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Knowing what You Know: valid and validated confidence sets in multiclass and multilabel prediction

机译:知道你所知道的:在多牌和多套架预测中有效和验证的信心集

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We develop conformal prediction methods for constructing valid predictive confidence sets in multiclass and multilabel problems without assumptions on the data generating distribution. A challenge here is that typical conformal prediction methods---which give marginal validity (coverage) guarantees---provide uneven coverage, in that they address easy examples at the expense of essentially ignoring difficult examples. By leveraging ideas from quantile regression, we build methods that always guarantee correct coverage but additionally provide (asymptotically consistent) conditional coverage for both multiclass and multilabel prediction problems. To address the potential challenge of exponentially large confidence sets in multilabel prediction, we build tree-structured classifiers that efficiently account for interactions between labels. Our methods can be bolted on top of any classification model---neural network, random forest, boosted tree---to guarantee its validity. We also provide an empirical evaluation, simultaneously providing new validation methods, that suggests the more robust coverage of our confidence sets.
机译:我们开发了用于构建多字符和多函数问题的有效预测置信度集的保形预测方法,而不是数据生成分布的假设。这里的挑战是典型的保形预测方法---提供边缘有效性(覆盖范围)保证 - 提供不均匀的覆盖范围,因为它们以牺牲基本上忽略了困难的例子的牺牲品来解决方便的例子。通过利用量级回归的思路,我们构建始终保证正确覆盖的方法,但另外提供(渐近一致)的多标配和多标签预测问题的条件覆盖。为了解决多标签预测中指数大的信心集的潜在挑战,我们构建了树结构化分类器,可有效地解释标签之间的相互作用。我们的方法可以螺栓固定在任何分类模型的顶部---神经网络,随机森林,提升树---保证其有效性。我们还提供了一个实证评估,同时提供了新的验证方法,这表明我们的信心集的覆盖率更加强大。

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