Instance-Based Multi-Label Classification via Multi-Target Distance Regression
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Instance-Based Multi-Label Classification via Multi-Target Distance Regression
ESANN2021.pdf
(Jyväskylän yliopisto - JYX)
Interest in multi-target regression and multi-label classification techniques and their applications have been increasing lately. Here, we use the distance-based supervised method, minimal learning machine (MLM), as a base model for multi-label classification. We also propose and test a hybridization of unsupervised and supervised techniques, where prototype-based clustering is used to reduce both the training time and the overall model complexity. In computational experiments, competitive or improved quality of the obtained models compared to the state-of-the-art techniques was observed.
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