2018
Report  Open Access

Assessing the stability of interpretable models

Guidotti R., Ruggieri S.

Interpretable models  Stability  Overfitting 

Interpretable classification models are built with the purpose of providing a comprehensible description of the decision logic to an external oversight agent. When considered in isolation, a decision tree, a set of classification rules, or a linear model, are widely recognized as human-interpretable. However, such models are generated as part of a larger analytical process, which, in particular, comprises data collection and filtering. Selection bias in data collection or in data pre-processing may affect the model learned. Although model induction algorithms are designed to learn to generalize, they pursue optimization of predictive accuracy. It remains unclear how interpretability is instead impacted. We conduct an experimental analysis to investigate whether interpretable models are able to cope with data selection bias as far as interpretability is concerned.

Source: ISTI Technical reports, 2018



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BibTeX entry
@techreport{oai:it.cnr:prodotti:397161,
	title = {Assessing the stability of interpretable models},
	author = {Guidotti R. and Ruggieri S.},
	institution = {ISTI Technical reports, 2018},
	year = {2018}
}
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