We consider how mathematical models enable predictions for conditions that are qualitatively different from the training data. We propose techniques based on information topology to find models that can apply their learning in regimes for which there is no data. The first step is to use the Manifold Boundary Approximation Method to construct simple, reduced models of target phenomena in a data-driven way. We consider the set of all such reduced models and use the topological relationships among them to reason about model selection for new, unobserved phenomena. Given minimal models for several target behaviors, we introduce the supremum principle as a criterion for selecting a new, transferable model. The supremal model, i.e., the least upp...
Item does not contain fulltextPsychology endeavors to develop theories of human capacities and behav...
Criticality can be exactly demonstrated in certain models of brain activity, yet it remains challeng...
Self-supervised learning (SSL) has emerged as a desirable paradigm in computer vision due to the ina...
Dynamical systems are an incredibly broad class of systems that pervades every field of science, as ...
Counterfactual explanation is an important Explainable AI technique to explain machine learning pred...
A model is an attempt to capture the essence of things. Hence, as a rule, a model strives to be as s...
We present a machine learning (ML)-assisted framework bridging manifold learning, neural networks, G...
Many methods have been proposed to estimate treatment effects with observational data. Often, the ch...
Learning is a distinctive feature of intelligent behaviour. High-throughput experimental data and Bi...
Achieving at least some level of explainability requires complex analyses for many machine learning ...
We present a general learning model explaining in more depth how we learn (or fail to learn) models ...
Dynamical models underpin our ability to understand and predict the behavior of natural systems. Whe...
Model-based reinforcement learning (MBRL) is believed to have much higher sample efficiency compared...
International audienceUnderstanding the organization of complex behavior as it relates to the brain ...
Existing machine learning programs possess only limited abilities to exploit previously acquired bac...
Item does not contain fulltextPsychology endeavors to develop theories of human capacities and behav...
Criticality can be exactly demonstrated in certain models of brain activity, yet it remains challeng...
Self-supervised learning (SSL) has emerged as a desirable paradigm in computer vision due to the ina...
Dynamical systems are an incredibly broad class of systems that pervades every field of science, as ...
Counterfactual explanation is an important Explainable AI technique to explain machine learning pred...
A model is an attempt to capture the essence of things. Hence, as a rule, a model strives to be as s...
We present a machine learning (ML)-assisted framework bridging manifold learning, neural networks, G...
Many methods have been proposed to estimate treatment effects with observational data. Often, the ch...
Learning is a distinctive feature of intelligent behaviour. High-throughput experimental data and Bi...
Achieving at least some level of explainability requires complex analyses for many machine learning ...
We present a general learning model explaining in more depth how we learn (or fail to learn) models ...
Dynamical models underpin our ability to understand and predict the behavior of natural systems. Whe...
Model-based reinforcement learning (MBRL) is believed to have much higher sample efficiency compared...
International audienceUnderstanding the organization of complex behavior as it relates to the brain ...
Existing machine learning programs possess only limited abilities to exploit previously acquired bac...
Item does not contain fulltextPsychology endeavors to develop theories of human capacities and behav...
Criticality can be exactly demonstrated in certain models of brain activity, yet it remains challeng...
Self-supervised learning (SSL) has emerged as a desirable paradigm in computer vision due to the ina...