Presents three new training procedures for regression trees that enforce convex output constraints at training time and validates them on synthetic and hierarchical time-series data.
Physics-informed deep generative models
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
We consider the application of deep generative models in propagating uncertainty through complex physical systems. Specifically, we put forth an implicit variational inference formulation that constrains the generative model output to satisfy given physical laws expressed by partial differential equations. Such physics-informed constraints provide a regularization mechanism for effectively training deep probabilistic models for modeling physical systems in which the cost of data acquisition is high and training data-sets are typically small. This provides a scalable framework for characterizing uncertainty in the outputs of physical systems due to randomness in their inputs or noise in their observations. We demonstrate the effectiveness of our approach through a canonical example in transport dynamics.
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cs.LG 1years
2024 1verdicts
UNVERDICTED 1representative citing papers
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Output-Constrained Decision Trees
Presents three new training procedures for regression trees that enforce convex output constraints at training time and validates them on synthetic and hierarchical time-series data.