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STLM Engineering Report: Dropout

Authors :
Hillier, Dylan
Guertler, Leon
Cheng, Bobby
Tan, Cheston
Publication Year :
2024

Abstract

In this work we explore the relevance of dropout for modern language models, particularly in the context of models on the scale of <100M parameters. We explore it's relevance firstly in the regime of improving the sample efficiency of models given small, high quality datasets, and secondly in the regime of improving the quality of its fit on larger datasets where models may underfit. We find that concordant with conventional wisdom, dropout remains effective in the overfitting scenario, and that furthermore it may have some relevance for improving the fit of models even in the case of excess data, as suggested by previous research. In the process we find that the existing explanation for the mechanism behind this performance gain is not applicable in the case of language modelling.<br />Comment: 6 pages, 3 figures, For code base see https://github.com/LeonGuertler/SuperTinyLanguageModels

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2409.05423
Document Type :
Working Paper