We propose a method for jointly inferring labels across a collection of data samples, where each sample consists of an observation and a prior belief about the label. By implicitly assuming the existence of a generative model for which a differentiable predictor is the posterior, we derive a training objective that allows learning under weak beliefs. This formulation unifies various machine learning settings; the weak beliefs can come in the form of noisy or incomplete labels, likelihoods given by a different prediction mechanism on auxiliary input, or common-sense priors reflecting knowledge about the structure of the problem at hand. We demonstrate the proposed algorithms on diverse problems: classification with negative training examples, learning from rankings, weakly and self-supervised aerial imagery segmentation, co-segmentation of video frames, and coarsely supervised text classification.
Resolving label uncertainty with implicit posterior models
A method for jointly inferring labels using prior beliefs and a generative model unifies various machine learning tasks, demonstrated on classification, rankings, segmentation, frames co-segmentation, and text classification.
- Year
- 2022
- Venue
- arXiv 2022
- Authors
- 6
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2202.14000v2ARXIV-DEFAULT
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