2022
DOI: 10.20944/preprints202204.0073.v1
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Enriching Artificial Intelligence Explanations with Knowledge Fragments

Abstract: Artificial Intelligence models are increasingly used in manufacturing to inform decision-making. Responsible decision-making requires accurate forecasts and an understanding of the models’ behavior. Furthermore, the insights into models’ rationale can be enriched with domain knowledge. This research builds explanations considering feature rankings for a particular forecast, enriching them with media news entries, datasets’ metadata, and entries from the Google Knowledge Graph. We … Show more

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Cited by 5 publications
(2 citation statements)
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“…Data augmentation techniques at an image or embedding level have increased the models' discriminative performance [89]. Furthermore, complementing images with anomaly maps as input to supervised classification models has substantially improved discriminative capabilities [88]. The data labeling experiments showed decreased labeling accuracy by humans over time [86], which was attributed to human fatigue.…”
Section: Machine Learning and Visual Inspectionmentioning
confidence: 99%
“…Data augmentation techniques at an image or embedding level have increased the models' discriminative performance [89]. Furthermore, complementing images with anomaly maps as input to supervised classification models has substantially improved discriminative capabilities [88]. The data labeling experiments showed decreased labeling accuracy by humans over time [86], which was attributed to human fatigue.…”
Section: Machine Learning and Visual Inspectionmentioning
confidence: 99%
“…Data augmentation techniques at an image or embedding level have increased the models' discriminative performance [89]. Furthermore, complementing images with anomaly maps as input to supervised classification models has substantially improved discriminative capabilities [88]. The data labeling experiments showed decreased labeling accuracy by humans over time [86], which was attributed to human fatigue.…”
Section: Machine Learning and Visual Inspectionmentioning
confidence: 99%