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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39 views

CVXPY vs CVX: Same problem, different results

I have a main program I am running in python which I would to use CVXPY for, but I receive a DCP error when I try to do so. To check this, I implemented the exact same problem in Matlab, and it seemed ...
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18 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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23 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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29 views

why not solve hyper parameter λ of L2 regularization in DNN simultaneously

The regularation like weight decay in DNN is related to the Inequality Constraints optimisation. According to Lagrange Multipliers and the Karush-Kuhn-Tucker conditions, there exist a unique λ when ...
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16 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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141 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
92 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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44 views

Diverging BFGS optimization algorithm results

I am attempting to replicate the BFGS algorithm in python for an unconstrained optimization problem. When I run the algorithm, my results diverge, and I cannot figure out why. Here is the algorithm ...
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103 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
101 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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32 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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97 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
129 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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113 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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46 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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55 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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41 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
125 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
74 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
89 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
25 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
54 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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337 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
52 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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324 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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219 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
239 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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188 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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69 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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85 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
77 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
136 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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220 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
141 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
206 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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63 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
44 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
154 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
275 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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129 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
220 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
360 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, ...
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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....
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1answer
324 views

Is there a way to solve linear matrix inequalities in Python? Or an LMI library in Python?

I want to know if there is a method to solve linear matrix inequalities (LMIs) in Python? Or, possibly, an LMI-library? For instance, I am looking for a solution of LMIs that result from Lyapunov ...
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1answer
174 views

How do I resolve the “Inner matrix dimensions must agree” error?

This is my code in CVX: load('C') r=C(:,4); t=C(:,5); n = size(C,1); N = 100; for i=1:n eta(i,1) = randn()/2; end cvx_begin variable x(n,1) maximize r'*x - t'*x subject to ...
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1answer
47 views

How to find the complexity of solving a 0-1 second order cone programming?

I have a 0-1 second order cone (SOC) problem and I need to know the complexity of solving this problem if branch and cut (B&C) method is used?. The way I addressed this question is as following: ...
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1answer
390 views

cardinality constraint in portfolio optimisation

I am using cvxpy to work on some simple portfolio optimisation problem. The only constraint I can't get my head around is the cardinality constraint for the number non-zero portfolio holdings. I tried ...