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Autonomous Visualization (2006)

Khalid El-Arini, Andrew W. Moore, Ting Liu

Abstract

Many classification algorithms suffer from a lack of human interpretability. Using such classifiers to solve real world problems often requires blind faith in the given model. In this paper we present a novel approach to classification that takes into account interpretability and
visualization of the results. We attempt to efficiently discover the most relevant snapshot of the data, in the form of a two-dimensional scatter
plot with easily understandable axes. We then use this plot as the basis for a classification algorithm. Furthermore, we investigate the trade-off between classification accuracy and interpretability by comparing the performance of our classifier on real data with that of several traditional classifiers. Upon evaluating our algorithm on a wide range of canonical data sets we find that, in most cases, it is possible to obtain additional interpretability with little or no loss in classification accuracy.

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Approximate BibTeX Entry

@inproceedings{av_kbe,
    Month = {September},
    Year = {2006},
    Address = {Berlin, Germany},
    Booktitle = {European Conference on Principles and Practice of Knowledge Discovery in Databases (ECML/PKDD 2006)},
    Author = { Khalid El-Arini, Andrew W. Moore, Ting Liu },
    Title = {Autonomous Visualization}
}

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