lensen2019multi.pdf (842.26 kB)

Multi-objective genetic programming for manifold learning: balancing quality and dimensionality

Download (842.26 kB)
journal contribution
posted on 06.10.2020, 22:11 by Andrew Lensen, Mengjie Zhang, Bing Xue
© 2020, Springer Science+Business Media, LLC, part of Springer Nature. Manifold learning techniques have become increasingly valuable as data continues to grow in size. By discovering a lower-dimensional representation (embedding) of the structure of a dataset, manifold learning algorithms can substantially reduce the dimensionality of a dataset while preserving as much information as possible. However, state-of-the-art manifold learning algorithms are opaque in how they perform this transformation. Understanding the way in which the embedding relates to the original high-dimensional space is critical in exploratory data analysis. We previously proposed a Genetic Programming method that performed manifold learning by evolving mappings that are transparent and interpretable. This method required the dimensionality of the embedding to be known a priori, which makes it hard to use when little is known about a dataset. In this paper, we substantially extend our previous work, by introducing a multi-objective approach that automatically balances the competing objectives of manifold quality and dimensionality. Our proposed approach is competitive with a range of baseline and state-of-the-art manifold learning methods, while also providing a range (front) of solutions that give different trade-offs between quality and dimensionality. Furthermore, the learned models are shown to often be simple and efficient, utilising only a small number of features in an interpretable manner.


Preferred citation

Lensen, A., Zhang, M. & Xue, B. (n.d.). Multi-objective genetic programming for manifold learning: balancing quality and dimensionality. https://doi.org/10.26686/wgtn.12493817


Victoria University of Wellington Library


Logo branding