PeerJ Computer Science (Jun 2024)

Double-target self-supervised clustering with multi-feature fusion for medical question texts

  • Xifeng Shen,
  • Yuanyuan Sun,
  • Chunxia Zhang,
  • Cheng Yang,
  • Yi Qin,
  • Weining Zhang,
  • Jiale Nan,
  • Meiling Che,
  • Dongping Gao

DOI
https://doi.org/10.7717/peerj-cs.2075
Journal volume & issue
Vol. 10
p. e2075

Abstract

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Background To make the question text represent more information and construct an end-to-end text clustering model, we propose a double-target self-supervised clustering with multi-feature fusion (MF-DSC) for texts which describe questions related to the medical field. Since medical question-and-answer data are unstructured texts and characterized by short characters and irregular language use, the features extracted by a single model cannot fully characterize the text content. Methods Firstly, word weights were obtained based on term frequency, and word vectors were generated according to lexical semantic information. Then we fused term frequency and lexical semantics to obtain weighted word vectors, which were used as input to the model for deep learning. Meanwhile, a self-attention mechanism was introduced to calculate the weight of each word in the question text, i.e., the interactions between words. To learn fusing cross-document topic features and build an end-to-end text clustering model, two target functions, L cluster and L topic, were constructed and integrated to a unified clustering framework, which also helped to learn a friendly representation that facilitates text clustering. After that, we conducted comparison experiments with five other models to verify the effectiveness of MF-DSC. Results The MF-DSC outperformed other models in normalized mutual information (NMI), adjusted Rand indicator (ARI) average clustering accuracy (ACC) and F1 with 0.4346, 0.4934, 0.8649 and 0.5737, respectively.

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