Advanced robust and nonparametric methods in efficiency analysis : Methodology and applications

Advanced robust and nonparametric methods in efficiency analysis : Methodology and applications


This readable book makes available an intuitive yet rigorous presentation of advanced nonparametric and robust methods. This flexible toolbox can be used in theories based on the neoclassical theory of production and its alternatives, including evolutionary theories.



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