articleAug 20, 2006Closed access
Model compression
Indexed incrossref
Abstract
Often the best performing supervised learning models are ensembles of hundreds or thousands of base-level classifiers. Unfortunately, the space required to store this many classifiers, and the time required to execute them at run-time, prohibits their use in applications where test sets are large (e.g. Google), where storage space is at a premium (e.g. PDAs), and where computational power is limited (e.g. hea-ring aids). We present a method for "compressing" large, complex ensembles into smaller, faster models, usually without significant loss in performance.
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Authors
3Topics & keywords
Topics
Keywords
- Computer science
- Data compression
- Base (topology)
- Compression (physics)
- Space (punctuation)
- Machine learning
- Artificial intelligence
- Data mining
UN Sustainable Development Goals
- Good health and well-being
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