Abstract
Constraint-based learning reduces the burden of collecting labels by having users specify general properties of structured outputs, such as constraints imposed by physical laws. We propose a novel framework for simultaneously learning these constraints and using them for supervision, bypassing the difficulty of using domain expertise to manually specify constraints. Learning requires a black-box simulator of structured outputs, which generates valid labels, but need not model their corresponding inputs or the input-label relationship. At training time, we constrain the model to produce outputs that cannot be distinguished from simulated labels by adversarial training. Providing our framework with a small number of labeled inputs gives rise to a new semi-supervised structured prediction model; we evaluate this model on multiple tasks - tracking, pose estimation and time series prediction - and find that it achieves high accuracy with only a small number of labeled inputs. In some cases, no labels are required at all.
Cite
CITATION STYLE
Ren, H., Stewart, R., Song, J., Kuleshov, V., & Ermon, S. (2018). Adversarial constraint learning for structured prediction. In IJCAI International Joint Conference on Artificial Intelligence (Vol. 2018-July, pp. 2637–2643). International Joint Conferences on Artificial Intelligence. https://doi.org/10.24963/ijcai.2018/366
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