Talk:Second partial derivative test

Latest comment: 9 years ago by Joel B. Lewis in topic Figure Needed

Method to shift the Hessian in higher dimensions

edit

It says in the article that in higher dimensions you need to look at the eigenvalues. However, as is clearly explained in the article on positive definite matrix, it is possible to simply evaluate the 'leading principal minors' of the matrix (ie, the determinants of the upper-left square submatrices of sizes 1, 2, 3,..., n). If they are all positive, the Hessian is positive definite and we have a minimum. If the first one is negative and they alternate sign, then the Hessian is negative definite and we have a maximum. This method is much simpler than calculating the eigenvalues, as it does not require us to actually solve any non-linear polynomial equation. 140.180.55.46 (talk) 04:46, 16 November 2011 (UTC)Reply

Its never mentioned in the article that this can be used as a critical step in Newton's Method (amongst other numerical methods of unconstrained optimization). Further, its an important issue that Newton's method not converge to a saddle point when this is not desired. In order to ensure that the method converges to a local minimum or maximum often the Hessian matrix is shifted sufficiently to pass the Second partial derivative test as desired; unfortunately, there is nothing mentioned in this article about how to do that, its not as simple as H = H + k*diagonalMatrix (or identity matrix), is it? Regardless, there should be some discussion on this. — Preceding unsigned comment added by 90.215.230.136 (talk) 00:01, 11 August 2011 (UTC)Reply


"don't overdo it"? lame... —Preceding unsigned comment added by 82.81.248.49 (talk) 19:15, 3 November 2007 (UTC)Reply

It's also POV; for many applications -- say, writing code, a numerical computation of the Hessian is more feasible than writing an algorithm to qualitatively analyze the level curves. Saying that one method is "overdoing it" compared to another is a bias. --Heath 198.82.167.78 (talk) 22:54, 17 September 2008 (UTC)Reply
I think "overdoing it" was meant more for people analyzing simple surfaces (planes, paraboloids, the like), in which case it would be ridiculous to bother using the second derivative test. Nonetheless, it's not all that helpful and I don't find it contributes to the article; it's strictly about the SDT and not surface analysis. Section removed. StoicalSoul (talk) 01:47, 5 October 2008 (UTC)Reply

The geometric Interpretation of the determinant

edit

I’d wonder what geometric interpretation the determinant has in this case. Does it even have one? Suppose we have a function in which M > 0 and fxx < 0 for all (x,y), then there can only exist one maximum? - Or can one conclude this one the basis of M > 0 alone? Perhaps this should be further explained in the article!?. Sorry for the bad English! --83.72.7.63 (talk) 14:19, 14 January 2008 (UTC)Reply

Added a quick interpretation of it. Please help improve if it needs more clarification! 65.9.171.12 (talk) 03:51, 11 October 2008 (UTC)Reply

Yes it has one. The determinant of the hessian at a particular point is the same as the Gaussian curvature of the graph at that point. If it is positively curved (locally spherical), there are two cases to consider concave up or concave down (fxx>0 or fxx<0). If it is negative, there is only such surface, a saddle. — Preceding unsigned comment added by 66.215.204.74 (talk) 06:31, 6 March 2012 (UTC)Reply

I don't get...

edit

In the geometric intuition example, what does it mean when it says "between the x and y axis"? How can you be between axes?71.33.4.235 (talk) 01:20, 28 April 2013 (UTC)Reply

Error in example

edit

The example of finding the critical points of   has an error.

 

Thus the point   is not a critical point, while   is.

Including a plot of   would really aid understanding of the example.

Adamace123 (talk) 14:14, 14 October 2008 (UTC)Reply

fixed Semifinalist (talk) 15:24, 25 August 2010 (UTC)Reply

Duplicate content

edit

Hessian_matrix#Second_derivative_test discusses the same thing as this article and even does it better. This page and that section should be somehow merged, I think. - X7q (talk) 08:21, 15 May 2009 (UTC)Reply

Meaning of M in explanation of geometric interpretation

edit

Please explain what M stands for in the geometric interpretation explantion of a 2-D hessian. — Preceding unsigned comment added by Shreya.bits (talkcontribs) 04:36, 21 May 2013 (UTC)Reply

If I'm not mistaken M=D, so this is probably just a typo.--Kmhkmh (talk) 05:24, 21 May 2013 (UTC)Reply
Yes, it had previously been M for half the article and D for half, and when I standardized it seems I missed a couple of Ms. JBL (talk) 13:33, 21 May 2013 (UTC)Reply


Figure Needed

edit

In the section "Geometric interpretation in the two-variable case" a figure is desperately needed for the case where D<0 and both fxx and fyy have the same sign. This is the most interesting case and the most difficult to understand. A figure would really help here. -MATThematical (talk) 09:36, 18 October 2015 (UTC)Reply

Well, I have resolved this, but perhaps in a way you will not appreciate: I removed the section. Someone with access to a couple decent multivariable calc books might be able to find a version of this with some sourcing, but what was written there struck me as mostly handwaving. --JBL (talk) 22:57, 18 October 2015 (UTC)Reply