English

Deep Variational Sufficient Dimensionality Reduction

Machine Learning 2018-12-20 v1 Machine Learning

Abstract

We consider the problem of sufficient dimensionality reduction (SDR), where the high-dimensional observation is transformed to a low-dimensional sub-space in which the information of the observations regarding the label variable is preserved. We propose DVSDR, a deep variational approach for sufficient dimensionality reduction. The deep structure in our model has a bottleneck that represent the low-dimensional embedding of the data. We explain the SDR problem using graphical models and use the framework of variational autoencoders to maximize the lower bound of the log-likelihood of the joint distribution of the observation and label. We show that such a maximization problem can be interpreted as solving the SDR problem. DVSDR can be easily adopted to semi-supervised learning setting. In our experiment we show that DVSDR performs competitively on classification tasks while being able to generate novel data samples.

Keywords

Cite

@article{arxiv.1812.07641,
  title  = {Deep Variational Sufficient Dimensionality Reduction},
  author = {Ershad Banijamali and Amir-Hossein Karimi and Ali Ghodsi},
  journal= {arXiv preprint arXiv:1812.07641},
  year   = {2018}
}