Joint coordinate attention mechanism and instance normalization for COVID online comments text classification

Author:

Zhu Rong1,Gao Hua-Hui1,Wang Yong2

Affiliation:

1. School of Computer Science, Qufu Normal University, Rizhao, China

2. Laboratory Experimental Teaching and Equipment Management Center, Qufu Normal University, Rizhao, China

Abstract

Background The majority of extant methodologies for text classification prioritize the extraction of feature representations from texts with high degrees of distinction, a process that may result in computational inefficiencies. To address this limitation, the current study proposes a novel approach by directly leveraging label information to construct text representations. This integration aims to optimize the use of label data alongside textual content. Methods The methodology initiated with separate pre-processing of texts and labels, followed by encoding through a projection layer. This research then utilized a conventional self-attention model enhanced by instance normalization (IN) and Gaussian Error Linear Unit (GELU) functions to assess emotional valences in review texts. An advanced self-attention mechanism was further developed to enable the efficient integration of text and label information. In the final stage, an adaptive label encoder was employed to extract relevant label information from the combined text-label data efficiently. Results Empirical evaluations demonstrate that the proposed model achieves a significant improvement in classification performance, outperforming existing methodologies. This enhancement is quantitatively evidenced by its superior micro-F1 score, indicating the efficacy of integrating label information into text classification processes. This suggests that the model not only addresses computational inefficiencies but also enhances the accuracy of text classification.

Funder

The Shandong Social Science Planning Fund Program

Publisher

PeerJ

Reference36 articles.

1. Exploring the limits of simple learners in knowledge distillation for document classification with DocBERT;Adhikari,2020

2. Arabic text classification using k-nearest neighbour algorithm;Alhutaish;International Arab Journal of Information Technology,2015

3. Outpatient Text Classification System Using LSTM;Chen;Journal of Information Science and Engineering,2021

4. Very deep convolutional networks for text classification;Conneau,2016

5. Bert: pre-training of deep bidirectional transformers for language understanding;Devlin,2018

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