Safe Semi-Supervised Learning of Sum-Product Networks
October 10, 2017 Β· Declared Dead Β· π Conference on Uncertainty in Artificial Intelligence
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Authors
Martin Trapp, Tamas Madl, Robert Peharz, Franz Pernkopf, Robert Trappl
arXiv ID
1710.03444
Category
stat.ML: Machine Learning (Stat)
Cross-listed
cs.LG
Citations
14
Venue
Conference on Uncertainty in Artificial Intelligence
Last Checked
3 months ago
Abstract
In several domains obtaining class annotations is expensive while at the same time unlabelled data are abundant. While most semi-supervised approaches enforce restrictive assumptions on the data distribution, recent work has managed to learn semi-supervised models in a non-restrictive regime. However, so far such approaches have only been proposed for linear models. In this work, we introduce semi-supervised parameter learning for Sum-Product Networks (SPNs). SPNs are deep probabilistic models admitting inference in linear time in number of network edges. Our approach has several advantages, as it (1) allows generative and discriminative semi-supervised learning, (2) guarantees that adding unlabelled data can increase, but not degrade, the performance (safe), and (3) is computationally efficient and does not enforce restrictive assumptions on the data distribution. We show on a variety of data sets that safe semi-supervised learning with SPNs is competitive compared to state-of-the-art and can lead to a better generative and discriminative objective value than a purely supervised approach.
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