Why should I use cross-correlation and auto-correlation to determine the number of delays in a NARX neural network?
조회 수: 5 (최근 30일)
이전 댓글 표시
I'm working with a NARX network to model the response of a dynamic system. I have the data for both the input signal and the system response. In trying to figure out the appropriate number of delays that I need to use (both input and feedback delays), I have come across several references to cross-correlation and auto-correlation. As I understand it, I would pick the delays that correspond to the highest peaks in the auto-correlation and cross-correlation plots, as they are more statistically significant than the others. What I'm not understanding is why is it appropriate to use that in the context of neural networks?
댓글 수: 0
채택된 답변
Greg Heath
2013년 8월 1일
It doesn't matter if it is a neural network or any other nonlinear regression model.
There tends to be a high probability that inputs with significant linear input-output correlations have a significant effect on outputs when a nonlinear regression model is used.
Similarly, there tends to be a high probability that inputs with insignificant linear input-output correlations have an insignificant effect on outputs when a nonlinear regression model is used.
Hope this helps.
Greg
댓글 수: 1
추가 답변 (0개)
참고 항목
카테고리
Help Center 및 File Exchange에서 Sequence and Numeric Feature Data Workflows에 대해 자세히 알아보기
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!