
		<paper>
			<loc>https://jjcit.org/paper/295</loc>
			<title>ABPC-NET: A CAPSULE-GUIDED HYBRID FRAMEWORK FOR ROBUST ARABIC-TEXT CLASSIFICATION</title>
			<doi>10.5455/jjcit.71-1772880018</doi>
			<authors>Baqer M. Merzah,Jafar Razmara</authors>
			<keywords>Arabic text classification,Deep learning,Transformer models,Capsule networks,Natural-language processing (NLP)</keywords>
			<views>40</views>
			<downloads>11</downloads>
			<received_date>7-Mar.-2026</received_date>
			<revised_date>  18-Apr.-2026, 10-May-2026 and 16-May-2026</revised_date>
			<accepted_date> 29-May-2026</accepted_date>
			<abstract>Arabic Text Classification (ATC) remains challenging due to the Arabic language's morphological richness and 
semantic complexity. This paper proposes ABPC-Net, a hybrid framework integrating a frozen Arabic 
Transformer encoder, a Bidirectional LSTM, parallel multi-scale CNN branches and a lightweight capsule-
inspired vector projection head for hierarchical feature integration. Evaluated on the SANAD dataset and its 
subsets (AlArabiya, AlKhaleej and Akhbarona) over five independent runs, ABPC-Net achieves mean accuracies 
of 97.00±0.04%, 99.14±0.10%, 98.40±0.10% and 95.59±0.12%, respectively. Under identical experimental 
conditions, the proposed framework consistently outperforms re-implemented frozen and fully fine-tuned 
AraBERT and MARBERT baselines. Cross-dataset evaluation on BBC Arabic and CNN Arabic further provides 
evidence of intra-domain transferability and rapid few-shot adaptability across Arabic news sources. The reported 
results are scoped to Modern Standard Arabic news classification.</abstract>
		</paper>


