Machine Learning and Rule-based embedding techniques for classifying text documents
Journal article, Peer reviewed
Published version
Date
2024Metadata
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Original version
International Journal of System Assurance Engineering and Management. 2024. 10.1007/s13198-024-02555-wAbstract
Rapid expansion of electronic document archives and the proliferation of online information have made it incredibly difficult to categorize text documents. Classification helps in information retrieval from a conceptual framework. This study addresses the challenge of efficiently categorizing text documents amidst the vast electronic document landscape. Employing machine learning models and a novel document categorization method, W2vRule, we compare its performance with traditional methods. Emphasizing the importance of tuning hyperparameters for optimal performance, the research recommends the W2vRule, a word-to-vector rule-based framework, for improved association-based text classification. The study used the Reuters Newswire dataset. Findings show that W2vRule and machine learning can effectively tell apart important categories. Rule-based approaches perform better than Naive Bayes, BayesNet, Decision Tables, and others in terms of performance metrics.