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Maximum Margin Algorithms with Boolean Kernels

机译:布尔核的最大保证金算法

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Recent work has introduced Boolean kernels with which one can learn over a feature space containing all conjunctions of length up to k (for any 1 ≤ k ≤ n) over the original n Boolean features in the input space. This motivates the question of whether maximum margin algorithms such as support vector machines can learn Disjunctive Normal Form expressions in the PAC learning model using this kernel. We study this question, as well as a variant in which structural risk minimization (SRM) is performed where the class hierarchy is taken over the length of conjunctions. We show that such maximum margin algorithms do not PAC learn t(n)-term DNF for any t(n) = ω (1), even when used with such a SRM scheme. We also consider PAC learning under the uniform distribution and show that if the kernel uses conjunctions of length ω(n~(1/2)) then the maximum margin hypothesis will fail on the uniform distribution as well. Our results concretely illustrate that margin based algorithms may overfit when learning simple target functions with natural kernels.
机译:最近的工作引入了布尔核,利用布尔核可以在一个特征空间上学习,该特征空间包含输入空间中原始n个布尔特征的最高达k(对于任何1≤k≤n)的所有连接点。这引发了这样一个问题,即最大余量算法(例如支持向量机)是否可以使用此内核在PAC学习模型中学习析取正态表达式。我们研究了这个问题,以及研究其中的结构风险最小化(SRM)的一种变体,其中,类层次结构是在连词的长度范围内进行的。我们表明,即使与这种SRM方案一起使用,对于任何t(n)=ω(1),此类最大余量算法也不会PAC学习t(n)项DNF。我们还考虑了均匀分布下的PAC学习,并表明如果内核使用长度为ω(n〜(1/2))的合点,则最大余量假设也会在均匀分布上失败。我们的结果具体说明,当学习具有自然核的简单目标函数时,基于余量的算法可能会过拟合。

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