Questions tagged [convex-optimization]

Convex minimization, a subfield of optimization, studies the problem of minimizing convex functions over convex sets. The convexity property can make optimization in some sense "easier" than the general case - for example, any local minimum must be a global minimum.

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22 views

Convex Optimization problem labeled as non convex

I'm using cvxpy (1.0.11) to solve a convex optimization problem. The convex problem I have is being labelled as non-convex I think because it does not know that the parameter alpha is bounded between ...
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45 views

Any differences in cvxpy library between l2 norm and sum_of_square?

I am trying to use cvxpy lib to solve a very simple least square problem. But I found that cvxpy gave me very different results when I use sum_squares and norm(x,2) as loss functions. The same ...
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41 views

How to tell cvxpy how to sum over values of a matrix in an objective function?

I want to implement this optimization problem from this paper using cvxpy or any similar library. The problem I am facing is how do I code this so it is understandable for cvxpy. from cvxpy import * ...
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1answer
22 views

Can PSO converge at a point with non-zero derivative?

I am using this library - https://pythonhosted.org/pyswarm/ to find the global minima of a convex function. This is just to get started and work towards a non-convex function. I found the global ...
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62 views

Mosek solver failing when constraints added to optimisation problem (10000 variable, using Python/cvxpy)

In short The optimisation problem below is declared infeasible when run with Mosek, but is solvable (easily and accurately) using the open-source solver ECOS. I'm wondering: why is such an advanced ...
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37 views

Minimization of an equation using Python

I have four vectors. x = [0.4, -0.3, 0.9] y1 = [0.3, 1, 0] y2 = [1, -0.9, 0.5] y3 =[0.6, 0.01, 0.8] I need to minimize following equation: where 0 <= a,b,g <= 1. I have tried to use scipy....
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22 views

how to write a linear function into convex matrix based-python language for optimization

I have set network maximum flow in linear program format and already written in convex function with constraints. My intention is to optimize the function using convex linear solver in Python (...
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21 views

polynomial least squares fit: unintuitive result when regularizing and adding a constraint

I have a polynomial least squares problem, and when I (1) regularize and (2) add a constraint (fit 4), the fit would look good if I flipped the sign and shifted it down. This is shown in the plot: I'...
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32 views

Solving the conjugate function

I want to plot a the conjugate function in python How I can solve this equation f (x) = − log x, with domf = R++. By definition, the conjugate function is given by fstar(y) = supx(yx + log x). As a ...
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1answer
22 views

Convex and non-convex problems in machine learning

In convolutional neural networks(CNNs), I read that activation functions like tanh are good only for convex problems/optimizations. What does it really mean? What are convex and non-convex ...
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215 views

Convex optimization problem does not follow DCP rules

I am trying to solve the following optimization problem using cvxpy: x and delta_x are (1,N) row vectors. A is a (N,N) symmetric matrix and b is a scalar. I am trying to find a y, such that it ...
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3answers
96 views

How to tell if Newtons-Method Fails

I am creating a basic Newton-method algorithm for an unconstrained optimization problem, and my results from the algorithm are not what I expected. It is a simple objective function so it is clear ...
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153 views

CVXPY error: “NotImplementedError: Strict inequalities are not allowed”

def PPNM_model(a,E, beta): p = E.shape[1] x = E*a x = sum(x,beta*cp.square(x)) return x def PPNM_model_cvxpy(a,E,beta): first = E*a second = beta*cp.square(first) third = sum(first,...
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1answer
139 views

Block LMI in CVXPY

I want to translate a LMI-constrained optimization problem from Matlab to Python. While reading the CVXPY documentation, I found that I can define an LMI-constrained problem by creating a matrix ...
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33 views

Optimization using different dimensions of input data

I have a convex optimization case where I am trying to solve for 2 different set of weights. The first dataframe is (10,3), the second (10,10) and a vector (10,1). I coded up the following dummy code, ...
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1answer
158 views

OpenCV Python: Closed Contour Approximation For A Speech Bubble Shape

I've got a shape like a speech bubble. And I only want to detect the ellipse of this shape like in the image with the green encircled one. I tried with closed morphology, but certain parts of the ...
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2answers
135 views

