A Survey on Stability of Learning with Limited Labelled Data and its Sensitivity to the Effects of Randomness
Branislav Pecher,
Ivan Srba,
Maria Bielikova
Abstract:Learning with limited labelled data, such as prompting, in-context learning, fine-tuning, meta-learning, or few-shot learning, aims to effectively train a model using only a small amount of labelled samples. However, these approaches have been observed to be excessively sensitive to the effects of uncontrolled randomness caused by non-determinism in the training process. The randomness negatively affects the stability of the models, leading to large variances in results across training runs. When such sensitiv… Show more
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