Designing by Training: Acceleration Neural Network for Fast High-Dimensional Convolution
Dai, Longquan, Tang, Liang, Xie, Yuan, Tang, Jinhui
–Neural Information Processing Systems
The high-dimensional convolution is widely used in various disciplines but has a serious performance problem due to its high computational complexity. Over the decades, people took a handmade approach to design fast algorithms for the Gaussian convolution. Recently, requirements for various non-Gaussian convolutions have emerged and are continuously getting higher. However, the handmade acceleration approach is no longer feasible for so many different convolutions since it is a time-consuming and painstaking job. Instead, we propose an Acceleration Network (AccNet) which turns the work of designing new fast algorithms to training the AccNet.
Neural Information Processing Systems
Feb-14-2020, 08:12:47 GMT
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