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arxiv 2305.00805 v1 pith:65SEJBHT submitted 2023-05-01 cs.LG

Interpreting Deep Forest through Feature Contribution and MDI Feature Importance

classification cs.LG
keywords deepfeatureforestlayerforestsimportancerandomcalculation
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Deep forest is a non-differentiable deep model which has achieved impressive empirical success across a wide variety of applications, especially on categorical/symbolic or mixed modeling tasks. Many of the application fields prefer explainable models, such as random forests with feature contributions that can provide local explanation for each prediction, and Mean Decrease Impurity (MDI) that can provide global feature importance. However, deep forest, as a cascade of random forests, possesses interpretability only at the first layer. From the second layer on, many of the tree splits occur on the new features generated by the previous layer, which makes existing explanatory tools for random forests inapplicable. To disclose the impact of the original features in the deep layers, we design a calculation method with an estimation step followed by a calibration step for each layer, and propose our feature contribution and MDI feature importance calculation tools for deep forest. Experimental results on both simulated data and real world data verify the effectiveness of our methods.

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