2024
DOI: 10.1371/journal.pone.0311041
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A multi-layer perceptron neural network for varied conditional attributes in tabular dispersed data

Małgorzata Przybyła-Kasperek,
Kwabena Frimpong Marfo

Abstract: The paper introduces a novel approach for constructing a global model utilizing multilayer perceptron (MLP) neural networks and dispersed data sources. These dispersed data are independently gathered in various local tables, each potentially containing different objects and attributes, albeit with some shared elements (objects and attributes). Our approach involves the development of local models based on these local tables imputed with some artificial objects. Subsequently, local models are aggregated using w… Show more

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