Hungryof 2016-09-18 08:18 采纳率: 100%
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为什么matlab中相同大小的矩阵运行速度差异巨大

I extracted features from last two conv layers from model VGG-19, separately named X and Y. X and Y share the same size 19*19*512. Then I apply dimension reduction to X and Y with PCA. And I get the size 361*20. 20 is the dimension.

Then I compute X's inner product, Y's inner product and the cross-product of X and Y, separately written XX,XY,YY. By now , XX ,YY or XY all share the size of 400*1. When I put XX or XY into linSVM as input, it shows badly efficiency and the accuracy of trainset is quite low(about 50%). However, YY as the input shows 100% accuracy of trainset and shows surprising speed. So it really confuses me. Is it possible?

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  • hijack00 2016-09-19 04:48
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    PCA里面涉及奇异值分解SVD,这种运算跟矩阵自身的性质有关系的(比如矩阵病态时可能性能会急剧下降),同样大小的矩阵,如果矩阵自身性质不好,也可能会耗用更多的计算时间。

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