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Developed by TransQuest
A cross-lingual Transformer-based translation quality assessment system that won first place in the WMT 2020 sentence-level direct assessment task
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Release Time : 3/2/2022

Model Overview

A system capable of evaluating translation quality without reference translations, supporting both sentence-level and word-level quality predictions

Model Features

Cross-lingual Transformer Architecture
Utilizes cross-lingual Transformer for multilingual quality assessment
Dual-dimension Evaluation
Supports both post-editing effort prediction and direct assessment dimensions
Multi-level Evaluation
Provides document-level, sentence-level, and word-level quality assessment capabilities
Performance Advantage
Outperforms state-of-the-art methods like DeepQuest and OpenKiwi across all tested language pairs

Model Capabilities

Translation Quality Scoring
Post-editing Requirement Prediction
Word-level Error Identification
Multilingual Quality Assessment

Use Cases

Machine Translation Workflow
Multi-engine Translation Selection
Automatically selects the best translation when multiple engines are available
Improves translation workflow efficiency
Translation Quality Alert
Alerts end-users about the reliability of automated translations
Enhances user trust
Content Publishing Decisions
Automated Publishing Assessment
Determines whether translations can be published directly or require human editing
Reduces manual review costs
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