Graceful degradation and related fields
Graceful degradation and related fields
When machine learning models encounter data which is out of the distribution on which they were trained they have a tendency to behave poorly, most prominently over-confidence in erroneous predictions. Such behaviours will have disastrous effects on real-world machine learning systems. In this field graceful degradation refers to the optimisation of model performance as it encounters this out-of-distribution data. This work presents a definition and discussion of graceful degradation and where it can be applied in deployed visual systems. Following this a survey of relevant areas is undertaken, novelly splitting the graceful degradation problem into active and passive approaches. In passive approaches, graceful degradation is handled and achieved by the model in a self-contained manner, in active approaches the model is updated upon encountering epistemic uncertainties. This work communicates the importance of the problem and aims to prompt the development of machine learning strategies that are aware of graceful degradation.
cs.LG, cs.CV
Dymond, Jack
3309494f-9bac-4891-a6a7-06a900eebf87
21 June 2021
Dymond, Jack
3309494f-9bac-4891-a6a7-06a900eebf87
Dymond, Jack
(2021)
Graceful degradation and related fields.
arXiv.
Abstract
When machine learning models encounter data which is out of the distribution on which they were trained they have a tendency to behave poorly, most prominently over-confidence in erroneous predictions. Such behaviours will have disastrous effects on real-world machine learning systems. In this field graceful degradation refers to the optimisation of model performance as it encounters this out-of-distribution data. This work presents a definition and discussion of graceful degradation and where it can be applied in deployed visual systems. Following this a survey of relevant areas is undertaken, novelly splitting the graceful degradation problem into active and passive approaches. In passive approaches, graceful degradation is handled and achieved by the model in a self-contained manner, in active approaches the model is updated upon encountering epistemic uncertainties. This work communicates the importance of the problem and aims to prompt the development of machine learning strategies that are aware of graceful degradation.
Text
2106.11119v2
- Other
More information
Published date: 21 June 2021
Additional Information:
A review on Graceful Degradation undertaken for the Applied Research Centre at the Alan Turing Institute
Keywords:
cs.LG, cs.CV
Identifiers
Local EPrints ID: 455349
URI: http://eprints.soton.ac.uk/id/eprint/455349
ISSN: 2331-8422
PURE UUID: 605e8e9b-3d21-4540-83b9-80f1f50f366b
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Date deposited: 17 Mar 2022 17:37
Last modified: 16 Mar 2024 16:13
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Author:
Jack Dymond
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