Roberta Large Winogrande
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Roberta Large Winogrande
Developed by DeepPavlov
This model is a RoBERTa Large model fine-tuned on the Winogrande-XL dataset for sequence classification tasks, specifically optimized for fill-in-the-blank reasoning problems.
Downloads 836
Release Time : 3/2/2022
Model Overview
This model reconstructs the Winogrande dataset by transforming original paired sentences and their fill-in-the-blank options into independent samples for classification training, suitable for text classification scenarios requiring logical reasoning.
Model Features
Winogrande Dataset Fine-tuning
Specifically optimized for the Winogrande-XL dataset, enhancing the model's ability to handle fill-in-the-blank reasoning problems.
Data Reconstruction Strategy
Splits original paired sentences and options into independent samples, improving the model's classification capability for individual text segments.
RoBERTa Large Foundation
Based on the powerful RoBERTa Large architecture, equipped with excellent text comprehension capabilities.
Model Capabilities
Fill-in-the-Blank Reasoning
Text Classification
Logical Relation Judgment
Use Cases
Educational Assessment
Language Understanding Test
Used to evaluate students' understanding of logical relationships in sentences.
AI Competitions
Winograd Schema Challenge
Participate in AI competitions requiring common sense reasoning.
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