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A continuous exact $$\ell_0$$ penalty (CEL0) for least squares regularized problem. (English) Zbl 1325.65086

##### MSC:
 65K05 Numerical mathematical programming methods 90C26 Nonconvex programming, global optimization 90C55 Methods of successive quadratic programming type
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