论文标题

与部分标签的查询自适应预测性推断

Query-Adaptive Predictive Inference with Partial Labels

论文作者

Cauchois, Maxime, Duchi, John

论文摘要

统计机器学习中完全监督标签的成本和稀缺性鼓励使用部分标记的数据进行模型验证作为更便宜且更容易访问的替代方案。因此,有效地收集和利用弱监督的数据进行大空间结构化预测任务成为端到端学习系统的重要组成部分。我们提出了一种新的计算友好方法,用于仅在黑框预测模型上使用部分标记的数据构建预测集。为此,我们引入了“探针”功能,以描述弱监督的实例并定义错误的发现比例损失,这两者都无缝地适应部分监督和结构化预测 - 排名,匹配,匹配,分段,多级别或多层分类。我们的实验突出了我们的预测设置结构的有效性以及更灵活的用户依赖性损失框架的吸引力。

The cost and scarcity of fully supervised labels in statistical machine learning encourage using partially labeled data for model validation as a cheaper and more accessible alternative. Effectively collecting and leveraging weakly supervised data for large-space structured prediction tasks thus becomes an important part of an end-to-end learning system. We propose a new computationally-friendly methodology to construct predictive sets using only partially labeled data on top of black-box predictive models. To do so, we introduce "probe" functions as a way to describe weakly supervised instances and define a false discovery proportion-type loss, both of which seamlessly adapt to partial supervision and structured prediction -- ranking, matching, segmentation, multilabel or multiclass classification. Our experiments highlight the validity of our predictive set construction as well as the attractiveness of a more flexible user-dependent loss framework.

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