Fine-Tune BERT to Classify Text Data in MATLAB

This example shows how to fine-tune a pretrained BERT model for performing text classification.

https://github.com/matlab-deep-learning/fine-tune-BERT-classification

Al momento, stai seguendo questo contributo

Fine-Tune BERT to Classify Text Data in MATLAB®

Getting started

This example shows how to fine-tune a pretrained BERT model for performing text classification.

Overview

In this example, you modify a pretrained BERT model for text classification. First, add new layers for classification. Then, retrain the model to fine-tune it, using the original parameters as a starting point. It includes three steps:

  1. Preprocess text data and initialize BERT model
  2. Set up and train the network
  3. Test the model

This example shows the steps for fine-tuning BERT in detail. An alternative approach for document classification using BERT is to use trainBERTDocumentClassifier function.

Setup

Clone the repository into a local directory. Open the example script "FineTuning_BERT_for_Classification.mlx".

The example requires data to run. To download the data: :

Required Products

  • MATLAB (R2024a or later)
  • Text Analytics Toolbox™ (R2024a or later)
  • Deep Learning Toolbox™ (R2024a or later)

Contact

Sohini Sarkar, ssarkar@mathworks.com

License

The license is available in license.txt file in this GitHub repository.

Community Support

MATLAB Central

Copyright 2024, The MathWorks, Inc.

Cita come

Sohini Sarkar (2026). Fine-Tune BERT to Classify Text Data in MATLAB (https://github.com/matlab-deep-learning/fine-tune-BERT-classification/releases/tag/v1.0), GitHub. Recuperato .

Add the first tag.

Informazioni generali

Compatibilità della release di MATLAB

  • Compatibile con qualsiasi release

Compatibilità della piattaforma

  • Windows
  • macOS
  • Linux
Versione Pubblicato Note della release Action
1.0

Per visualizzare o segnalare problemi su questo componente aggiuntivo di GitHub, visita GitHub Repository.
Per visualizzare o segnalare problemi su questo componente aggiuntivo di GitHub, visita GitHub Repository.