首页> 外文会议>Annual Conference on Learning Theory(COLT 2006); 20060622-25; Pittsburgh,PA(US) >Uniform-Distribution Learnability of Noisy Linear Threshold Functions with Restricted Focus of Attention
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Uniform-Distribution Learnability of Noisy Linear Threshold Functions with Restricted Focus of Attention

机译:注意力集中受限的噪声线性阈值函数的均匀分布可学习性

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Recently, Kalai et al. [1] have shown (among other things) that linear threshold functions over the Boolean cube and unit sphere are agnostically learnable with respect to the uniform distribution using the hypothesis class of polynomial threshold functions. Their primary algorithm computes monomials of large constant degree, although they also analyze a low-degree algorithm for learning origin-centered halfspaces over the unit sphere. This paper explores noise-tolerant learnability of linear thresholds over the cube when the learner sees a very limited portion of each instance. Uniform-distribution weak learnability results are derived for the agnostic, unknown attribute noise, and malicious noise models. The noise rates that can be tolerated vary: the rate is essentially optimal for attribute noise, constant (roughly 1/8) for agnostic learning, and non-trivial (Ω(1/(n~(1/2)))) for malicious noise. In addition, a new model that lies between the product attribute and malicious noise models is introduced, and in this stronger model results similar to those for the standard attribute noise model are obtained for learning homogeneous linear thresholds with respect to the uniform distribution over the cube. The learning algorithms presented are simple and have small-polynomial running times.
机译:最近,Kalai等人。 [1]已证明(除其他事项外)使用多项式阈值函数的假设类,就均匀分布而言,布尔立方体和单位球面上的线性阈值函数是不可知论的。他们的主要算法计算的是恒定常数大的单项式,尽管他们还分析了用于学习单位球面上以原点为中心的半空间的低度算法。当学习者看到每个实例的非常有限的部分时,本文将探索多维数据集上线性阈值的容忍可学习性。对于不可知,未知属性噪声和恶意噪声模型,得出均匀分布的弱学习性结果。可以容忍的噪声速率是变化的:对于属性噪声,该速率本质上是最佳的;对于不可知论学习,该速率通常是恒定的(大约1/8);对于以下情况,该速率是不平凡的(Ω(1 /(n〜(1/2))))恶意噪音。此外,引入了一个介于产品属性和恶意噪声模型之间的新模型,在这种更强大的模型中,获得了与标准属性噪声模型相似的结果,以学习关于立方体上均匀分布的均匀线性阈值。提出的学习算法很简单,并且运行时间短。

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