Corpus ID: 189998790

From Clustering to Cluster Explanations via Neural Networks

@article{Kauffmann2019FromCT,
  title={From Clustering to Cluster Explanations via Neural Networks},
  author={J. Kauffmann and Malte Esders and Gr{\'e}goire Montavon and W. Samek and K. M{\"u}ller},
  journal={ArXiv},
  year={2019},
  volume={abs/1906.07633}
}
  • J. Kauffmann, Malte Esders, +2 authors K. Müller
  • Published 2019
  • Computer Science, Mathematics
  • ArXiv
  • A wealth of algorithms have been developed to extract natural cluster structure in data. Identifying this structure is desirable but not always sufficient: We may also want to understand why the data points have been assigned to a given cluster. Clustering algorithms do not offer a systematic answer to this simple question. Hence we propose a new framework that can, for the first time, explain cluster assignments in terms of input features in a comprehensive manner. It is based on the novel… CONTINUE READING
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