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KAConvText: Novel Approach to Burmese Sentence Classification using Kolmogorov-Arnold Convolution

KAConvText: Novel Approach to Burmese Sentence Classification using Kolmogorov-Arnold Convolution

来源:Arxiv_logoArxiv
英文摘要

This paper presents the first application of Kolmogorov-Arnold Convolution for Text (KAConvText) in sentence classification, addressing three tasks: imbalanced binary hate speech detection, balanced multiclass news classification, and imbalanced multiclass ethnic language identification. We investigate various embedding configurations, comparing random to fastText embeddings in both static and fine-tuned settings, with embedding dimensions of 100 and 300 using CBOW and Skip-gram models. Baselines include standard CNNs and CNNs augmented with a Kolmogorov-Arnold Network (CNN-KAN). In addition, we investigated KAConvText with different classification heads - MLP and KAN, where using KAN head supports enhanced interpretability. Results show that KAConvText-MLP with fine-tuned fastText embeddings achieves the best performance of 91.23% accuracy (F1-score = 0.9109) for hate speech detection, 92.66% accuracy (F1-score = 0.9267) for news classification, and 99.82% accuracy (F1-score = 0.9982) for language identification.

Ye Kyaw Thu、Thura Aung、Thazin Myint Oo、Thepchai Supnithi

计算技术、计算机技术

Ye Kyaw Thu,Thura Aung,Thazin Myint Oo,Thepchai Supnithi.KAConvText: Novel Approach to Burmese Sentence Classification using Kolmogorov-Arnold Convolution[EB/OL].(2025-07-09)[2025-07-21].https://arxiv.org/abs/2507.06753.点此复制

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