CLAILGJan 19, 2024

Critical Data Size of Language Models from a Grokking Perspective

arXiv:2401.10463v327 citations
AI Analysis

This provides insights into language model training dynamics, though it is incremental as it builds on existing grokking concepts.

The study investigates the critical data size in language models, identifying a threshold where training shifts from memorization to generalization, and finds that larger models require more data to reach this point.

We explore the critical data size in language models, a threshold that marks a fundamental shift from quick memorization to slow generalization. We formalize the phase transition under the grokking configuration into the Data Efficiency Hypothesis and identify data insufficiency, sufficiency, and surplus regimes in language models training dynamics. We develop a grokking configuration to reproduce grokking on simplistic language models stably by rescaling initialization and weight decay. We show that generalization occurs only when language models reach a critical size. We analyze grokking across sample-wise and model-wise, verifying the proposed data efficiency hypothesis. Our experiments reveal smoother phase transitions occurring at the critical dataset size for language datasets. As the model size increases, this critical point also becomes larger, indicating that larger models require more data. Our results deepen the understanding of language model training, offering a novel perspective on the role of data in the learning mechanism of language models.

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