Challenge: Masked language modeling (MLM) is widely used in natural language processing for self-supervised learning of text representations.
Approach: They propose to use token-level classification tasks as main pretraining objectives instead of Masked language modeling (MLM) . Empirical results show that pretraining a model with 41% of the BERT-BASE’s parameters, BERT MEDIUM results in only a 1% drop in GLUE scores with their best objective.
Outcome: Empirical results show that the proposed methods achieve comparable or better performance to MLM using a BERT-BASE architecture.

Similar Papers

How does the task complexity of masked pretraining objectives affect downstream performance? (2023.findings-acl)

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Challenge: Masked language modeling (MLM) is a widely used self-supervised pretraining objective.
Approach: They propose to use a mask-based objective to predict a token that is replaced with a masked token given its context.
Outcome: The proposed objectives show that they should have half the complexity needed to perform comparably to MLM.
To Pretrain or Not to Pretrain: Examining the Benefits of Pretrainng on Resource Rich Tasks (2020.acl-main)

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Challenge: Existing studies on pretraining NLP models with variants of Masked Language Model (MLM) objectives have shown that the number of training samples used in the downstream task is limited.
Approach: They propose to use MLM objectives to pretrain NLP models with variants of Masked Language Model (MLM) objectives to improve accuracy on downstream tasks.
Outcome: The proposed model can reach a diminishing return point as the supervised data size increases significantly.
Efficient Pre-training of Masked Language Model via Concept-based Curriculum Masking (2022.emnlp-main)

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Challenge: Masked language modeling (MLM) has been widely used for pre-training effective bidirectional representations but comes at a substantial training cost.
Approach: They propose a concept-based curriculum masking method that evaluates the MLM difficulty of each token based on a carefully-designed linguistic difficulty criterion.
Outcome: The proposed method significantly improves pre-training efficiency with the original BERT model at half the training cost.
Mask More and Mask Later: Efficient Pre-training of Masked Language Models by Disentangling the [MASK] Token (2022.findings-emnlp)

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Challenge: Large-scale pre-trained MLMs can be used to generalize well to a wide range of tasks.
Approach: They propose to append [MASK]s at a later layer to reduce sequence length for earlier layers.
Outcome: The proposed method outperforms RoBERTa for 6 out of 8 GLUE tasks on average by 0.4%.
Masked Latent Semantic Modeling: an Efficient Pre-training Alternative to Masked Language Modeling (2023.findings-acl)

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Challenge: a recent study suggests that masked language models are a useful pre-training technique for natural language processing . a study using mlms pre-trained by a team of researchers has improved performance .
Approach: They propose an alternative to the classic masked language modeling paradigm . they use an unsupervised technique which uses sparse coding to make the prediction possible .
Outcome: The proposed technique improves on pre-trained models compared to vanilla MLM . the proposed model returns distributions over their vocabulary peaking at plausible substitutes .
Improving Pretraining Techniques for Code-Switched NLP (2023.acl-long)

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Challenge: Multilingual pretraining models for code-switched inputs are a key component of NLP applications.
Approach: They propose to use masked language modeling techniques to mask code-switched text that are cognizant of language boundaries prior to masking.
Outcome: The proposed techniques improve performance on two downstream tasks, Question Answering (QA) and Sentiment Analysis (SA), compared to standard pretraining techniques.
Self-Evolution Learning for Discriminative Language Model Pretraining (2023.findings-acl)

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Challenge: Random masking does not consider the importance of the different words in the sentence meaning, e.g., entity-level masking requires expensive prior knowledge and generally does not use existing model weights.
Approach: They propose a token masking and learning method that uses a random masking strategy to learn the under-explored tokens.
Outcome: The proposed method improves linguistic knowledge learning and generalization on 10 tasks.
How does the pre-training objective affect what large language models learn about linguistic properties? (2022.acl-short)

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Challenge: Several pre-training objectives have been proposed to pre-train language models . but, to our knowledge, no studies have investigated how different pre- training objectives affect what BERT learns about linguistic properties.
Approach: They propose to use masked language modeling to pre-train language models . they propose to optimize a mangled language modeling objective to learn linguistic information .
Outcome: The proposed objectives improve BERT's learning of linguistic properties compared to non-linguistically motivated objectives.
Masking as an Efficient Alternative to Finetuning for Pretrained Language Models (2020.emnlp-main)

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Challenge: Extensive evaluations of masking BERT, RoBERTa, and DistilBERT on eleven diverse NLP tasks show that our binary masked language models encode information necessary for solving downstream tasks.
Approach: They propose an efficient method of utilizing pretrained language models where selective binary masks are learned instead of finetuning.
Outcome: Extensive evaluations of masking BERT, RoBERTa, and DistilBERT on eleven diverse NLP tasks show that the proposed method yields comparable performance to finetuning, but has a much smaller memory footprint when multiple tasks need to be solved.
ERNIE-Gram: Pre-Training with Explicitly N-Gram Masked Language Modeling for Natural Language Understanding (2021.naacl-main)

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Challenge: Existing methods to model coarse-grained linguistic information do not integrate coarse-gram information into pre-training.
Approach: They propose an explicitly n-gram masking method to enhance integration of coarse-grained linguistic information into pre-training.
Outcome: The proposed method outperforms existing models on English and Chinese text corpora and fine-tunes on 19 downstream tasks.

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