CLJul 18, 2023

Attention over pre-trained Sentence Embeddings for Long Document Classification

arXiv:2307.09084v13 citationsh-index: 8
Originality Incremental advance
AI Analysis

This addresses the problem of handling long documents efficiently for NLP practitioners, offering a simple and scalable method that is incremental over existing approaches.

The paper tackled long document classification by using pre-trained sentence embeddings combined with a small attention layer that scales linearly with document length, achieving competitive results on three standard datasets and showing better performance when freezing the underlying transformers.

Despite being the current de-facto models in most NLP tasks, transformers are often limited to short sequences due to their quadratic attention complexity on the number of tokens. Several attempts to address this issue were studied, either by reducing the cost of the self-attention computation or by modeling smaller sequences and combining them through a recurrence mechanism or using a new transformer model. In this paper, we suggest to take advantage of pre-trained sentence transformers to start from semantically meaningful embeddings of the individual sentences, and then combine them through a small attention layer that scales linearly with the document length. We report the results obtained by this simple architecture on three standard document classification datasets. When compared with the current state-of-the-art models using standard fine-tuning, the studied method obtains competitive results (even if there is no clear best model in this configuration). We also showcase that the studied architecture obtains better results when freezing the underlying transformers. A configuration that is useful when we need to avoid complete fine-tuning (e.g. when the same frozen transformer is shared by different applications). Finally, two additional experiments are provided to further evaluate the relevancy of the studied architecture over simpler baselines.

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