This paper proposes to model the critical issue of the choice of the free parameters of a supervised non-linear regression technique (the so called model selection issue) as a multi-objective optimization problem. In this framework, the multi-objective function is made up of a set of two or more quality metrics (e.g.,MSE, R2, etc.) computed on the test (or validation) samples. A set of solutions is derived according to the concept of Pareto optimality. The advantages of the proposed approach with respect to the traditional ones (which typically optimize a single scalar metric) are mainly two: 1) the capability to derive solutions which jointly optimize the set of metrics considered and represent different possible optimal tradeoffs among them; and 2) the possibility for the user to effectively select the model that optimizes the requirements of the specific retrieval problem. Results achieved for the specific application of soil moisture estimation from microwave remotely sensed data w...

Multiobjective Model Selection for Non-linear Regression Techniques

Pasolli, Luca;Bruzzone, Lorenzo
2010-01-01

Abstract

This paper proposes to model the critical issue of the choice of the free parameters of a supervised non-linear regression technique (the so called model selection issue) as a multi-objective optimization problem. In this framework, the multi-objective function is made up of a set of two or more quality metrics (e.g.,MSE, R2, etc.) computed on the test (or validation) samples. A set of solutions is derived according to the concept of Pareto optimality. The advantages of the proposed approach with respect to the traditional ones (which typically optimize a single scalar metric) are mainly two: 1) the capability to derive solutions which jointly optimize the set of metrics considered and represent different possible optimal tradeoffs among them; and 2) the possibility for the user to effectively select the model that optimizes the requirements of the specific retrieval problem. Results achieved for the specific application of soil moisture estimation from microwave remotely sensed data w...
2010
2010 IEEE International Geoscience and Remote Sensing Symposium: Proceedings
Piscataway, NJ
IEEE
9781424495665
Pasolli, Luca; C., Notarnicola; Bruzzone, Lorenzo
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/85261
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