Corpus ID: 4994434

Towards a Neural Statistician

@article{Edwards2017TowardsAN,
  title={Towards a Neural Statistician},
  author={Harrison Edwards and A. Storkey},
  journal={ArXiv},
  year={2017},
  volume={abs/1606.02185}
}
An efficient learner is one who reuses what they already know to tackle a new problem. For a machine learner, this means understanding the similarities amongst datasets. In order to do this, one must take seriously the idea of working with datasets, rather than datapoints, as the key objects to model. Towards this goal, we demonstrate an extension of a variational autoencoder that can learn a method for computing representations, or statistics, of datasets in an unsupervised fashion. The… Expand
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