LGAIFeb 2, 2023

Generalized Uncertainty of Deep Neural Networks: Taxonomy and Applications

arXiv:2302.01440v14 citationsh-index: 10
Originality Synthesis-oriented
AI Analysis

This is an incremental review that synthesizes existing work on uncertainty quantification for deep learning, aiming to improve interpretability and performance in various applications.

The paper reviews and generalizes the concept of uncertainty in deep neural networks, proposing a taxonomy and cataloging methods to quantify it, and demonstrates its applications in robust, data-efficient, and model-efficient learning tasks.

Deep neural networks have seen enormous success in various real-world applications. Beyond their predictions as point estimates, increasing attention has been focused on quantifying the uncertainty of their predictions. In this review, we show that the uncertainty of deep neural networks is not only important in a sense of interpretability and transparency, but also crucial in further advancing their performance, particularly in learning systems seeking robustness and efficiency. We will generalize the definition of the uncertainty of deep neural networks to any number or vector that is associated with an input or an input-label pair, and catalog existing methods on ``mining'' such uncertainty from a deep model. We will include those methods from the classic field of uncertainty quantification as well as those methods that are specific to deep neural networks. We then show a wide spectrum of applications of such generalized uncertainty in realistic learning tasks including robust learning such as noisy learning, adversarially robust learning; data-efficient learning such as semi-supervised and weakly-supervised learning; and model-efficient learning such as model compression and knowledge distillation.

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