In this paper, we propose and experimentally assess an innovative framework for scaling posterior distributions over different-curation datasets, based on Bayesian-Neural-Networks (BNN). Another innovation of our proposed study consists in enhancing the accuracy of the Bayesian classifier via intelligent sampling algorithms. The proposed methodology is relevant in emerging applicative settings, such as provenance detection and analysis and cybercrime. Our contributions are complemented by a comprehensive experimental evaluation and analysis over both static and dynamic image datasets. Derived results confirm the successful application of our proposed methodology to emerging big data analytics settings.
A bayesian-neural-networks framework for scaling posterior distributions over different-curation datasets / Cuzzocrea, Alfredo; Baldo, Alessandro; Fadda, Edoardo. - In: JOURNAL OF INTELLIGENT INFORMATION SYSTEMS. - ISSN 0925-9902. - 62:(2024), pp. 951-969. [10.1007/s10844-023-00837-6]
A bayesian-neural-networks framework for scaling posterior distributions over different-curation datasets
Fadda, Edoardo
2024
Abstract
In this paper, we propose and experimentally assess an innovative framework for scaling posterior distributions over different-curation datasets, based on Bayesian-Neural-Networks (BNN). Another innovation of our proposed study consists in enhancing the accuracy of the Bayesian classifier via intelligent sampling algorithms. The proposed methodology is relevant in emerging applicative settings, such as provenance detection and analysis and cybercrime. Our contributions are complemented by a comprehensive experimental evaluation and analysis over both static and dynamic image datasets. Derived results confirm the successful application of our proposed methodology to emerging big data analytics settings.| File | Dimensione | Formato | |
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https://hdl.handle.net/11583/2990637
			
		
	
	
	
			      	