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Decision boundary learning based on particle swarm optimization

机译:基于粒子群优化的决策边界学习

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In neural network (NN) learning, we usually find an NN to minimize the approximation error for a given training set. Depends on the data given, the performance of the NN can vary significantly. In fact, if the training data are close to the true decision boundary (DB), the NN can generalize well. On the other hand, if the given data are far away from the true DB, the DB formed by the NN can be very different from the original one, and the genelization ability of the NN cannot be high. Based on this observation, we propose a new concept called decision boundary learning (DBL) in this study. A direct way for DBL is to approximate the true DB using a support vector machine (SVM), and then find a set of training patterns using particle swarm optimization (PSO). Experimental results on four public databases show that the training patterns so obtained may generate much better NNs, and in all cases, the NNs are comparable to or better than SVMs, although they are much simpler.
机译:在神经网络(NN)学习中,我们通常会找到一个NN,以最小化给定训练集的近似误差。取决于给出的数据,NN的性能可以显着变化。实际上,如果训练数据接近真正的决策边界(DB),则NN可以概括很好。另一方面,如果给定的数据远离真实DB,则由NN形成的DB与原始DB可以非常不同,并且NN的遗传能力不能高。基于这一观察,我们提出了一项名为决策边界学习(DBL)的新概念。 DBL的直接方法是使用支持向量机(SVM)近似真实DB,然后使用粒子群优化(PSO)找到一组训练模式。四个公共数据库的实验结果表明,如此获得的训练模式可能产生更好的NNS,并且在所有情况下,NNS与SVM相当或更好,尽管它们更简单。

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