Loopin Matrix Multiplication Performance Improvement

1 次查看(过去 30 天)
Hi all! I'm struggling to reduce computation time on a function I created:
function [beta,covariance,residuals] = hac_regression(y,x,ratio)
t = length(y);
[beta,~,residuals] = regress(y,x);
h = diag(residuals) * x;
q_hat = (x.' * x) / t;
o_hat = (h.' * h) / t;
l = round(ratio * t,0);
for i = 1:(l - 1)
o_tmp = (h(1:(t-i),:).' * h((1+i):t,:)) / (t - i);
o_hat = o_hat + (((l - i) / l) * (o_tmp + o_tmp.'));
end
covariance = (q_hat \ o_hat) / q_hat;
end
Below, a result of a profiling run:
I think nothing can be done with respect to built-in "regress" call.
But I'm wondering if the loop can somehow be optimized in order to reduce the overhead. On computations performed on very large datasets, even a small 5% improvement may dramatically reduce the overall computation time.
Below a reproducible example:
y = rand(100,1);
x = rand(100,3)
[beta,covariance,residuals] = hac_regression(y,x,0.1);
Thanks for your help!

回答(0 个)

类别

Help CenterFile Exchange 中查找有关 Logical 的更多信息

产品


版本

R2018a

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by