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Poster

Credibility-Aware Multimodal Fusion Using Probabilistic Circuits

Sahil Sidheekh · Pranuthi Tenali · Saurabh Mathur · Erik Blasch · Kristian Kersting · Sriraam Natarajan

Hall A-E 62

Abstract:

We consider the problem of late multimodal fusion for discriminative learning. Motivated by noisy, multi-source domains that require understanding the reliability of each data source, we explore the notion of credibility in the context of multimodal fusion. We propose a combination function that uses probabilistic circuits (PCs) to combine predictive distributions over individual modalities. We also define a probabilistic measure to evaluate the credibility of each modality via inference queries over the PC. Our experimental evaluation demonstrates that our fusion method can reliably infer credibility while being competitive with the state-of-the-art.

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