Nli Deberta V3 Xsmall
A cross-encoder model trained on microsoft/deberta-v3-xsmall for natural language inference tasks, supporting contradiction, entailment, and neutral relationship judgments.
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Release Time : 3/16/2022
Model Overview
This model is a specialized cross-encoder for Natural Language Inference (NLI) tasks, capable of determining whether the relationship between two sentences is contradiction, entailment, or neutral. Based on the DeBERTa-v3-xsmall architecture, trained on SNLI and MultiNLI datasets.
Model Features
High Accuracy
Achieves 91.64% accuracy on SNLI test set and 87.77% accuracy on MNLI mismatched set.
Versatile Applications
Can be used for both natural language inference tasks and zero-shot classification tasks.
Lightweight Model
Based on the xsmall-scale DeBERTa-v3 architecture, reducing computational resource requirements while maintaining performance.
Model Capabilities
Natural Language Inference
Zero-shot classification
Sentence relation judgment
Use Cases
Text Analysis
Text Entailment Judgment
Determine whether there is an entailment relationship between two sentences.
Accurately identifies logical relationships between texts.
Contradiction Detection
Detect whether there is a contradiction between two statements.
Can be used in scenarios such as fact-checking.
Classification Tasks
Zero-shot Classification
Perform classification without domain-specific training data.
Suitable for rapid prototyping and multi-domain applications.
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