Convex Optimization is a special case of mathematical optimization where the feasible region is convex and the objective is to either minimize a convex function or maximize a concave function.

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Optimization algorithm selection for 3 variable integer

I have a cost function: $f(x,y,z) \rightarrow \mathbb{R}$ it is very expensive to evaluate $x,y,z \in \mathbb{Z}$ 0 < x < 10 0 < y < 30 0 < z < 100 I thought it was convex, not ...
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Quadratic Programming: Quadprog

Given a real-rectangular matrix $S$ and inorder to solve this simple quadratic programming problem: Minimize $w'S'Sw = ||S w||^2$ over $w$ subject to $e^Tw = 1$ and $w \geq 0$ using a solver I ...
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77 views

Biconvex optimization problems

Consider minimization of a biconvex function over a biconvex set. Is the biconvex optimization problems polynomially solvable?
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How to prove that a function is convex?

I'm calculating the gradient of a function with a symbolic math library called theano. Then I'm using gradient descent to find the minimum of the function. I'd like to prove that the minimum is a ...
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51 views

Analytical form of the minimum of a function with absolute values

I would like to find the analytical form of the point which minimizes the following function: $$ f(x_T) = \frac{1}{T} a_1 (x_T-x_0)^2 + a_2 |x_T-x_0| + T a_3 + \sum_{i=1}^M p_i \left[b_{1i} (x_T - ...
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138 views

Finding A and X such that AX = 0, X is positive non-zero, and A is sparse

I apologize if this is a naive question. I'm trying to create some boostrap data for a system of linear, ordinary differential equations at steady state. Since the equations represent the ...
6
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1answer
80 views

Why is the Dual problem preferred for Maximal Margin Classification?

The primal problem is $$\min_{w,b}\frac{1}{2}w^Tw$$ $$s.t. f_i(w)=1-y_i(w\cdot x_i+b)\leq0$$ Where $y_i=\pm1$. Instead of using Gradient Descent directly, the dual is usually solved: ...
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38 views

Confusion related to convexity of 0-1 loss function

I am a bit confused why the 0-1 loss function is not convex. What's wrong with it?
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268 views

MATLAB's CVX Package to minimize $\mathrm{trace}(S)+\mathrm{trace}(S^{-2})$

I would like to minimize in matlab the function $f(S)=\mathrm{trace}(S)+\mathrm{trace}(S^{-2})$ where $S\in \mathcal{M}_{m,m}$ symmetric positive definite which is definitely convex function. So I ...
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1answer
45 views

Confusion related to interior point method for optimization

I have this little confusion related to interior point method. In this method we use the log barrier function to approximate the real barrier which is not differential Now when we find the optimal ...
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1answer
26 views

Confusion while proving logdet function to be concave

I was going through this lecture related to convex optimization. It was proved that logdet function is concave. However, I didn't get the derivation at a part I didn't get how the step marked in ...
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82 views

Confusion related to convexity and concavity of a function

I was reading this paper http://www.ist.temple.edu/~vucetic/documents/wang11kdd.pdf related to adaptive multi-hyperplane machine for non linear classification In that paper, they have mentioned about ...
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Robust Counterpart of an uncertain LP

Consider the following robust optimization problem: min c'x s.t.: $Ax\geq b \;\;\forall (A,b)\in \mathcal{U}$. Why can the robust counterpart of the problem be written in this form? $min_x{\{ ...
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1answer
27 views

Polynomial solvability [duplicate]

Consider the following optimization problem: Min$_{x}$ $\qquad \sum_{(i,j,t,s)\in I_r}||x_ix_j-x_tx_s||^2$ S.t.: $\qquad x\in \mathcal{C} ;$ where $x=(x_1,x_2,...x_n)$ and $\quad x_j\geq 0\;\; ...
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1answer
49 views

Feasibility checking

Consider the following optimization problem: $Min\;\;\; CX$ $AX\geq b$ $x_ix_j= x_s x_t\;\;\; i\neq j \neq s\neq t$ $x_j\geq 0;$ Where $A$ is the adjacency matrix and $C$ is a constant vector. ...
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1answer
73 views

polynomial time solvability

Consider the following optimization problem: $Min \qquad C^TX$ S.t.: $\qquad AX=0;$ $x_ix_j=x_kx_t$$\quad $for some $i\neq j\neq k\neq t$ $X=(x_1,x_2,...x_n)$ and $\quad x_j\geq 0\;\; ...
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1answer
64 views

