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PreCog: Exploring the Relation between Memorization and Performance in Pre-trained Language Models

Published 8 May 2023 in cs.CL and cs.AI | (2305.04673v2)

Abstract: Pre-trained LLMs such as BERT are impressive machines with the ability to memorize, possibly generalized learning examples. We present here a small, focused contribution to the analysis of the interplay between memorization and performance of BERT in downstream tasks. We propose PreCog, a measure for evaluating memorization from pre-training, and we analyze its correlation with the BERT's performance. Our experiments show that highly memorized examples are better classified, suggesting memorization is an essential key to success for BERT.

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