Bert Base Finetuned Squad2
A Q&A model based on bert-base-uncased architecture and fine-tuned on the SQuAD2.0 dataset, excelling at extracting answers from given text
Downloads 78
Release Time : 3/2/2022
Model Overview
This model is specifically designed for Q&A tasks, capable of answering user questions based on provided context, supporting both answerable and unanswerable scenarios
Model Features
SQuAD2.0 Fine-tuning
Specially fine-tuned on the SQuAD2.0 dataset, capable of handling both answerable and unanswerable scenarios
Precise Answer Extraction
Uses exact match and F1 score evaluation, achieving 70.4% exact match rate and 73.91% F1 score on the test set
Style Classification Method
Systematically applies style classification methods in art history research, particularly suitable for Q&A in art and archaeology fields
Model Capabilities
Text Understanding
Answer Extraction
Context Analysis
Unanswerable Detection
Use Cases
Education & Research
Art History Q&A
Answers questions about art history figures, schools, and works
Can accurately identify contributions of art historians like Winckelmann
Archaeology Q&A
Answers archaeology-related questions and concepts
Can identify key information such as founders of archaeology
Information Retrieval
Document Q&A
Extracts answers to specific questions from long documents
Supports context lengths of up to 384 tokens
Featured Recommended AI Models
Š 2025AIbase