Displaying 20 results from an estimated 3000 matches similar to: "Quadratic Optimization"
2007 Dec 06
1
Solve.QP
Hi there,
I have a major problem (major for me that is) with solve.QP and I'm new at this. You see, to solve my quadratic program I need to have the lagrange multipliers after each iteration. Solve.QP gives me the solution, the unconstrained solution aswell as the optimal value. Does anybody have an idea for how I could extract the multipliers?
Thanx,
Serge
"Beatus qui prodest quibus
2012 Jan 02
2
quadratic programming-maximization instead of minization
Hi, I need to maximize a quadratic function under constraints in R.
For minimization I used solve.QP but for maximization it is not useful since
the matrix D of the quadratic function
should be positive definite hence I cannot simply change the sign.
any suggestion ?
thanks
--
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2012 Jun 13
3
How to plot linear, cubic and quadratic fitting curve in a figure?
Hi R experts,
Could you please help me to fit a linear, cubic and quadratic curve in a figure? I was trying to show all these three fitting curves with different colour in one figure.
I spent substantial time to figure it out, but I could not.
I have given here a example and what I did for linear, but no idea for cubic and quadratic fitting curve
> dput(test)
structure(list(sp = c(4L, 5L,
2005 May 01
3
Roots of quadratic system.
Hello,
I have a system of quadratic equations (results of a Hamiltonian optimization)
which I need to find the roots for. Is there a package and/or function which
will find the roots for a quadratic system? Note that I am not opimizing, but
rather solving the first order conditions which come from a Hamiltonian. I am
basically looking for something in R that will do the same thing as fsolve in
2005 Jul 19
2
Taking the derivative of a quadratic B-spline
Hello,
I have been trying to take the derivative of a quadratic B-spline
obtained by using the COBS library. What I would like to do is
similar to what one can do by using
fit<-smooth.spline(cdf)
xx<-seq(-10,10,.1)
predict(fit, xx, deriv = 1)
The goal is to fit the spline to data that is approximating a
cumulative distribution function (e.g. in my example, cdf is a
2-column matrix with x
2009 Sep 20
2
Quadratic Constraints
HI All,
I am unable to solve a optimization Problem Please Help Me out of this to
solve. The Optimization problem is as follows :-
My objective function is linear and one of the constraint is quadratic.
Min z = 5 * X1 + 9* X2 + 7.15 *X3 + 2 * X4
subject to
X1 + X2 + X3 +X4 = 9
X1 + X4 < = 6.55
X3(X3 - 3.5) >=0
X1,X2,X3,X4 >=0
Now the problem is how to solve this kind of
2007 Dec 22
1
using solve.qp without a quadratic term
I was playing around with a simple example using solve.qp ( function is in the quadprog package ) and the code is below. ( I'm not even sure there if there is a reasonable solution because I made the problem up ).
But, when I try to use solve.QP to solve it, I get the error that D in the quadratic function is not positive
definite. This is because Dmat is zero
because I don't have a
2009 Nov 08
2
linear trend line and a quadratic trend line.
Dear list users
How is it possible to visualise both a linear trend line and a quadratic trend line on a plot
of two variables?
Here my almost working exsample.
data(Duncan)
attach(Duncan)
plot(prestige ~ income)
abline(lm(prestige ~ income), col=2, lwd=2)
Now I would like to add yet another trend line, but this time a quadratic one. So I have two
trend lines. One linear trend line
2009 Oct 05
2
How to plot a Quadratic Model?
Good day for all,
I'm a beginner aRgonaut, thus I'm having a problem to plot a quadratic model
of regression in a plot.
First I wrote:
>plot(Y~X)
and then I tried:
>abline(lm(Y~X+I(X^2))
but "abline" only uses the first two of three regression coefficients, thus
I tried:
>line(lm(Y~X+I(X^2))
but a message error is showed ("insufficient observations").
2008 Feb 15
2
Quadratic Programming
Hi,
I am using solve.QP (from quadprog) to solve a standard quadratic
programming problem: min_w -0.5*w'Qw st ... I would like solve.QP to do two
things: 1) to start the optimization from a user-supplied initial
condition; i.e., from a vector w_0 that satisfies the constraints, and 2) to
return the values of the lagrange multiplieres associated with the
constraints. I did not find an obvious
2010 Dec 04
1
Quadratic programming with semi-definite matrix
Hello.
