{"title":"排列不变分布下的不可知论学习","authors":"K. Wimmer","doi":"10.1109/FOCS.2010.17","DOIUrl":null,"url":null,"abstract":"We generalize algorithms from computational learning theory that are successful under the uniform distribution on the Boolean hypercube $\\{0,1\\}^n$ to algorithms successful on permutation invariant distributions. A permutation invariant distribution is a distribution where the probability mass remains constant upon permutations in the instances. While the tools in our generalization mimic those used for the Boolean hypercube, the fact that permutation invariant distributions are not product distributions presents a significant obstacle. Under the uniform distribution, half spaces can be agnostically learned in polynomial time for constant $\\eps$. The main tools used are a theorem of Peres~\\cite{Peres04} bounding the {\\it noise sensitivity} of a half space, a result of~\\cite{KOS04} that this theorem implies Fourier concentration, and a modification of the Low-Degree algorithm of Linial, Man sour, Nisan~\\cite{LMN:93} made by Kalai et. al.~\\cite{KKMS08}. These results are extended to arbitrary product distributions in~\\cite{BOWi08}. We prove analogous results for permutation invariant distributions, more generally, we work in the domain of the symmetric group. We define noise sensitivity in this setting, and show that noise sensitivity has a nice combinatorial interpretation in terms of Young tableaux. The main technical innovations involve techniques from the representation theory of the symmetric group, especially the combinatorics of Young tableaux. We show that low noise sensitivity implies concentration on “simple'' components of the Fourier spectrum, and that this fact will allow us to agnostically learn half spaces under permutation invariant distributions to constant accuracy in roughly the same time as in the uniform distribution over the Boolean hypercube case.","PeriodicalId":228365,"journal":{"name":"2010 IEEE 51st Annual Symposium on Foundations of Computer Science","volume":"41 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2010-10-23","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"11","resultStr":"{\"title\":\"Agnostically Learning under Permutation Invariant Distributions\",\"authors\":\"K. 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The main tools used are a theorem of Peres~\\\\cite{Peres04} bounding the {\\\\it noise sensitivity} of a half space, a result of~\\\\cite{KOS04} that this theorem implies Fourier concentration, and a modification of the Low-Degree algorithm of Linial, Man sour, Nisan~\\\\cite{LMN:93} made by Kalai et. al.~\\\\cite{KKMS08}. These results are extended to arbitrary product distributions in~\\\\cite{BOWi08}. We prove analogous results for permutation invariant distributions, more generally, we work in the domain of the symmetric group. We define noise sensitivity in this setting, and show that noise sensitivity has a nice combinatorial interpretation in terms of Young tableaux. The main technical innovations involve techniques from the representation theory of the symmetric group, especially the combinatorics of Young tableaux. 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引用次数: 11
摘要
我们将计算学习理论中在布尔超立方$\{0,1\}^n$均匀分布下成功的算法推广到在置换不变分布下成功的算法。排列不变分布是指实例中发生排列后概率质量保持不变的分布。虽然我们泛化中的工具模拟了用于布尔超立方体的工具,但排列不变分布不是乘积分布这一事实构成了一个重大障碍。在均匀分布下,对于常数$\eps$,半空间可以在多项式时间内进行不可知论学习。使用的主要工具是Peres的一个定理\cite{Peres04}限定了半空间的{\it噪声灵敏度},\cite{KOS04}的结果表明该定理意味着傅里叶浓度,以及Kalai等人\cite{KKMS08}对Linial, Man sour, Nisan \cite{LMN:93}的Low-Degree算法的修改。这些结果推广到\cite{BOWi08}中的任意乘积分布。我们证明了置换不变分布的类似结果,更一般地说,我们是在对称群的定义域上工作的。在这种情况下,我们定义了噪声敏感性,并表明噪声敏感性在杨氏场景中有一个很好的组合解释。主要的技术创新涉及对称群的表示理论,特别是杨格表的组合学。我们表明,低噪声灵敏度意味着集中在傅立叶谱的“简单”分量上,这一事实将使我们能够在排列不变分布下以恒定精度不可知论地学习半空间,其时间与布尔超立方体情况下的均匀分布大致相同。
Agnostically Learning under Permutation Invariant Distributions
We generalize algorithms from computational learning theory that are successful under the uniform distribution on the Boolean hypercube $\{0,1\}^n$ to algorithms successful on permutation invariant distributions. A permutation invariant distribution is a distribution where the probability mass remains constant upon permutations in the instances. While the tools in our generalization mimic those used for the Boolean hypercube, the fact that permutation invariant distributions are not product distributions presents a significant obstacle. Under the uniform distribution, half spaces can be agnostically learned in polynomial time for constant $\eps$. The main tools used are a theorem of Peres~\cite{Peres04} bounding the {\it noise sensitivity} of a half space, a result of~\cite{KOS04} that this theorem implies Fourier concentration, and a modification of the Low-Degree algorithm of Linial, Man sour, Nisan~\cite{LMN:93} made by Kalai et. al.~\cite{KKMS08}. These results are extended to arbitrary product distributions in~\cite{BOWi08}. We prove analogous results for permutation invariant distributions, more generally, we work in the domain of the symmetric group. We define noise sensitivity in this setting, and show that noise sensitivity has a nice combinatorial interpretation in terms of Young tableaux. The main technical innovations involve techniques from the representation theory of the symmetric group, especially the combinatorics of Young tableaux. We show that low noise sensitivity implies concentration on “simple'' components of the Fourier spectrum, and that this fact will allow us to agnostically learn half spaces under permutation invariant distributions to constant accuracy in roughly the same time as in the uniform distribution over the Boolean hypercube case.