假阳性悖论
非参数统计
不确定度量化
灵敏度(控制系统)
参数统计
假阳性和假阴性
变量(数学)
集合(抽象数据类型)
数据挖掘
机器学习
人工智能
计算机科学
算法
统计
数学
工程类
电子工程
程序设计语言
数学分析
作者
Samuel D. Curtis,Sambit Panda,Adam Li,Haoyin Xu,Yuhang Bai,Itsuki Ogihara,Eliza O’Reilly,Yuxuan Wang,Lisa Dobbyn,Maria Popoli,Janine Ptak,Nadine T. Nehme,Natalie Silliman,Jeanne Tie,Peter Gibbs,Lan T. Ho‐Pham,Ngoc Bich Tran,Thach Tran,Tuan V. Nguyen,Ehsan Irajizad
标识
DOI:10.1073/pnas.2424203122
摘要
AI is now a cornerstone of modern dataset analysis. In many real world applications, practitioners are concerned with controlling specific kinds of errors, rather than minimizing the overall number of errors. For example, biomedical screening assays may primarily be concerned with mitigating the number of false positives rather than false negatives. Quantifying uncertainty in AI-based predictions, and in particular those controlling specific kinds of errors, remains theoretically and practically challenging. We develop a strategy called multidimensional informed generalized hypothesis testing (MIGHT) which we prove accurately quantifies uncertainty and confidence given sufficient data, and concomitantly controls for particular error types. Our key insight was that it is possible to integrate canonical cross-validation and parametric calibration procedures within a nonparametric ensemble method. Simulations demonstrate that while typical AI based-approaches cannot be trusted to obtain the truth, MIGHT can be. We apply MIGHT to answer an open question in liquid biopsies using circulating cell-free DNA (ccfDNA) in individuals with or without cancer: Which biomarkers, or combinations thereof, can we trust? Performance estimates produced by MIGHT on ccfDNA data have coefficients of variation that are often orders of magnitude lower than other state of the art algorithms such as support vector machines, random forests, and Transformers, while often also achieving higher sensitivity. We find that combinations of variable sets often decrease rather than increase sensitivity over the optimal single variable set because some variable sets add more noise than signal. This work demonstrates the importance of quantifying uncertainty and confidence—with theoretical guarantees—for the interpretation of real-world data.
科研通智能强力驱动
Strongly Powered by AbleSci AI