Title :
Improving Spectral Learning by Using Multiple Representations
Author :
Drake, Adam ; Ventura, Dan
Author_Institution :
Comput. Sci. Dept., Brigham Young Univ., Provo, UT, USA
Abstract :
Spectral learning algorithms learn an unknown function by learning a spectral (e.g., Fourier) representation of the function. However, there are many possible spectral representations, none of which will be best in all situations. Consequently, it seems natural to consider how a spectral learner could make use of multiple representations when learning. This paper proposes and compares three approaches to learning from multiple spectral representations. Empirical results suggest that an ensemble approach to multi-spectrum learning, in which spectral models are learned independently in each of a set of candidate representations and then combined in a majority-vote ensemble, works best in practice.
Keywords :
functions; learning (artificial intelligence); pattern classification; classification; ensemble approach; majority-vote ensemble; spectral function representation; spectral learning algorithms; spectral models; Accuracy; Boosting; Correlation; Heart; Mathematical model; Single photon emission computed tomography; Training data; basis selection; discrete Fourier; ensemble; representation; spectral learning;
Conference_Titel :
Machine Learning and Applications (ICMLA), 2014 13th International Conference on
Conference_Location :
Detroit, MI
DOI :
10.1109/ICMLA.2014.28