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A machine translation reading list maintained by Tsinghua Natural Language Processing Group

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Machine Translation Reading List

This is a machine translation reading list maintained by the Tsinghua Natural Language Processing Group.

The past three decades have witnessed the rapid development of machine translation, especially for data-driven approaches such as statistical machine translation (SMT) and neural machine translation (NMT). Due to the dominance of NMT at the present time, priority is given to collecting important, up-to-date NMT papers. The list is still incomplete and the categorization might be inappropriate. We will keep adding papers and improving the list. Any suggestions are welcome!

10 Must Reads

Statistical Machine Translation

Tutorials

Word-based Models

Phrase-based Models

Syntax-based Models

Discriminative Training

System Combination

Evaluation

Neural Machine Translation

Tutorials

Model Architecture

Attention Mechanism

Open Vocabulary and Character-based NMT

Training Objectives and Frameworks

Decoding

Low-resource Language Translation

Semi-supervised Methods

Unsupervised Methods

Pivot-based Methods

Data Augmentation Methods

Data Selection Methods

Transfer Learning & Multi-Task Learning Methods

Meta Learning Methods

Multilingual Language Translation

Prior Knowledge Integration

Word/Phrase Constraints

Syntactic/Semantic Constraints

Coverage Constraints

Document-level Translation

Robustness

Visualization and Interpretability

Fairness and Diversity

Efficiency

Pre-Training

Speech Translation and Simultaneous Translation

Multi-modality

Domain Adaptation

Quality Estimation

Automatic Post-Editing

Word Translation and Bilingual Lexicon Induction

Poetry Translation

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A machine translation reading list maintained by Tsinghua Natural Language Processing Group

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