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Active Learning of Bayesian Linear Models with High-Dimensional Binary Features by Parameter Confidence-Region Estimation

机译:参数置信区估计高尺寸二元特征的贝叶斯线性模型的主动学习

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摘要

In this letter, we study an active learning problem for maximizing an unknown linear function with high-dimensional binary features. This problem is notoriously complex but arises in many important contexts. When the sampling budget, that is, the number of possible function evaluations, is smaller than the number of dimensions, it tends to be impossible to identify all of the optimal binary features. Therefore, in practice, only a small number of such features are considered, with the majority kept fixed at certain default values, which we call theworking set heuristic. The main contribution of this letter is to formally study the working set heuristic and present a suite of theoretically robust algorithms for more efficient use of the sampling budget. Technically, we introduce a novel method for estimating the confidence regions of model parameters that is tailored to active learning with high-dimensional binary features. We provide a rigorous theoretical analysis of these algorithms and prove that a commonly used working set heuristic can identify optimal binary features with favorable sample complexity. We explore the performance of the proposed approach through numerical simulations and an application to a functional protein design problem.
机译:在这封信中,我们研究了具有高维二进制特征的未知线性函数的主动学习问题。这个问题是臭名昭着的复杂,但在许多重要的背景下出现。当采样预算时,即可能的函数评估的数量小于维度的数量,往往是不可能识别所有最佳二进制特征。因此,在实践中,仅考虑少量这样的特征,大多数在某些默认值下保持固定,我们称之为机启发式。这封信的主要贡献是正式研究工作设定的启发式,并展示了一套理论上强大的算法,以便更有效地利用采样预算。从技术上讲,我们介绍了一种估计模型参数的置信区的新方法,这些方法与高维二进制特征定制为主动学习。我们提供了对这些算法的严格理论分析,并证明了一个常用的工作设定启发式可以识别具有有利的样本复杂性的最佳二进制特征。我们通过数值模拟和应用于功能蛋白质设计问题的应用来探讨所提出的方法的性能。

著录项

  • 来源
    《Neural computation》 |2020年第10期|1998-2031|共34页
  • 作者单位

    RIKEN Ctr Adv Intelligent Project Chuo Ku Tokyo 1030027 Japan;

    Nagoya Inst Technol Showa Ku Gokiso Rho Nagoya Aichi 4668555 Japan|JST PRESTO Kawaguchi Saitama 3320012 Japan|Natl Inst Mat Sci Ctr Mat Res Informat Integrat Tsukuba Ibaraki 3050047 Japan;

    Univ Tokyo Inst Solid State Phys Kashiwa Chiba 2778561 Japan;

    Nagoya Inst Technol Showa Ku Gokiso Rho Nagoya Aichi 4668555 Japan;

    RIKEN Ctr Adv Intelligent Project Chuo Ku Tokyo 1030027 Japan|Nagoya Inst Technol Showa Ku Gokiso Rho Nagoya Aichi 4668555 Japan|Natl Inst Mat Sci Ctr Mat Res Informat Integrat Tsukuba Ibaraki 3050047 Japan;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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