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Microtransquest En Zh Wiki

Developed by TransQuest
Cross-lingual Transformer-based translation quality estimation model supporting sentence-level and word-level quality prediction
Downloads 27
Release Time : 3/2/2022

Model Overview

TransQuest is a system that automatically evaluates translation quality without reference translations, supporting 15 language pairs with outstanding performance in WMT 2020 Quality Estimation tasks

Model Features

Multi-level Evaluation
Supports document-level, sentence-level, and word-level translation quality estimation
Dual-dimension Prediction
Simultaneously predicts post-editing effort (PE effort) and direct assessment score (DA score)
Multilingual Support
Provides pre-trained models for 15 language pairs, including common pairs like English-Chinese
State-of-the-art Performance
Outperformed existing solutions like OpenKiwi and DeepQuest in WMT 2020 evaluation

Model Capabilities

Machine translation quality scoring
Post-editing requirement prediction
Error word localization
Multilingual quality estimation

Use Cases

Translation Services
Engine Selection
Automatically filters the best translation when multiple engines are available
Improves translation workflow efficiency
Quality Alert
Warns end-users about machine translation content reliability
Reduces risks of using low-quality translations
Localization Process
Automated Quality Check
Determines whether translations can be published directly or require human intervention
Optimizes post-editing resource allocation
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