4.7 Article

ALBERT over Match-LSTM Network for Intelligent Questions Classification in Chinese

Journal

AGRONOMY-BASEL
Volume 11, Issue 8, Pages -

Publisher

MDPI
DOI: 10.3390/agronomy11081530

Keywords

ALBERT; match-LSTM; natural language processing; classification; NQuAD

Funding

  1. Beijing Municipal Committee of Science and Technology [Z191100004019007]
  2. China Agriculture Research System of MOF and MARA [CARS-23-C06]
  3. National Key Research and Development Program of China [2019YFD1101105]

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This paper introduces a short text classification method based on an ALBERT and match-LSTM model, which has been proven through experiments to achieve accurate classification in intelligent question answering and ensure the accuracy of information services. The model combines multiple technologies and employs techniques like batch normalization and Dropout to address overfitting issues, resulting in a classification accuracy of 96.8%.
This paper introduces a series of experiments with an ALBERT over match-LSTM network on the top of pre-trained word vectors, for accurate classification of intelligent question answering and thus the guarantee of precise information service. To improve the performance of data classification, a short text classification method based on an ALBERT and match-LSTM model was proposed to overcome the limitations of the classification process, such as few vocabularies, sparse features, large amount of data, lots of noise and poor normalization. In the model, Jieba word segmentation tools and agricultural dictionary were selected to text segmentation, GloVe algorithm was then adopted to expand the text characteristic and weighted word vector according to the text of key vector, bi-directional gated recurrent unit was applied to catch the context feature information and multi-convolutional neural networks were finally established to gain local multidimensional characteristics of text. Batch normalization, Dropout, Global Average Pooling and Global Max Pooling were utilized to solve overfitting problem. The results showed that the model could classify questions accurately, with a precision of 96.8%. Compared with other classification models, such as multi-SVM model and CNN model, ALBERT+match-LSTM had obvious advantages in classification performance in intelligent Agri-tech information service.

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