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CascadeML: An Automatic Neural Network Architecture Evolution and Training Algorithm for Multi-label Classification
Author(s)
Date Issued
2019-11-19
Date Available
2020-11-06T16:57:46Z
Abstract
In multi-label classification a datapoint can be labelled with more than one class at the same time. A common but trivial approach to multi-label classification is to train individual binary classifiers per label, but the performance can be improved by considering associations between the labels, and algorithms like classifier chains and RAKEL do this effectively. Like most machine learning algorithms, however, these approaches require accurate hyperparameter tuning, a computationally expensive optimisation problem. Tuning is important to train a good multi-label classifier model. There is a scarcity in the literature of effective multi-label classification approaches that do not require extensive hyperparameter tuning. This paper addresses this scarcity by proposing CascadeML, a multi-label classification approach based on cascade neural network that takes label associations into account and requires minimal hyperparameter tuning. The performance of the CasecadeML approach is evaluated using 10 multi-label datasets and compared with other leading multi-label classification algorithms. Results show that CascadeML performs comparatively with the leading approaches but without a need for hyperparameter tuning.
Sponsorship
Science Foundation Ireland
Other Sponsorship
Insight Research Centre
Type of Material
Conference Publication
Series
Lecture Notes in Computer Science
11927
Lecture Notes in Artificial Intelligence
11927
Copyright (Published Version)
2019 Springer
Web versions
Language
English
Status of Item
Peer reviewed
Journal
Bramer, M. and Petridis, M. (eds.). Artificial Intelligence XXXVI: 39th SGAI International Conference on Artificial Intelligence, AI 2019, Cambridge, UK, December 17–19, 2019, Proceedings
Conference Details
The 39th SGAI International Conference on Artificial Intelligence (AI 2019), Cambridge, United Kingdom, 17-19 December 2019
ISBN
978-3-030-34884-7
This item is made available under a Creative Commons License
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insight_publication.pdf
Size
850.07 KB
Format
Adobe PDF
Checksum (MD5)
a6574cc095c3c76d58daaa19929c5d8d
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