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Conditions for Unnecessary Logical Constraints in Kernel Machines

机译:内核机器中不必要的逻辑约束条件

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A main property of support vector machines consists in the fact that only a small portion of the training data is significant to determine the maximum margin separating hyperplane in the feature space, the so called support vectors. In a similar way, in the general scheme of learning from constraints, where possibly several constraints are considered, some of them may turn out to be unnecessary with respect to the learning optimization, even if they are active for a given optimal solution. In this paper we extend the definition of support vector to support constraint and we provide some criteria to determine which constraints can be removed from the learning problem still yielding the same optima] solutions. In particular, we discuss the case of logical constraints expressed by Lukasiewicz logic, where both inferential and algebraic arguments can be considered. Some theoretical results that characterize the concept of unnecessary constraint are proved and explained by means of examples.
机译:支持向量机的主要特性在于,只有一小部分训练数据对确定特征空间中的最大超边界分离超平面有效,即所谓的支持向量。以类似的方式,在从约束中学习的通用方案中,可能考虑了几个约束,即使对于给定的最佳解决方案它们是有效的,对于学习优化,其中某些约束可能变得不必要。在本文中,我们将支持向量的定义扩展到支持约束条件,并提供一些标准来确定可以从学习问题中删除哪些约束条件,从而仍然产生相同的最优解。特别是,我们讨论了由卢卡西维奇逻辑表达的逻辑约束的情况,其中可以同时考虑推论论证和代数论证。通过实例证明并解释了表征不必要约束概念的一些理论结果。

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