Towards Better Representations for Multi-Label Text Classification with Multi-granularity Information.

EMNLP 2023(2023)

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摘要
Multi-label text classification (MLTC) aims to assign multiple labels to a given text. Previous works have focused on text representation learning and label correlations modeling using pre-trained language models (PLMs). However, studies have shown that PLMs generate word frequency-oriented text representations, causing texts with different labels to be closely distributed in a narrow region, which is difficult to classify. To address this, we present a novel framework $\textbf{CL}$($\underline{C}$ontrastive $\underline{L}$earning)-$\textbf{MIL}$ ($\underline{M}$ulti-granularity $\underline{I}$nformation $\underline{L}$earning) to refine the text representation for MLTC task. We first use contrastive learning to generate uniform initial text representation and incorporate label frequency implicitly. Then, we design a multi-task learning module to integrate multi-granularity (diverse text-labels correlations, label-label relations and label frequency) information into text representations, enhancing their discriminative ability. Experimental results demonstrate the complementarity of the modules in CL-MIL, improving the quality of text representations and yielding stable and competitive improvements for MLTC.
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