I'm trying to solve a quadratic programming problem of the form min
||Hx - y||^2 s.t. x >= 0 and x <= t using solve.QP in the quadprog
package but I'm having problems with Dmat not being positive definite,
which is kinda okay since I expect it to be numerically semi-definite
in most cases. As far as I'm aware the problem arises because the
Goldfarb and Idnani method first
2008 May 12
1
Quadratic Constraints
Hi R,
A quick question.... How can I optimize the objective function
constrained to quadratic constraints? Which function of R is useful for
quadratic constraints?
Many Thanks,
Shubha
This e-mail may contain confidential and/or privileged i...{{dropped:13}}
2005 Nov 03
7
quadratic form
On page 22 of the R-introduction guide it's written:
the quadratic form x^{'} A^{-1} x which is used in
multivariate computations, should be computed by
something like x%*%solve(A,x), rather than computing
the inverse of A.
Why isn't it good to compute t(x) %*% solve(A) %*% x?
Thanks a lot for help!
2002 Aug 21
4
Quadratic optimization problem
I hope that someone can help me with the following question:
I would like to solve the Markowitz optimization problem WITH short-sale
constraints.
Maybe a procedure to solve a quadratic optimization problem with convex
constraints and positive variables is already implemented in R?
Thank you very much,
edg
-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-.-
r-help
2013 May 05
1
slope coefficient of a quadratic regression bootstrap
Hello,
I want to know if two quadratic regressions are significantly different.
I was advised to make the test using
step 1 bootstrapping both quadratic regressions and get their slope
coefficients.
(Let's call the slope coefficient *â*^1 and *â*^2)
step 2 use the slope difference *â*^1-*â*^2 and bootstrap the slope
coefficent
step 3 find out the sampling distribution above and
2017 Jul 13
3
How to formulate quadratic function with interaction terms for the PLS fitting model?
I have two ideas about it.
1-
i) Entering variables in quadratic form is done with the command I
(variable ^ 2) -
plsr (octane ~ NIR + I (nir ^ 2), ncomp = 10, data = gasTrain, validation =
"LOO"
You could also use a new variable NIR_sq <- (NIR) ^ 2
ii) To insert a square variable, use syntax I (x ^ 2) - it is very
important to insert I before the parentheses.
iii) If you want to
2017 Jul 13
0
How to formulate quadratic function with interaction terms for the PLS fitting model?
Below.
-- Bert
Bert Gunter
On Thu, Jul 13, 2017 at 3:07 AM, Luigi Biagini <luigi.biagini at gmail.com> wrote:
> I have two ideas about it.
>
> 1-
> i) Entering variables in quadratic form is done with the command I
> (variable ^ 2) -
> plsr (octane ~ NIR + I (nir ^ 2), ncomp = 10, data = gasTrain, validation =
> "LOO"
> You could also use a new variable
2003 Jan 21
1
(v2) quadratic trends and changes in slopes (R-help digest, Vol 1 #52 - 16 msgs)
-----Original Message-----
Message: 6
Date: Mon, 20 Jan 2003 01:11:24 +0100
From: Martin Michlmayr <tbm at cyrius.com>
To: r-help at stat.math.ethz.ch
Subject: [R] quadratic trends and changes in slopes
I'd like to use linear and quadratic trend analysis in order to find
out a change in slope. Basically, I need to solve a similar problem as
discussed in
2004 Feb 24
5
Nonlinear Optimization
Hi,
I have been brought back to the "R-Side" from MatLab. I have used R in
graduate econometrics but only for statistics and regression (linear and
nonlinear). But now I need to run general nonlinear optimization.
I know about the add-in quadprog but my problem is not QP. My problem is a
general nonlinear (obj funct) with linear constraints.I know about the "ms"
and
2008 May 22
1
Plotting a Quadratic...
I have an equation describing the best-fit model for a set of points (just 2
axes) that is in the form:
y=b+mx+px^2
Where b is the intercept, m is the slope describing a linear term, and p is
a slope of the quadratic term.
I would like to plot this equation on a curve (I know the equation is
y=(.1766x^2)+(.171x)+.101) on the original scatterplot. Any easy way to plot
this equation and