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Comparable Machine Learning Efficiency : Balanced Metrics for Natural Language Processing

  • As machine learning becomes increasingly pervasive, its resource demands and financial implications escalate, necessitating energy and cost optimisations to meet stakeholder demands. Quality metrics for predictive machine learning models are abundant, but efficiency metrics remain rare. We propose a framework for efficiency metrics, that enables the comparison of distinct efficiency types. A quality-focused efficiency metric is introduced that considers resource consumption, computational effort, and runtime in addition to prediction quality. The metric has been successfully tested for usability, plausibility, and compensation for dataset size and host performance. This framework enables informed decisions to be made about the use and design of machine learning in an environmentally responsible and cost-effective manner.

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Metadaten
Author:Daniel SchönleORCiD, Christoph ReichORCiDGND, Djaffar Ould-Abdeslam
URL:http://www.thinkmind.org/index.php?view=article&articleid=green_2023_1_30_80014
ISBN:978-1-68558-097-1
Parent Title (English):GREEN 2023 : The Eighth International Conference on Green Communications, Computing and Technologies, September 25 - 29, 2023, Porto, Portugal
Publisher:IARIA
Document Type:Conference Proceeding
Language:English
Year of Completion:2023
Release Date:2024/02/15
Tag:Automl; Machine learning; Metric; NLP
First Page:15
Last Page:24
Licence (German):License LogoUrheberrechtlich geschützt