必应词典为您提供Computational-learning-theory的释义,网络释义: 计算学习理论;计算学习理论年会会议录;说计算学习理论;
计算学习理论(Computational learning theory)计算学习理论是计算科学⼈⼯智能领域的⼀个分⽀。研究的是机器学习算法 机器学习算法的设计和分析。计算学习理论 综述 多项式时间内完成,则称其为可 可⾏性。在计算学习理论中,如果⼀个计算能够在多项式时间 计算学习理论研究时间复杂性 时间复杂性和学习的可⾏...
Computational learning theory is a subject which has been advancing rapidly in the last few years. The authors concentrate on the probably approximately correct model of learning, and gradually develop the ideas of efficiency considerations. Finally, applications of the theory to artificial neural networ...
出版社:Springer 出版年:2002-12 页数:395 定价:587.60元 装帧:平装 ISBN:9783540438366 豆瓣评分 目前无人评价 评价: 写笔记 写书评 加入购书单 分享到 推荐 内容简介· ··· 在线阅读本书 This book constitutes the refereed proceedings of the 15th Annual Conference on Computational Learning Theory, COLT ...
1 Contents WhatisComputationalLearningTheory?Probablyapproximatelycorrect(PAC)learningVapnik-ChervonenkisDimensionMistakebounds 2 计算学习理论关注的内容 样本复杂度(Samplecomplexity)。学习器要收敛到成功假设(以较高的概率),需要多少训练样例?计算复杂度(Computationalcomplexity)。学习器要收敛到成功假设(以较高的...
Computational Learning Theory Generalizability of LearningXing, Eric
COLT 2025Conference on Learning Theory Jun 30, 2025 - Jul 4, 2025Lyon, FranceFeb 6, 2025 COLT 202437th Annual Conference on Learning Theory Jun 30, 2024 - Jul 3, 2024Edmonton, CanadaFeb 9, 2024 COLT 2023Computational Learning Theory ...
This chapter presents the computational learning theory for artificial neural networks. There are many types of activity, which are commonly known as learning. The chapter discusses a mathematical model of one such process, known as the 'probably approximately correct’ (or PAC) model. It illustrate...
Computational learning theory: An introduction The authors concentrate on an approximate model for learning and gradually develop the ideas of efficiency considerations. Finally, they consider applications of the theory to artificial neural networks. An abundance of exercises and an ... M Anthony,N ...
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