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TURNA: A Turkish Encoder-Decoder Language Model for Enhanced Understanding and Generation

About

The recent advances in natural language processing have predominantly favored well-resourced English-centric models, resulting in a significant gap with low-resource languages. In this work, we introduce the language model TURNA, which is developed for the low-resource language Turkish and is capable of both natural language understanding and generation tasks. TURNA is pretrained with an encoder-decoder architecture based on the unified framework UL2 with a diverse corpus that we specifically curated for this purpose. We evaluated TURNA with three generation tasks and five understanding tasks for Turkish. The results show that TURNA outperforms several multilingual models in both understanding and generation tasks, and competes with monolingual Turkish models in understanding tasks. TURNA is made available at https://huggingface.co/boun-tabi-LMG/TURNA .

G\"ok\c{c}e Uludo\u{g}an, Zeynep Yirmibe\c{s}o\u{g}lu Balal, Furkan Akkurt, Melik\c{s}ah T\"urker, Onur G\"ung\"or, Susan \"Usk\"udarl{\i}• 2024

Related benchmarks

TaskDatasetResultRank
Named Entity RecognitionWikiAnn
F1 Score91.54
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Text ClassificationTweet Sentiment
F1 Score76.76
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SummarizationMLSUM
ROUGE-144.33
6
Named Entity RecognitionMilliyet
Precision95.16
5
Natural Language InferenceNLI-TR
Precision88.28
5
POS TaggingBOUN
Precision92.39
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POS TaggingIMST
Precision94.66
5
Text ClassificationProduct Reviews
Precision95.57
5
Semantic Textual SimilaritySTSb-TR
Pearson Correlation0.7874
5
Text ClassificationTTC4900
Precision91.05
5
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