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A Fast Linear Separability Test by Projection of Positive Points on Subspaces

机译:通过对子空间上的正点投影进行快速线性可分性测试

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A geometric and non parametric procedure for testing if two finite set of points are linearly separable is proposed. The Linear Separability Test is equivalent to a test that determines if a strictly positive point h > 0 exists in the range of a matrix A (related to the points in the two finite sets). The algorithm proposed in the paper iteratively checks if a strictly positive point exists in a subspace by projecting a strictly positive vector with equal co-ordinates (p), on the subspace. At the end of each iteration, the subspace is reduced to a lower dimensional subspace. The test is completed within r ≤ min(n, d + 1) steps, for both linearly separable and non separable problems (r is the rank of A, n is the number of points and d is the dimension of the space containing the points). The worst case time complexity of the algorithm is O(nr{sup}3) and space complexity of the algorithm is O(nd). A small review of some of the prominent algorithms and their time complexities is included. The worst case computational complexity of our algorithm is lower than the worst case computational complexity of Simplex, Perceptron, Support Vector Machine and Convex Hull Algorithms, if d < n{sup}(2/3).
机译:提出了一种用于测试的几何和非参数过程,如果提出了两个有限点是线性可分离的。线性可分离性测试等同于确定在矩阵A的范围内是否存在严格正点H> 0的测试(与两个有限组中的点)的范围。在纸张中提出的算法迭代地检查子空间中是否存在严格的正向点,通过在子空间上投射严格的CONININATE(P)的严格正矢量。在每次迭代结束时,子空间减少到较低的维度子空间。在R≤min(n,d + 1)步骤内完成测试,对于线性可分离和不可分离的问题(R是A的等级,n是点数,d是包含该点的空间的尺寸)。算法的最坏情况时间复杂度是O(NR {SUP} 3)和算法的空间复杂度是O(nd)。还包括一些突出算法及其时间复杂性的小综述。如果D

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