Efficient and Robust Machine Learning for Real-World Systems
Franz Pernkopf, Wolfgang Roth, Matthias Zoehrer, Lukas Pfeifenberger,, Guenther Schindler, Holger Froening, Sebastian Tschiatschek, Robert Peharz,, Matthew Mattina, Zoubin Ghahramani

TL;DR
This paper reviews current machine learning techniques that balance resource efficiency and uncertainty estimation, crucial for deploying robust AI systems in real-world, resource-constrained environments.
Contribution
It provides a comprehensive overview of methods for resource-efficient neural networks and contrasts them with probabilistic models that better handle uncertainty in real-world applications.
Findings
Deep neural network compression reduces computational complexity.
Probabilistic graphical models effectively manage uncertainty.
Resource-efficient methods enable deployment in embedded systems.
Abstract
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navigation and the vision of the Internet-of-Things fuel the interest in resource efficient approaches. These approaches require a carefully chosen trade-off between performance and resource consumption in terms of computation and energy. On top of this, it is crucial to treat uncertainty in a consistent manner in all but the simplest applications of machine learning systems. In particular, a desideratum for any real-world system is to be robust in the presence of outliers and corrupted data, as well as being `aware' of its limits, i.e.\ the system should maintain and provide an uncertainty estimate over its own predictions. These complex demands are among the major challenges in current machine learning research and key to ensure a smooth transition of machine learning technology into every…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Machine Learning and Data Classification · Gaussian Processes and Bayesian Inference
