Title :
Interpreting random forest models using a feature contribution method
Author :
Palczewska, Anna ; Palczewski, Jan ; Robinson, Richard Marchese ; Neagu, Daniel
Author_Institution :
Dept. of Comput., Univ. of Bradford, Bradford, UK
Abstract :
Model interpretation is one of the key aspects of the model evaluation process. The explanation of the relationship between model variables and outputs is easy for statistical models, such as linear regressions, thanks to the availability of model parameters and their statistical significance. For “black box” models, such as random forest, this information is hidden inside the model structure. This work presents an approach for computing feature contributions for random forest classification models. It allows for the determination of the influence of each variable on the model prediction for an individual instance. Interpretation of feature contributions for two UCI benchmark datasets shows the potential of the proposed methodology. The robustness of results is demonstrated through an extensive analysis of feature contributions calculated for a large number of generated random forest models.
Keywords :
random processes; regression analysis; UCI benchmark datasets; black box models; feature contribution method; feature contributions; linear regressions; model evaluation process; model interpretation; model parameters; model prediction; model structure; random forest classification models; random forest models; statistical models; Analytical models; Computational modeling; Data models; Mathematical model; Predictive models; Training; Vegetation;
Conference_Titel :
Information Reuse and Integration (IRI), 2013 IEEE 14th International Conference on
Conference_Location :
San Francisco, CA
DOI :
10.1109/IRI.2013.6642461