1. |
Borenstein M, Hedges LV, Higgins JPT, et al. Introduction to meta-analysis. Hoboken: Wiley, 2009.
|
2. |
|
3. |
|
4. |
|
5. |
|
6. |
|
7. |
|
8. |
|
9. |
Feng H, Du S, Zhu G, et al. Leveraging large language models for automated Chinese essay scoring. Cham: Springer, 2024.
|
10. |
|
11. |
Huang H, Tang T, Zhang D, et al. Not all languages are created equal in LLMs: improving multilingual capability by cross-lingual-thought prompting. 2023.
|
12. |
Tian S, Qianzi C, Ning L, et al. The distribution pattern of symptoms among different variants of COVID-19. 2023.
|
13. |
Safary Official. Safary - streamlining automation for all systematic reviews and analysis. 2024.
|
14. |
|
15. |
|
16. |
|
17. |
Zhai X, Nyaaba M, Ma W. Can generative AI and ChatGPT outperform humans on cognitive-demanding problem-solving tasks in science? Sci Educ (Dordr), 2024.
|
18. |
Christopher JR, Martin R, Julia B, et al. Using a large language model (ChatGPT) to assess risk of bias in randomized controlled trials of medical interventions: protocol for a pilot study of interrater agreement with human reviewers. 2023.
|
19. |
|
20. |
|
21. |
Ho N, Schmid L, Yun SY. Large language models are reasoning teachers. Proceedings of the 61st Annual Meeting of the Association for Computational Linguistics. 2023.
|
22. |
Ranganath K, Piyush K, Omesh T. Enhancing trust in large language models with uncertainty-aware fine-tuning. The Thirteenth International Conference on Learning Representations. 2024.
|
23. |
Zhang J, Muhamed A, Anantharaman A, et al. ReAugKD: retrieval-augmented knowledge distillation for pre-trained language models. Proceedings of the 61st Annual Meeting of the Association for Computational Linguistics. 2023.
|
24. |
Zhang S, Liang Y, Wang S, et al. Towards understanding and improving knowledge distillation for neural machine translation. Proceedings of the 61st Annual Meeting of the Association for Computational Linguistics. 2023.
|
25. |
Ortega L. Understanding second language acquisition. 2014.
|
26. |
|
27. |
|
28. |
Clark K, Khandelwal U, Levy O, et al. What does bert look at? An analysis of BERT’s attention. 2019.
|