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Deberta V3 Small Finetuned Mnli

Developed by mrm8488
A small version of DeBERTa v3 fine-tuned on the GLUE MNLI dataset for natural language inference tasks, with an accuracy of 87.46%
Downloads 139
Release Time : 3/2/2022

Model Overview

This model is a small version of DeBERTa v3 fine-tuned on the MNLI dataset, specifically designed for text entailment classification tasks. It can determine the logical relationship (entailment/contradiction/neutral) between two sentences.

Model Features

Decoupled attention mechanism
Adopts an innovative decoupled attention mechanism to improve the traditional Transformer architecture
Enhanced masked decoder
Uses an enhanced masked decoder to improve model performance
Efficient training
Compared with the V2 version, V3 uses the RTD objective for more efficient pre-training
Small-scale design
6-layer network structure, suitable for deployment in resource-constrained environments

Model Capabilities

Text classification
Natural language inference
Sentence relationship analysis

Use Cases

Natural language processing
Text entailment judgment
Determine whether there is an entailment relationship between two sentences
Achieved 87.46% accuracy on the MNLI test set
Contradiction detection
Identify contradictory statements in the text
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