Title of article :
An Integrated DEA and Data Mining Approach for Performance Assessment
Author/Authors :
Alinezhad, Alireza Faculty of Industrial and Mechanical Engineering - Qazvin Branch - Islamic Azad University
Abstract :
This paper presents a data envelopment analysis (DEA) model combined
with Bootstrapping to assess performance of one of the Data mining
Algorithms. We applied a two-step process for performance
productivity analysis of insurance branches within a case study. First,
using a DEA model, the study analyzes the productivity of eighteen decision-
making units (DMUs). Using a Malmquist in-dex, DEA determines
the productivity scores but cannot give details of factors depend
on regress and progress productivity. The proposed model presents
anew latent variable radial input-oriented technology and simultaneously
reduces inputs and undesirable outputs in a single multiple objective
linear programming. On the other hand, classification and
regression tree allow DMU to extract rules for ex-ploring and discovering
meaningful and hidden information from the vast data-bases. The
results provide a set of rules that can be used by policy makers to explore
reasons behind the progress and regress productivities of DMUs.
Keywords :
Data envelopment analysis , Classification and regression , tree , Bootstrapping , productivty , Malmquist index
Journal title :
Astroparticle Physics