CoCoAFusE: Beyond Mixtures of Experts via Model Fusion
Aurelio Raffa Ugolini, Mara Tanelli, Valentina Breschi

TL;DR
CoCoAFusE is a Bayesian model that enhances Mixtures of Experts by fusing expert distributions, improving interpretability and uncertainty quantification in complex regression tasks.
Contribution
It introduces a novel fusion mechanism for expert distributions in MoEs, enabling better modeling of intermediate behaviors and reducing multimodality artifacts.
Findings
Demonstrates improved uncertainty quantification in regression problems
Achieves higher expressiveness and flexibility over classical MoEs
Shows effectiveness on real-world datasets with complex patterns
Abstract
Many learning problems involve multiple patterns and varying degrees of uncertainty dependent on the covariates. Advances in Deep Learning (DL) have addressed these issues by learning highly nonlinear input-output dependencies. However, model interpretability and Uncertainty Quantification (UQ) have often straggled behind. In this context, we introduce the Competitive/Collaborative Fusion of Experts (CoCoAFusE), a novel, Bayesian Covariates-Dependent Modeling technique. CoCoAFusE builds on the very philosophy behind Mixtures of Experts (MoEs), blending predictions from several simple sub-models (or "experts") to achieve high levels of expressiveness while retaining a substantial degree of local interpretability. Our formulation extends that of a classical Mixture of Experts by contemplating the fusion of the experts' distributions in addition to their more usual mixing (i.e.,…
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Taxonomy
TopicsAI-based Problem Solving and Planning · Human-Automation Interaction and Safety · Bayesian Modeling and Causal Inference
