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Emanuals RoBERTa

Developed by abhi1nandy2
A RoBERTa-based multi-task learning framework designed for QA systems in electronic manual-style instructional texts
Downloads 432
Release Time : 3/2/2022

Model Overview

This model is built upon pre-trained RoBERTa using a supervised multi-task learning framework, capable of simultaneously locating answer chapters in manuals and identifying precise answer spans, significantly improving QA accuracy for electronic device manuals

Model Features

Multi-task Learning Framework
Simultaneously performs chapter localization and answer span extraction to enhance QA efficiency
Large-scale Professional Corpus
Pre-trained on 307,957 real electronic manuals for improved domain adaptation
Significant Performance Boost
Achieves ~40% ROUGE-L F1 score improvement over baselines in electronic manual QA tasks

Model Capabilities

Electronic device manual QA
Technical document comprehension
Instructional text analysis
Multi-level answer localization

Use Cases

Customer Support
Device Troubleshooting
Automatically locates solutions in device manuals based on natural language user queries
Reduces manual support workload and improves response speed
Knowledge Management
Technical Document Retrieval
Rapidly extracts precise answer spans from massive electronic manuals
Enhances technical document utilization
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