DF-DM: A foundational process model for multimodal data fusion in the artificial intelligence era
David Restrepo, Chenwei Wu, Constanza V\'asquez-Venegas, Luis Filipe, Nakayama, Leo Anthony Celi, Diego M L\'opez

TL;DR
This paper presents DF-DM, a process model for multimodal data fusion in AI, combining existing frameworks with novel embedding techniques to improve efficiency, reduce bias, and enhance predictive performance across various applications.
Contribution
It introduces a new process model integrating data fusion and data mining with a novel embedding fusion method called disentangled dense fusion.
Findings
Achieved 0.92 Macro F1 in diabetic retinopathy prediction.
Attained R-squared of 0.854 in domestic violence prediction.
Secured macro AUC of 0.92 in radiological disease classification.
Abstract
In the big data era, integrating diverse data modalities poses significant challenges, particularly in complex fields like healthcare. This paper introduces a new process model for multimodal Data Fusion for Data Mining, integrating embeddings and the Cross-Industry Standard Process for Data Mining with the existing Data Fusion Information Group model. Our model aims to decrease computational costs, complexity, and bias while improving efficiency and reliability. We also propose "disentangled dense fusion", a novel embedding fusion method designed to optimize mutual information and facilitate dense inter-modality feature interaction, thereby minimizing redundant information. We demonstrate the model's efficacy through three use cases: predicting diabetic retinopathy using retinal images and patient metadata, domestic violence prediction employing satellite imagery, internet, and…
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Taxonomy
TopicsSemantic Web and Ontologies
