We develop novel methodology for active feature acquisition (AFA), the study of how to sequentially acquire a dynamic (on a per instance basis) subset of features that minimizes acquisition costs whilst still yielding accurate predictions. The AFA framework can be useful in a myriad of domains, including health care applications where the cost of acquiring additional features for a patient (in terms of time, money, risk, etc.) can be weighed against the expected improvement to diagnostic performance. Previous approaches for AFA have employed either: deep learning RL techniques, which have difficulty training policies in the AFA MDP due to sparse rewards and a complicated action space; deep learning surrogate generative models, which require modeling complicated multidimensional conditional distributions; or greedy policies, which fail to account for how joint feature acquisitions can be informative together for better predictions. In this work we show that we can bypass many of these challenges with a novel, nonparametric oracle based approach, which we coin the acquisition conditioned oracle (ACO). Extensive experiments show the superiority of the ACO to state-of-the-art AFA methods when acquiring features for both predictions and general decision-making.
翻译:我们为积极地物获取开发新的方法,即研究如何依次获得动态(按例)的特征子集,以尽量减少购置成本,同时仍能作出准确的预测;AFA框架可在许多领域有用,包括保健应用,可以衡量病人获得更多特征的成本(在时间、金钱、风险等方面)和诊断性绩效的预期改进;AFA以前采用的方法有:深层次学习RL技术,由于微弱的奖励和复杂的行动空间,AFA MDP在培训政策上遇到困难;深层次学习替代基因模型,需要模拟复杂的多维条件分布;或贪婪政策,无法说明联合地物获取如何共同获得信息,以更好地预测;在这项工作中,我们证明我们可以以新颖的、非参数性能或触摸底的方法避开许多挑战,我们用获得条件或触底的方法(ACO);广泛的实验显示ACO在获得预测和一般决策的特征时优于最先进的AFAFA方法。</s>