MN-DS: A Multilabeled News Dataset for News Articles Hierarchical Classification
This provides a resource for researchers working on news structuring and classification, but it is incremental as it offers a new dataset without methodological advances.
The authors introduced MN-DS, a dataset of 10,917 news articles from 2019, manually labeled with hierarchical categories (17 first-level and 109 second-level), to train machine learning models for news classification.
This article presents a dataset of 10,917 news articles with hierarchical news categories collected between 1 January 2019 and 31 December 2019. We manually labeled the articles based on a hierarchical taxonomy with 17 first-level and 109 second-level categories. This dataset can be used to train machine learning models for automatically classifying news articles by topic. This dataset can be helpful for researchers working on news structuring, classification, and predicting future events based on released news.