How to gain speed in Python function minimization to find solutions to Ellipsoid equation

Introduction Using Python, I want to retrieve a set of solutions that satisfy the following equation describing an ellipsoid: where H is a positive definite matrix. In order to retrieve a vector x ...
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148 views

Violated constraint in CVXPY

I have a problem that can sometimes be infeasible. The desired behaviour is relax the constraint that was violated and continue, but alert the user that a constraint was violated. I noticed that ...
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1answer
44 views

ojAlog - ConvexSolver in Kotlin: 2d Array

I'm trying to implement some example as I am planning to explore ojAlgo for optimization purposes. My question is really simple. In Java I can easily write: PrimitiveDenseStore Q = ...
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55 views

How to do a Pandas GroupBy using CVXPY atoms?

I have a convex problem which has a sum_square term which is working very well: from cvxpy import Variable, Parameter, Problem, Minimize from pandas import Series target = Variable(n, nonneg=True, ...
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69 views

Implementation CVX MATLAB Constraints

This is my optimization problem: a_x = 0; ay = 0; gamma=0; cvx_begin variable k(n_0) minimize ( norm(D_2*k,1) + 0.2*norm(k,1) ) subject to norm(((S*(cos(S*k_hat) - sin(S*k_hat).*...
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42 views

Log_sum_exp of a convex function is not dcp compliant?

I have a convex function f(b): f(b) = log(pi) - lambda * log( t(r) %*% b) dim(pi) = (n,1), lambda is a scalar constant, dim(r) = (n,n) b is the parameter, dim(b) = (n,1) The call to is_convex(f) ...
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1answer
171 views

fmincon doesn't find a global minimum for a convex function

In my opinion, fmincon is a built-in function for local minimum in matlab. If the objective function is a convex problem, there is only one basin and the local minimum is the global minimum. While ...
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1answer
91 views

Converting Conditional Statements Into Linear Constraints

I am trying to convert the 3rd condition below to a linear constraint. I have included the full problem and my progress for illustrative purposes. An manufacturer is considering manufacturing three ...
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1answer
93 views

Julia error using convex package with diagind function

I'm trying to solve the problem d = 0.5 * ||X - \Sigma||_{Frobenius Norm} + 0.01 * ||XX||_{1}, where X is a symmetric positive definite matrix, and all the diagnoal element should be 1. XX is same ...
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1answer
27 views

A function with variables and parameters as arguments of fminunc function

I am trying to use fminunc function in matlab to solve an unconstrained minimization problem. This function has the format [x,f] = fminunc (@fun,x0); Here, the defined fun is an input of fminunc as ...
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1answer
64 views

passing in options to solvers from cvxr solve function

I am using CVXR to solve a problem with constrains. The solver gives result that doesn't satisfy all constrains. result <- solve(problem, solver='ECOS', verbose=TRUE, ecos.control(maxit=2000)) ...
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1answer
445 views

What are the specific reasons for CVXPY to throw `SolverError` exception?

I am using CVXPY (version 1.0) to solve a quadratic program (QP) and I often get this exception: SolverError: Solver 'xxx' failed. Try another solver. which makes my program really fragile. I ...
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1answer
53 views

Function and its gradient in Matlab

I am working on a Matlab project and I want to make the gradient of the following function in Matlab: f(x) = c^T * x - sum (log(bi - (ai ^ T) * x)). Where ai^T are the rows of a random A matrix nxm ...
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0answers
398 views

L1 convex optimization with equality constraints in python

I need to minimize L_1(x) subject to Mx = y. x is a vector with dimension b, y is a vector with dimension a, and M is a matrix with dimensions (a,b). After some reading I determined to use scipy....
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249 views

Entry-wise constraints in CVXPY

I try to impose some elementwise constraints to the optimization variable using cvxpy. Here is the code: import cvxpy as cv import numpy as np import scipy.io as spio mat = spio.loadmat('data.mat', ...
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1answer
286 views

Conditional Constraints

Is there a way in cvxpy to have a conditional constraint, I am looking at a simple convex portfolio optimization problem like this one. from cvxpy import * import numpy as np np.random.seed(1) n = ...
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236 views

