In this thesis, new methods for large-scale non-linear optimization are presented. In particular, an active-set algorithm for bound-constrained optimization is first proposed, characterized by the use of a suitable active-set estimate that enables us to update separately the variables estimated active and those estimated non-active at each iteration. Then, this approach is extended to solve minimization problems over the unit simplex and to the minimization of a function over the l1-ball. In the last chapter, a data filtering strategy for cluster analysis is proposed, based on solving a least squares problem with l0-norm regularization. Finally, for all the proposed methods, a theoretical analysis is carried out and numerical results are provided.

Large-scale optimization: new active-set methods and application in unsupervised learning

CRISTOFARI, ANDREA
2017

Abstract

In this thesis, new methods for large-scale non-linear optimization are presented. In particular, an active-set algorithm for bound-constrained optimization is first proposed, characterized by the use of a suitable active-set estimate that enables us to update separately the variables estimated active and those estimated non-active at each iteration. Then, this approach is extended to solve minimization problems over the unit simplex and to the minimization of a function over the l1-ball. In the last chapter, a data filtering strategy for cluster analysis is proposed, based on solving a least squares problem with l0-norm regularization. Finally, for all the proposed methods, a theoretical analysis is carried out and numerical results are provided.
13-feb-2017
Inglese
LUCIDI, Stefano
MONACO, Salvatore
Università degli Studi di Roma "La Sapienza"
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14242/178914
Il codice NBN di questa tesi è URN:NBN:IT:UNIROMA1-178914