Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Towards a Neural Statistician

About

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 network is trained to produce statistics that encapsulate a generative model for each dataset. Hence the network enables efficient learning from new datasets for both unsupervised and supervised tasks. We show that we are able to learn statistics that can be used for: clustering datasets, transferring generative models to new datasets, selecting representative samples of datasets and classifying previously unseen classes. We refer to our model as a neural statistician, and by this we mean a neural network that can learn to compute summary statistics of datasets without supervision.

Harrison Edwards, Amos Storkey• 2016

Related benchmarks

TaskDatasetResultRank
Image ClassificationMNIST (test)
Accuracy93.2
882
Few-shot classificationOmniglot (test)--
109
Image ClassificationOmniglot (test)
Accuracy99.5
39
5-way Few-shot ClassificationOmniglot (test)
Accuracy (1-shot)98.1
27
20-way Few-shot ClassificationOmniglot (test)
1-shot Accuracy93.2
18
Few-shot Image ClassificationOmniglot 20-Way
Accuracy98.1
16
Few-shot Image ClassificationOmniglot 5-Way
Accuracy99.5
15
Few-shot classificationOmniglot 20-way 5-shot
Accuracy98.1
15
Few-shot classificationOmniglot 20-way 1-shot
Accuracy93.2
15
Few-shot classificationOmniglot standard (Random Split)
Accuracy (5-way 1-shot)98.1
9
Showing 10 of 10 rows

Other info

Follow for update