预测不确定性的模型无关变量重要性:基于熵的方法

IF 2.8 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Data Mining and Knowledge Discovery Pub Date : 2024-08-29 DOI:10.1007/s10618-024-01070-7
Danny Wood, Theodore Papamarkou, Matt Benatan, Richard Allmendinger
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引用次数: 0

摘要

要信任机器学习算法的预测,就必须了解促成这些预测的因素。就概率和不确定性感知模型而言,不仅需要了解预测本身的原因,还需要了解模型对这些预测的置信度的原因。在本文中,我们展示了如何将现有的可解释性方法扩展到不确定性感知模型,以及如何利用这种扩展来理解模型预测分布中的不确定性来源。特别是,通过调整置换特征重要性、部分依赖图和单个条件期望图,我们证明可以获得对模型行为的新见解,并证明这些方法可用于测量特征对预测分布的熵和该分布下地面实况标签的对数似然的影响。通过使用合成数据和真实世界数据进行实验,我们证明了这些方法在了解不确定性来源及其对模型性能的影响方面的实用性。
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Model-agnostic variable importance for predictive uncertainty: an entropy-based approach

In order to trust the predictions of a machine learning algorithm, it is necessary to understand the factors that contribute to those predictions. In the case of probabilistic and uncertainty-aware models, it is necessary to understand not only the reasons for the predictions themselves, but also the reasons for the model’s level of confidence in those predictions. In this paper, we show how existing methods in explainability can be extended to uncertainty-aware models and how such extensions can be used to understand the sources of uncertainty in a model’s predictive distribution. In particular, by adapting permutation feature importance, partial dependence plots, and individual conditional expectation plots, we demonstrate that novel insights into model behaviour may be obtained and that these methods can be used to measure the impact of features on both the entropy of the predictive distribution and the log-likelihood of the ground truth labels under that distribution. With experiments using both synthetic and real-world data, we demonstrate the utility of these approaches to understand both the sources of uncertainty and their impact on model performance.

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来源期刊
Data Mining and Knowledge Discovery
Data Mining and Knowledge Discovery 工程技术-计算机:人工智能
CiteScore
10.40
自引率
4.20%
发文量
68
审稿时长
10 months
期刊介绍: Advances in data gathering, storage, and distribution have created a need for computational tools and techniques to aid in data analysis. Data Mining and Knowledge Discovery in Databases (KDD) is a rapidly growing area of research and application that builds on techniques and theories from many fields, including statistics, databases, pattern recognition and learning, data visualization, uncertainty modelling, data warehousing and OLAP, optimization, and high performance computing.
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