classification tasks without requiring training data
Multi-class support
Supports both single-label and multi-label classification modes
High performance
Outperforms the facebook/bart-large-mnli benchmark model on 28 text classification tasks

Model Capabilities

Text classification
Zero-shot inference
Multi-class prediction
Natural language understanding

Use Cases

Sentiment analysis
Product review classification
Automatically classify product reviews on e-commerce platforms as positive or negative
Achieved 0.937 F1 score on Amazon Polarity dataset
Movie review analysis
Identify sentiment tendencies in IMDB movie reviews
Achieved 0.893 F1 score on IMDB dataset
Content moderation
Toxic content detection
Identify hate speech, insults, and other toxic content in text
Achieved 0.759 F1 score on Wikipedia Toxic Insults dataset
Bias detection
Detect gender-biased content in text
Achieved 0.741 F1 score on Gender Bias Framework dataset
Financial analysis
Financial news classification
Classify sentiment of financial news (positive/neutral/negative)
Achieved 0.714 F1 score on Financial Phrasebank dataset
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