IRCLLGApr 21, 2020

Investigating the Effectiveness of Representations Based on Pretrained Transformer-based Language Models in Active Learning for Labelling Text Datasets

arXiv:2004.13138v119 citations
Originality Incremental advance
AI Analysis

This addresses the problem of reducing labeling effort in text datasets for NLP practitioners, though it is incremental as it applies existing transformer models to active learning.

The paper investigates whether pretrained transformer-based language models (like BERT) improve active learning for text labeling compared to traditional representations like bag-of-words or word2vec, finding that BERT-like models achieve significant improvements, and proposes an adaptive tuning method that uses limited labels to enhance embeddings.

Active learning has been shown to be an effective way to alleviate some of the effort required in utilising large collections of unlabelled data for machine learning tasks without needing to fully label them. The representation mechanism used to represent text documents when performing active learning, however, has a significant influence on how effective the process will be. While simple vector representations such as bag-of-words and embedding-based representations based on techniques such as word2vec have been shown to be an effective way to represent documents during active learning, the emergence of representation mechanisms based on the pre-trained transformer-based neural network models popular in natural language processing research (e.g. BERT) offer a promising, and as yet not fully explored, alternative. This paper describes a comprehensive evaluation of the effectiveness of representations based on pre-trained transformer-based language models for active learning. This evaluation shows that transformer-based models, especially BERT-like models, that have not yet been widely used in active learning, achieve a significant improvement over more commonly used vector representations like bag-of-words or other classical word embeddings like word2vec. This paper also investigates the effectiveness of representations based on variants of BERT such as Roberta, Albert as well as comparing the effectiveness of the [CLS] token representation and the aggregated representation that can be generated using BERT-like models. Finally, we propose an approach Adaptive Tuning Active Learning. Our experiments show that the limited label information acquired in active learning can not only be used for training a classifier but can also adaptively improve the embeddings generated by the BERT-like language models as well.

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