Unsupervised document classification integrating web scraping, one-class SVM and LDA topic modelling

Unsupervised document classification for imbalanced data sets poses a major challenge. To obtain accurate classification results, training data sets are often created manually by humans which requires expert knowledge, time and money. Depending on the imbalance of the data set, this approach also ei...

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Veröffentlicht in:Journal of applied statistics 2023, Vol.50 (3), p.574-591
Hauptverfasser: Thielmann, Anton, Weisser, Christoph, Krenz, Astrid, Säfken, Benjamin
Format: Artikel
Sprache:eng
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Zusammenfassung:Unsupervised document classification for imbalanced data sets poses a major challenge. To obtain accurate classification results, training data sets are often created manually by humans which requires expert knowledge, time and money. Depending on the imbalance of the data set, this approach also either requires human labelling of all of the data or it fails to adequately recognize underrepresented categories. We propose an integration of web scraping, one-class Support Vector Machines (SVM) and Latent Dirichlet Allocation (LDA) topic modelling as a multi-step classification rule that circumvents manual labelling. Unsupervised one-class document classification with the integration of out-of-domain training data is achieved and >80% of the target data is correctly classified. The proposed method thus even outperforms common machine learning classifiers and is validated on multiple data sets.
ISSN:0266-4763
1360-0532
DOI:10.1080/02664763.2021.1919063