Simpler knowledge-based support vector machines

Quoc V. Le, Alex Smola, Thomas Gärtner
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引用次数: 38

Abstract

If appropriately used, prior knowledge can significantly improve the predictive accuracy of learning algorithms or reduce the amount of training data needed. In this paper we introduce a simple method to incorporate prior knowledge in support vector machines by modifying the hypothesis space rather than the optimization problem. The optimization problem is amenable to solution by the constrained concave convex procedure, which finds a local optimum. The paper discusses different kinds of prior knowledge and demonstrates the applicability of the approach in some characteristic experiments.
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更简单的基于知识的支持向量机
如果使用得当,先验知识可以显著提高学习算法的预测精度或减少所需的训练数据量。本文介绍了一种简单的方法,通过修改假设空间而不是优化问题来将先验知识纳入支持向量机。优化问题可以用约束凹凸法求解,该方法求出一个局部最优。本文讨论了不同类型的先验知识,并在一些特征实验中证明了该方法的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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