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Estimating intrinsic dimension by sparse convex representation

机译:通过稀疏凸表示估计内在维

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In this paper, a novel sparse convex representation learning algorithm is proposed for estimating the intrinsic dimension of a dataset. Caratheodory's theorem states that if a point x of R lies in the convex hull of a set P, there is a subset P" of P consisting of d + 1 or fewer points such that x lies in the convex hull of P'. We believe that the maximum value, among the numbers of the nonzero elements of the sparsest convex representation of all points, implies the intrinsic dimension of a data set. The sparsest convex representation of a point lying in a convex hull means that it is a convex combination of the minimum number of the extreme points. Based on this basic idea, we constructed an objective function. Moreover, an improved orthogonal matching pursuit (OMP) method is proposed for solving it to derive a sparse convex representation. The obtained solutions can be used for estimating the dimension of the data set. The experiment results show the effectiveness and efficiency of our proposed method.
机译:本文提出了一种新的稀疏凸表示学习算法,用于估计数据集的内在维数。 Caratheodory定理指出,如果R的点x位于集合P的凸包中,则P的子集P“由d + 1或更少的点组成,因此x位于P'的凸包中。我们相信在所有点的最稀疏凸表示的非零元素的数量中,最大值表示数据集的固有维数。在此基本思想的基础上,构造了一个目标函数,并提出了一种改进的正交匹配追踪(OMP)方法来求解,以得到稀疏的凸表示,所获得的解可用于实验结果表明了该方法的有效性和有效性。

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