Nonlinear bad constraints

I have an optimization problem with linear objective function. The constraints are in two different groups. The first set of constraints are linear while the second set is nonlinear. The nonlinear ...
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1answer
80 views

Numerical Methods for minimizing a Non-Differentiable Convex Function of Several Variables

I have a multi-variable convex continuous function which is not differentiable. I am interested to know about different numerical techniques, possibly also references to them, used for this. Read ...
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1answer
53 views

Extreme points from constraint expression of convex space

I'm looking for the extreme points of the convex set $S\subset [-1,1]^{n\times 3}$ with $r\in S$ such that \begin{equation} r_{i} \ge r_{k} \iff i\ge k, \end{equation} where the first inequality ...
6
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2answers
115 views

Max of a convex combination over a convex hull of real variables

I have the following linear program: $$ \begin{array}{cc} \text{Maximize} & a^T x \\ \text{Subject to} & x_{\min} \leq x \leq x_{\max} \\ & \mathbf{1}^T x = 1 ...
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1answer
42 views

Existence of a solution at a stationary equation for quadratics

Given a convex quadratic function $f(x)$, to obtain a solution for which $f(x)$ has minimal value one sets $\nabla f(x)=0$, and solves for $x$. Suppose that the result of differentiation of convex ...
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1answer
51 views

Minimal point of a intersection of $n$ convex sets is always the minimal point of the intersection of two convex sets?

I have the intuition that the minimal point (in the sense of having the lowest value in one of the Euclidean space dimensions) of a intersection of $n$ convex sets is always the minimal point of the ...
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2answers
212 views

Quadratic program With Linear Constraint vs. Eigen Decomposition Time Complexity-Comparison. Which is faster?

Say I had the choice of choosing one out of the following two optimization problems which I could use to solve my problem. Which choice is the fastest? How much of a trade-off would it be-as in - Is ...
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CVXOPT VS. OpenOpt

CVXOPT: http://abel.ee.ucla.edu/cvxopt/index.html OpenOpt: http://openopt.org/Welcome What's the relation between them? What are the advantages/disadvantages of them, respectively? BTW, is there ...
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Is it possible to represent non-linear ranking type constraints as equivalent linear constraints?

I have formulated a linear program with binary indicator variables $z_i(a)$ which is equal to $1$ if the $i^{th}$ document is of rank $a$ and $0$ otherwise. The other variables in the linear ...
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3answers
159 views

How to intellligently attempt to rule out convexity?

I want to minimize a complicated objective function, and I'm not sure if it is convex. Is there a nice algorithm that attempts to prove that it is not convex? Of course the algorithm could fail to ...
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1answer
119 views

How to calculate the maximal ellipsoid in a given polyhedron

I am faced with the problem of finding the ellipsoid $B$ ($B$ is a symmetric positive definite matrix) of maximal volume within a convex set $C$ given as a set of linear inequalities $C=\{x| a_i^T x ...
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1answer
169 views

Solving PSD matrix in Newton's method

I have functions defined as follows: $f1(A) = \sum\|x_i-x_j\|_A = \sum\sqrt{(x_i-x_j)^TA(x_i-x_j)}$ and $f2(A) = \sum\|x_k-x_l\|^2_A$ where A is PSD matrix, x are number vectors. Task is to minimize ...
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1answer
133 views

Polynomial Regression using Semidefinite Programming

I'm trying to design the frequency response function for a low-pass filter. I need the function to be polynomial and to fulfill the following constraints: the coefficients must sum to 1, the function ...
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406 views

How is geometric programming different from convex programming?

How is (generalized) geometric programming different from general convex programming? A geometric program can be transformed into a convex program, and is typically solved by an interior point ...
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269 views

What is the best way to solve Ax = b (with A large, spd, sparse, banded and poorly conditioned)?

I'm trying to solve $Ax = b$ given a vector $b$ and a large, symmetric positive definite, sparse, banded matrix $A$ that has a very poor condition number. I know several iterative methods that ...
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What are the advantages/disadvantages of interior point methods over simplex method for linear optimization?

As I understand it, since a solution to a linear program always occurs at a vertex of its polyhedral feasible set (if a solution exists and the optimal objective function value is bounded from below, ...
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236 views

Does there exist an arbitrary-precision convex optimization solver?

I have a relatively simple convex optimization problem that involves less than 100 variables but contains a terribly ill-conditioned matrix. I have tried CVX and CPLEX; even though both can typically ...