Meta Learning Paper supplemental code
URL: https://github.com/usnistgov/NIST-AI-Meta-Learning-LLM
Meta learning with LLM: supplemental code for reproducibility of computational results for MLT and MLT-plus-TM. Related research paper: "META LEARNING WITH LANGUAGE MODELS: CHALLENGES AND OPPORTUNITIES IN THE CLASSIFICATION OF IMBALANCED TEXT", A. Vassilev, H. Jin, M. Hasan, 2023 (to appear on arXiv).All code and data is contained in the zip archive arxiv2023.zip, subject to the licensing terms shown below. See the Readme.txt contained there for detailed explanation how to unpack and run the code. See also requirements.txt for the necessary depedencies (libraries needed).
Source: Meta Learning Paper Supplemental Code
About this Resource
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| Name | Meta Learning Paper supplemental code |
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| Created | 3 years ago |
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| metadata modified | 3 years ago |
| package id | 52837703-d2c1-47f6-a2f8-b5acc945ea74 |
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