CTDGSI: A comprehensive exploitation of instance selection methods for automatic text classification. VII Concurso de Teses, Disserta\c{c}\~oes e Trabalhos de Gradua\c{c}\~ao em SI -- XXI Simp\'osio Brasileiro de Sistemas de Informa\c{c}\~ao
CTDGSI: A comprehensive exploitation of instance selection methods for automatic text classification. VII Concurso de Teses, Disserta\c{c}\~oes e Trabalhos de Gradua\c{c}\~ao em SI -- XXI Simp\'osio Brasileiro de Sistemas de Informa\c{c}\~ao
Progress in Natural Language Processing (NLP) has been dictated by the rule of more: more data, more computing power and more complexity, best exemplified by the Large Language Models. However, training (or fine-tuning) large dense models for specific applications usually requires significant amounts of computing resources. This \textbf{Ph.D. dissertation} focuses on an under-investi\-gated NLP data engineering technique, whose potential is enormous in the current scenario known as Instance Selection (IS). The IS goal is to reduce the training set size by removing noisy or redundant instances while maintaining the effectiveness of the trained models and reducing the training process cost. We provide a comprehensive and scientifically sound comparison of IS methods applied to an essential NLP task -- Automatic Text Classification (ATC), considering several classification solutions and many datasets. Our findings reveal a significant untapped potential for IS solutions. We also propose two novel IS solutions that are noise-oriented and redundancy-aware, specifically designed for large datasets and transformer architectures. Our final solution achieved an average reduction of 41\% in training sets, while maintaining the same levels of effectiveness in all datasets. Importantly, our solutions demonstrated speedup improvements of 1.67x (up to 2.46x), making them scalable for datasets with hundreds of thousands of documents.
Washington Cunha、Leonardo Rocha、Marcos André Gon?alves
10.5753/sbsi_estendido.2025.246733
计算技术、计算机技术
Washington Cunha,Leonardo Rocha,Marcos André Gon?alves.CTDGSI: A comprehensive exploitation of instance selection methods for automatic text classification. VII Concurso de Teses, Disserta\c{c}\~oes e Trabalhos de Gradua\c{c}\~ao em SI -- XXI Simp\'osio Brasileiro de Sistemas de Informa\c{c}\~ao[EB/OL].(2025-06-08)[2025-07-09].https://arxiv.org/abs/2506.07169.点此复制
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