Defining a soft constraint in cvxpy

I am using cvxpy to do a simple portfolio optimization. I implemented the following dummy code from cvxpy import * import numpy as np np.random.seed(1) n = 10 Sigma = np.random.randn(n, n) Sigma ...
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74 views

svm as a convex optimization (OP)

So, I am trying to understand SVM and convex optimization problem; and how are these two linked, i.e how can we write SVM problem in standard form of an optimization problem? And is this problem ...
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89 views

convex optimization without function values

Suppose I have a function whose values are hard to compute, while the gradient and Hessian are easy, and I am trying to optimize it on a convex polytope. Here is an example: let g(x) = - integral ...
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1answer
86 views

CVXPY throws SolverError

When using CVXPY, I frequently get "SolverError". Their doc just says this is caused by numerical issues, but no further information is given about how to avoid them. The following code snippet is ...
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1answer
156 views

Difference of Convex Functions Optimization

I am looking for the method or idea to solve the following optimization problem: min f(x) s.t. g(xi, yi) <= f(x), i=1,...,n where x, y are variables in R^n. f(x) is convex function with ...
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275 views

cvxpy solve attribute returns none

I have written the following code import cvxpy import numpy as np def missingMat(A, mask):##true and false for known and missing entries M=np.array(A) for i in range(0, mask.shape[0]): ...
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1answer
158 views

'sum_entries / axis' related error

I am new to cvxpy and would be grateful for your help with the following issue. I wrote the following simple optimization code: import cvxpy as cvx import numpy as np m = 4 n = 3 c = np.array([[2, ...
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1answer
215 views

Is negative quadratic function quasiconvex

I read in book (Convex Optimization, boyd) that quasiconvex (or unimodal) if its domain and all its sublevel sets Sα = {x ∈ dom f | f(x) ≤ α}, for α ∈ R, are convex. And if and only if f(x) is non-...
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65 views

Max area quadrilateral inside a convex

I'm having trouble finding an efficient algorithm for the next problem: Given a convex polygon of size N (when N > 4), find a quadrilateral which is inclosed in the polygon with a maximal area You ...
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1answer
47 views

Does a quasi linear function has global maxima or minima

I am trying to optimize a single fractional function given as b+mx/c-mx. I consulted some references about its convexity, the function is a quasi linear function but I am not sure whether it has same ...
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2answers
207 views

Convexity of ratio of two linear functions

I am working on optimization of an objective function which is a ratio of two linear functions given as mx + b/-mx+c. Can somebody comment about convexity of this function and/or give me some ...
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1answer
329 views

Specify solver in CVXR

I am new to the package CVXR. I am using it to do the convex optimization within each iteration of EM algorithms. Everything is fine at first but after 38 iterations, I have an error: Error in ...
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137 views

Minimum jerk trajectory with CVXPY

I am trying to numerically solve the problem of generating a 1D minimum jerk trajectory using cvxpy (version 0.4.9). Here is the basic statement of the problem, 'x' is the vector of position as a ...
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1answer
237 views

Package CVXR: Error in as.vector(data): no method for coercing this S4 class to a vector

I am trying to use the package CVXR to do my optimization. I am following the instructions from this page: https://rviews.rstudio.com/2017/11/27/introduction-to-cvxr/ My problem is a little ...
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1answer
46 views

is there a simpler, early termination condition in primal dual algorithm for constrained quadratic function

Currently, I'm using a primal-dual method to minimize a quadratic problem with simple linear constraints (specifically, x >= 0). For the termination condition, I'm currently using the standard: ie ...
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1answer
426 views

lpSolve package seems to give strange results

I am using the R "lpSolve" package downloaded from Cran link and it seems to give strange answers. I wanted to make sure that it is not me messing up things (which is likely the case). For example, ...
2
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0answers
47 views

efficiently reusing/updating julia convex constraints

I'm using Julia (with Convex) to solve a convex problem many times with the same constraint structure. Right now, I have something like the following simplified structure: using Convex N = Int16(1e4) ...
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0answers
45 views

Handling rounding errors of exponential function in convex optimization for scheduling web crawler

I am writing web crawler scheduler and have run into problems. First I will describe how I'm trying to find optimal schedule for when my crawler is visiting the page and then I will present my problem....