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Selection of the Suitable Neighborhood Size Based on Bayesian Information Criterion

机译:基于贝叶斯信息准则的邻域大小选择

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摘要

To select a suitable neighborhood size for manifold learning algorithms efficiently, a new method based on BIC (Bayesian Information Criterion) is used in this paper. Due to the locally Euclidean property of the manifold, the PCA (Principal Component Analysis) reconstruction errors of the neighborhoods without shortcut edges remain small; however, those of the neighborhoods with shortcut edges are relatively quite large. So all the PCA reconstruction errors fall into two clusters when the neighborhood size is unsuitable, or one cluster when the neighborhood size is suitable, which can be detected by BIC. Concretely speaking, if the BIC value of the two-cluster solution is larger than that of the one-cluster solution, all the PCA reconstruction errors fall into two clusters, which means that the neighborhood size is unsuitable, otherwise which means that the neighborhood size is suitable. This method only requires running PCA and computing BIC, whose time complexities are relatively small, but not running the time-consuming manifold learning algorithm as those methods based on residual variance do, so this method is much more efficient than those methods based on residual variance. The effectivity of this method can be verified by experimental results well.
机译:为了有效地为流形学习算法选择合适的邻域大小,本文采用了一种基于BIC(贝叶斯信息准则)的新方法。由于流形的局部欧几里得性质,没有捷径的邻域的PCA(主成分分析)重建误差仍然很小;但是,那些具有捷径的社区比较大。因此,当邻域大小不合适时,所有PCA重构错误都分为两个簇,而当邻域大小合适时,所有PCA重构错误都可以归类为一个簇,可以通过BIC进行检测。具体地说,如果两簇解决方案的BIC值大于一簇解决方案的BIC值,则所有PCA重构误差都将落入两个簇中,这意味着邻域大小不合适,否则意味着邻域大小适合。该方法只需要运行PCA和计算BIC,它们的时间复杂度相对较小,但不需要像那些基于残差方差的方法那样运行耗时的流形学习算法,因此该方法比基于残差方差的方法效率更高。 。实验结果很好地证明了该方法的有效性。

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