DocumentCode :
54157
Title :
A Partition-Based Framework for Building and Validating Regression Models
Author :
Muhlbacher, Thomas ; Piringer, Harald
Volume :
19
Issue :
12
fYear :
2013
fDate :
Dec. 2013
Firstpage :
1962
Lastpage :
1971
Abstract :
Regression models play a key role in many application domains for analyzing or predicting a quantitative dependent variable based on one or more independent variables. Automated approaches for building regression models are typically limited with respect to incorporating domain knowledge in the process of selecting input variables (also known as feature subset selection). Other limitations include the identification of local structures, transformations, and interactions between variables. The contribution of this paper is a framework for building regression models addressing these limitations. The framework combines a qualitative analysis of relationship structures by visualization and a quantification of relevance for ranking any number of features and pairs of features which may be categorical or continuous. A central aspect is the local approximation of the conditional target distribution by partitioning 1D and 2D feature domains into disjoint regions. This enables a visual investigation of local patterns and largely avoids structural assumptions for the quantitative ranking. We describe how the framework supports different tasks in model building (e.g., validation and comparison), and we present an interactive workflow for feature subset selection. A real-world case study illustrates the step-wise identification of a five-dimensional model for natural gas consumption. We also report feedback from domain experts after two months of deployment in the energy sector, indicating a significant effort reduction for building and improving regression models.
Keywords :
data visualisation; mathematics computing; regression analysis; solid modelling; application domains; domain knowledge; energy sector deployment; feature subset selection; five-dimensional model; input variable selection process; natural gas consumption; partition-based framework; regression model building; relevance quantification; relevance visualization; variable interaction; variable structure; variable transformation; Complexity theory; Computational modeling; Feature extraction; Frequency-domain analysis; Modeling; Regression analysis; Complexity theory; Computational modeling; Feature extraction; Frequency-domain analysis; Modeling; Regression; Regression analysis; data partitioning; feature selection; guided visualization; model building; visual knowledge discovery; Algorithms; Computer Graphics; Computer Simulation; Models, Statistical; Regression Analysis; Reproducibility of Results; Sensitivity and Specificity; User-Computer Interface;
fLanguage :
English
Journal_Title :
Visualization and Computer Graphics, IEEE Transactions on
Publisher :
ieee
ISSN :
1077-2626
Type :
jour
DOI :
10.1109/TVCG.2013.125
Filename :
6634169
Link To Document :
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