Title
Learning figures with the Hausdorff metric by fractals—towards computable binary classification
Abstract
We present learning of figures, nonempty compact sets in Euclidean space, based on Gold's learning model aiming at a computable foundation for binary classification of multivariate data. Encoding real vectors with no numerical error requires infinite sequences, resulting in a gap between each real vector and its discretized representation used for the actual machine learning process. Our motivation is to provide an analysis of machine learning problems that explicitly tackles this aspect which has been glossed over in the literature on binary classification as well as in other machine learning tasks such as regression and clustering. In this paper, we amalgamate two processes: discretization and binary classification. Each learning target, the set of real vectors classified as positive, is treated as a figure. A learning machine receives discretized vectors as input data and outputs a sequence of discrete representations of the target figure in the form of self-similar sets, known as fractals. The generalization error of each output is measured by the Hausdorff metric. Using this learning framework, we reveal a hierarchy of learnable classes under various learning criteria in the track of traditional analysis based on Gold's learning model, and show a mathematical connection between machine learning and fractal geometry by measuring the complexity of learning using the Hausdorff dimension and the VC dimension. Moreover, we analyze computability aspects of learning of figures using the framework of Type-2 Theory of Effectivity (TTE).
Year
DOI
Venue
2013
https://doi.org/10.1007/s10994-012-5301-z
Machine Learning
Keywords
Field
DocType
Binary classification,Discretization,Self-similar set,Gold’s learning model,Hausdorff metric,Type-2 theory of effectivity
Algorithmic learning theory,Semi-supervised learning,Instance-based learning,Multi-task learning,Stability (learning theory),Active learning (machine learning),Unsupervised learning,Artificial intelligence,Computational learning theory,Machine learning,Mathematics
Journal
Volume
Issue
ISSN
90
1
0885-6125
Citations 
PageRank 
References 
1
0.39
55
Authors
4
Name
Order
Citations
PageRank
Mahito Sugiyama17713.27
Eiju Hirowatari2163.09
Hideki Tsuiki35618.28
Akihiro Yamamoto413526.84