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SotA/Natural Language Processing/Word Sense Disambiguation/RUSSE

Word Sense Disambiguation on RUSSE

Metric: Accuracy (higher is better)

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#Model↕Accuracy▼Extra DataPaperDate↕Code
1Human Benchmark0.805NoRussianSuperGLUE: A Russian Language Understandi...2020-10-29Code
2ruT5-large-finetune0.735No---
3RuBERT conversational0.729No---
4RuBERT plain0.726No---
5ruRoberta-large finetune0.715No---
6ruBert-base finetune0.706No---
7Multilingual Bert0.69No---
8ruT5-base-finetune0.682No---
9ruBert-large finetune0.682No---
10SBERT_Large_mt_ru_finetuning0.657No---
11SBERT_Large0.654No---
12RuGPT3Large0.647No---
13RuGPT3Medium0.642No---
14MT5 Large0.633No---
15heuristic majority0.595NoUnreasonable Effectiveness of Rule-Based Heurist...2021-05-03-
16Golden Transformer0.587No---
17YaLM 1.0B few-shot0.587No---
18majority_class0.587NoUnreasonable Effectiveness of Rule-Based Heurist...2021-05-03-
19RuGPT3Small0.57No---
20Baseline TF-IDF1.10.57NoRussianSuperGLUE: A Russian Language Understandi...2020-10-29Code
21RuGPT3XL few-shot0.565No---
22Random weighted0.528NoUnreasonable Effectiveness of Rule-Based Heurist...2021-05-03-