Nli Deberta V3 Small
A cross-encoder model trained on microsoft/deberta-v3-small for natural language inference tasks, supporting contradiction, entailment, and neutral relationship judgments
Downloads 2,197
Release Time : 3/2/2022
Model Overview
This model is trained using the CrossEncoder class from SentenceTransformers, specifically designed for judging relationships between sentence pairs, applicable to natural language inference and zero-shot classification tasks.
Model Features
High-performance Natural Language Inference
Outstanding performance on SNLI and MultiNLI datasets, achieving accuracy rates of 91.65 and 87.55 respectively
Zero-shot Classification Capability
Can be used for zero-shot classification tasks without domain-specific training
Dual-sentence Relationship Analysis
Optimized specifically for judging relationships between sentence pairs, accurately identifying contradiction, entailment, and neutral relationships
Model Capabilities
Natural Language Inference
Zero-shot classification
Sentence relationship analysis
Text similarity judgment
Use Cases
Text Analysis
QA System Validation
Validating logical relationships between questions and candidate answers
Can accurately determine whether answers entail the required information from questions
Content Moderation
Detecting consistency between user-generated content and platform rules
Identifying conflicting relationships between inappropriate content and rules
Intelligent Customer Service
Intent Recognition
Matching user queries with predefined intent categories
Achieves high-accuracy intent classification without training
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