Wspalign Mbert Base
WSPAlign is a weakly supervised span prediction-based word alignment pretraining model that supports word alignment tasks between multiple languages.
Downloads 200
Release Time : 8/3/2023
Model Overview
This model is primarily used for multilingual word alignment tasks, capable of identifying corresponding relationships between words or phrases in texts of different languages.
Model Features
Multilingual Support
Supports word alignment for multiple languages including English, German, French, Chinese, Japanese, and Romanian.
Weakly Supervised Learning
Utilizes large-scale weakly supervised methods for pretraining, reducing reliance on annotated data.
Span Prediction
Based on a span prediction architecture, enabling more accurate identification of word alignment relationships.
Model Capabilities
Multilingual Word Alignment
Translation Pair Analysis
Cross-lingual Information Retrieval
Use Cases
Machine Translation
Translation Quality Assessment
Evaluating translation quality through word alignment analysis
Linguistic Research
Cross-lingual Comparative Analysis
Studying lexical correspondence relationships between different languages
Featured Recommended AI Models
ยฉ 2025AIbase