0 v 7 9 O ct 2 00 3 Smoothed Analysis of Algorithms : Why the Simplex Algorithm Usually Takes Polynomial Time ∗
نویسندگان
چکیده
We introduce the smoothed analysis of algorithms, which continuously interpolates between the worst-case and average-case analyses of algorithms. In smoothed analysis, we measure the maximum over inputs of the expected performance of an algorithm under small random perturbations of that input. We measure this performance in terms of both the input size and the magnitude of the perturbations. We show that the simplex algorithm has smoothed complexity polynomial in the input size and the standard deviation of Gaussian perturbations.
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ar X iv : c s . D S / 01 11 05 0 v 7 9 O ct 2 00 3 Smoothed Analysis of Algorithms : Why the Simplex Algorithm Usually Takes Polynomial Time ∗
We introduce the smoothed analysis of algorithms, which continuously interpolates between the worst-case and average-case analyses of algorithms. In smoothed analysis, we measure the maximum over inputs of the expected performance of an algorithm under small random perturbations of that input. We measure this performance in terms of both the input size and the magnitude of the perturbations. We...
متن کامل0 v 5 [ cs . D S ] 1 7 Ju l 2 00 2 Smoothed Analysis of Algorithms : Why the Simplex Algorithm Usually Takes Polynomial Time ∗
We introduce the smoothed analysis of algorithms, which is a hybrid of the worst-case and average-case analysis of algorithms. In smoothed analysis, we measure the maximum over inputs of the expected performance of an algorithm under small random perturbations of that input. We measure this performance in terms of both the input size and the magnitude of the perturbations. We show that the simp...
متن کامل0 v 3 [ cs . D S ] 2 5 Ju n 20 02 Smoothed Analysis of Algorithms : Why the Simplex Algorithm Usually Takes Polynomial Time ∗
We introduce the smoothed analysis of algorithms, which is a hybrid of the worst-case and average-case analysis of algorithms. In smoothed analysis, we measure the maximum over inputs of the expected performance of an algorithm under small random perturbations of that input. We measure this performance in terms of both the input size and the magnitude of the perturbations. We show that the simp...
متن کاملM ar 2 00 3 Smoothed Analysis of Algorithms : Why the Simplex Algorithm Usually Takes Polynomial Time ∗
We introduce the smoothed analysis of algorithms, which is a hybrid of the worst-case and average-case analysis of algorithms. In smoothed analysis, we measure the maximum over inputs of the expected performance of an algorithm under small random perturbations of that input. We measure this performance in terms of both the input size and the magnitude of the perturbations. We show that the simp...
متن کامل0 v 4 [ cs . D S ] 2 5 Ju n 20 02 Smoothed Analysis of Algorithms : Why the Simplex Algorithm Usually Takes Polynomial Time ∗ Daniel
We introduce the smoothed analysis of algorithms, which is a hybrid of the worst-case and average-case analysis of algorithms. In smoothed analysis, we measure the maximum over inputs of the expected performance of an algorithm under small random perturbations of that input. We measure this performance in terms of both the input size and the magnitude of the perturbations. We show that the simp...
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تاریخ انتشار 2003