Portfolio Optimization with LASSO

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ANDREA MUZI
ANDREA MUZI on 12 Oct 2020
Answered: ANDREA MUZI on 12 Oct 2020
I have to find the optimal portfolio adding the "l-1 norm" constraint to the classical mean-variance model. How can i write this optimization in matricial form ?

Answers (2)

Ameer Hamza
Ameer Hamza on 12 Oct 2020
Edited: Ameer Hamza on 12 Oct 2020
This shows an example for the case of 5 portfolios
mu = rand(1, 5);
eta = 0.5;
Sigma = ones(5);
Aeq = [mu; ones(1, 5)];
Beq = [eta; 1];
x0 = rand(5,1); % initial guess
sol = fmincon(@(x) x.'*Sigma*x, x0, [], [], Aeq, Beq, [], [], @nlcon);
function [c, ceq] = nlcon(x)
c = sum(abs(x))-1;
ceq = [];
end
  4 Comments
Ameer Hamza
Ameer Hamza on 12 Oct 2020
Then the code in my answer satisfies all the constraints. You can verify
mu = rand(1, 5);
eta = 0.5;
Sigma = ones(5);
Aeq = [mu; ones(1, 5)];
Beq = [eta; 1];
x0 = rand(5,1); % initial guess
sol = fmincon(@(x) x.'*Sigma*x, x0, [], [], Aeq, Beq, [], [], @nlcon);
function [c, ceq] = nlcon(x)
c = sum(abs(x))-1;
ceq = [];
end
Results
>> mu*sol % output is eta
ans =
0.5000
>> sum(sol) % sum is 1
ans =
1
>> sum(abs(sol)) % sum of absolute values is 1
ans =
1

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ANDREA MUZI
ANDREA MUZI on 12 Oct 2020
I thank you but it is not the result I expected; I try to rephrase the question. I found a way to linearize the constraint on the weights norm (photo). Basically I have to find the vector between tmin and tmax, in which tmin penalizes all the weights of the assets, bringing them to zero, except one whose weight will be equal to 1 and tmax, whose value will not penalize any asset

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