The Impact of Data Preparation and Model Complexity on the Natural Language Classification of Chinese News Headlines

Author:

Wagner Torrey1,Guhl Dennis1,Langhals Brent1

Affiliation:

1. Data Analytics Certificate Program, Graduate School of Engineering and Management, Air Force Institute of Technology, Wright-Patterson AFB, OH 45433, USA

Abstract

Given the emergence of China as a political and economic power in the 21st century, there is increased interest in analyzing Chinese news articles to better understand developing trends in China. Because of the volume of the material, automating the categorization of Chinese-language news articles by headline text or titles can be an effective way to sort the articles into categories for efficient review. A 383,000-headline dataset labeled with 15 categories from the Toutiao website was evaluated via natural language processing to predict topic categories. The influence of six data preparation variations on the predictive accuracy of four algorithms was studied. The simplest model (Naïve Bayes) achieved 85.1% accuracy on a holdout dataset, while the most complex model (Neural Network using BERT) demonstrated 89.3% accuracy. The most useful data preparation steps were identified, and another goal examined the underlying complexity and computational costs of automating the categorization process. It was discovered the BERT model required 170x more time to train, was slower to predict by a factor of 18,600, and required 27x more disk space to save, indicating it may be the best choice for low-volume applications when the highest accuracy is needed. However, for larger-scale operations where a slight performance degradation is tolerated, the Naïve Bayes algorithm could be the best choice. Nearly one in four records in the Toutiao dataset are duplicates, and this is the first published analysis with duplicates removed.

Publisher

MDPI AG

Reference37 articles.

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3. Li, J., Wang, B., Ni, A.J., and Liu, Q. (2020, January 19–21). Text Mining Analysis on Users’ Reviews for News Aggregator Toutiao. Proceedings of the International Conference on Artificial Intelligence in Information and Communication, Fukuoka, Japan.

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