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Autori principali: Hiwarkhedkar, Sharayu, Mittal, Saloni, Magdum, Vidula, Dhekane, Omkar, Joshi, Raviraj, Kale, Geetanjali, Ladkat, Arnav
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2404.18228
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author Hiwarkhedkar, Sharayu
Mittal, Saloni
Magdum, Vidula
Dhekane, Omkar
Joshi, Raviraj
Kale, Geetanjali
Ladkat, Arnav
author_facet Hiwarkhedkar, Sharayu
Mittal, Saloni
Magdum, Vidula
Dhekane, Omkar
Joshi, Raviraj
Kale, Geetanjali
Ladkat, Arnav
contents For green AI, it is crucial to measure and reduce the carbon footprint emitted during the training of large language models. In NLP, performing pre-training on Transformer models requires significant computational resources. This pre-training involves using a large amount of text data to gain prior knowledge for performing downstream tasks. Thus, it is important that we select the correct data in the form of domain-specific data from this vast corpus to achieve optimum results aligned with our domain-specific tasks. While training on large unsupervised data is expensive, it can be optimized by performing a data selection step before pretraining. Selecting important data reduces the space overhead and the substantial amount of time required to pre-train the model while maintaining constant accuracy. We investigate the existing selection strategies and propose our own domain-adaptive data selection method - TextGram - that effectively selects essential data from large corpora. We compare and evaluate the results of finetuned models for text classification task with and without data selection. We show that the proposed strategy works better compared to other selection methods.
format Preprint
id arxiv_https___arxiv_org_abs_2404_18228
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle TextGram: Towards a better domain-adaptive pretraining
Hiwarkhedkar, Sharayu
Mittal, Saloni
Magdum, Vidula
Dhekane, Omkar
Joshi, Raviraj
Kale, Geetanjali
Ladkat, Arnav
Computation and Language
Machine Learning
For green AI, it is crucial to measure and reduce the carbon footprint emitted during the training of large language models. In NLP, performing pre-training on Transformer models requires significant computational resources. This pre-training involves using a large amount of text data to gain prior knowledge for performing downstream tasks. Thus, it is important that we select the correct data in the form of domain-specific data from this vast corpus to achieve optimum results aligned with our domain-specific tasks. While training on large unsupervised data is expensive, it can be optimized by performing a data selection step before pretraining. Selecting important data reduces the space overhead and the substantial amount of time required to pre-train the model while maintaining constant accuracy. We investigate the existing selection strategies and propose our own domain-adaptive data selection method - TextGram - that effectively selects essential data from large corpora. We compare and evaluate the results of finetuned models for text classification task with and without data selection. We show that the proposed strategy works better compared to other selection methods.
title TextGram: Towards a better domain-adaptive pretraining
topic Computation and Language
Machine Learning
url https://arxiv.org/abs/2404.18228