Nli Deberta V3 Xsmall
Cross-encoder model trained on microsoft/deberta-v3-xsmall for natural language inference tasks
Downloads 16.62k
Release Time : 3/2/2022
Model Overview
This model is trained using the CrossEncoder class from SentenceTransformers, specifically designed for Natural Language Inference (NLI) tasks, capable of determining the relationship between two sentences (contradiction, entailment, or neutral).
Model Features
Efficient Inference Capability
Based on the DeBERTa-v3-xsmall architecture, it maintains high accuracy while offering efficient inference performance
Multi-dataset Training
Jointly trained on two large natural language inference datasets: SNLI and MultiNLI
Zero-shot Classification Support
Can be directly used for zero-shot classification tasks without additional training
Model Capabilities
Natural Language Inference
Text Relation Judgment
Zero-shot Classification
Use Cases
Text Analysis
Contradiction Detection
Detects whether there is a contradiction between two sentences
Can be used in scenarios like fact-checking
Text Entailment Analysis
Determines whether one sentence entails the meaning of another
Can be used in question-answering systems, information retrieval, etc.
Classification Systems
Zero-shot Text Classification
Performs classification without domain-specific training data
Suitable for rapidly building classification systems
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