Information fusion is an essential part of numerous engineering systems and biological functions, e.g., human cognition. Fusion occurs at many levels, ranging from the low-level combination of signals to the high-level aggregation of heterogeneous decision-making processes. While the last decade has witnessed an explosion of research in deep learning, fusion in neural networks has not observed the same revolution. Specifically, most neural fusion approaches are ad hoc, are not understood, are distributed versus localized, and/or explainability is low (if present at all). Herein, we prove that the fuzzy Choquet integral (ChI), a powerful nonlinear aggregation function, can be represented as a multilayer network, referred to hereafter as ChIM...
It is widely recognised that learning systems have to go deeper to exchange for more powerful repres...
Previously, we investigated the definition and applicability of the fuzzy integral (FI) for nonlinea...
AbstractThe value of the fuzzy integral in a decision making environment where uncertainty is presen...
Information fusion is an essential part of numerous engineering systems and biological functions, e....
© 2018 IEEE. To date, numerous ways have been created to learn a fusion solution from data. However,...
The modern era of machine learning is focused on data-driven solutions. While this has resulted in a...
Data/information fusion is an integral component of many existing and emerging applications; e.g., r...
Recent advancements and applications in artificial intelligence (AI) and machine learning (ML) have ...
Recent advancements and applications in artificial intelligence (AI) and machine learning (ML) have ...
Recent advancements and applications in artificial intelligence (ai) and machine learning (ml) have ...
The Choquet integral (ChI) is an aggregation operator defined with respect to a fuzzy measure (FM). ...
The Choquet integral (ChI), a parametric function for information aggregation, is parameterized by t...
In this paper, we explore a new way to learn an aggregation operator for fusion based on a combinati...
International audienceIn the context of deep learning, this article presents an original deep networ...
The fuzzy integral (FI) is a nonlinear aggregation operator whose behavior is defined by the fuzzy m...
It is widely recognised that learning systems have to go deeper to exchange for more powerful repres...
Previously, we investigated the definition and applicability of the fuzzy integral (FI) for nonlinea...
AbstractThe value of the fuzzy integral in a decision making environment where uncertainty is presen...
Information fusion is an essential part of numerous engineering systems and biological functions, e....
© 2018 IEEE. To date, numerous ways have been created to learn a fusion solution from data. However,...
The modern era of machine learning is focused on data-driven solutions. While this has resulted in a...
Data/information fusion is an integral component of many existing and emerging applications; e.g., r...
Recent advancements and applications in artificial intelligence (AI) and machine learning (ML) have ...
Recent advancements and applications in artificial intelligence (AI) and machine learning (ML) have ...
Recent advancements and applications in artificial intelligence (ai) and machine learning (ml) have ...
The Choquet integral (ChI) is an aggregation operator defined with respect to a fuzzy measure (FM). ...
The Choquet integral (ChI), a parametric function for information aggregation, is parameterized by t...
In this paper, we explore a new way to learn an aggregation operator for fusion based on a combinati...
International audienceIn the context of deep learning, this article presents an original deep networ...
The fuzzy integral (FI) is a nonlinear aggregation operator whose behavior is defined by the fuzzy m...
It is widely recognised that learning systems have to go deeper to exchange for more powerful repres...
Previously, we investigated the definition and applicability of the fuzzy integral (FI) for nonlinea...
AbstractThe value of the fuzzy integral in a decision making environment where uncertainty is presen...