Marginal Effects for Non-Linear Prediction Functions

01/21/2022
by   Christian A. Scholbeck, et al.
4

Beta coefficients for linear regression models represent the ideal form of an interpretable feature effect. However, for non-linear models and especially generalized linear models, the estimated coefficients cannot be interpreted as a direct feature effect on the predicted outcome. Hence, marginal effects are typically used as approximations for feature effects, either in the shape of derivatives of the prediction function or forward differences in prediction due to a change in a feature value. While marginal effects are commonly used in many scientific fields, they have not yet been adopted as a model-agnostic interpretation method for machine learning models. This may stem from their inflexibility as a univariate feature effect and their inability to deal with the non-linearities found in black box models. We introduce a new class of marginal effects termed forward marginal effects. We argue to abandon derivatives in favor of better-interpretable forward differences. Furthermore, we generalize marginal effects based on forward differences to multivariate changes in feature values. To account for the non-linearity of prediction functions, we introduce a non-linearity measure for marginal effects. We argue against summarizing feature effects of a non-linear prediction function in a single metric such as the average marginal effect. Instead, we propose to partition the feature space to compute conditional average marginal effects on feature subspaces, which serve as conditional feature effect estimates.

READ FULL TEXT

page 13

page 21

page 22

research
04/08/2019

Sampling, Intervention, Prediction, Aggregation: A Generalized Framework for Model Agnostic Interpretations

Non-linear machine learning models often trade off a great predictive pe...
research
02/15/2022

REPID: Regional Effect Plots with implicit Interaction Detection

Machine learning models can automatically learn complex relationships, s...
research
11/22/2016

Feature Importance Measure for Non-linear Learning Algorithms

Complex problems may require sophisticated, non-linear learning methods ...
research
03/15/2012

On a Class of Bias-Amplifying Variables that Endanger Effect Estimates

This note deals with a class of variables that, if conditioned on, tends...
research
06/01/2023

Decomposing Global Feature Effects Based on Feature Interactions

Global feature effect methods, such as partial dependence plots, provide...
research
05/05/2018

Conditional and marginal relative risk parameters for a class of recursive regression graph models

In linear regression modelling the distortion of effects after marginali...
research
09/06/2021

Bringing a Ruler Into the Black Box: Uncovering Feature Impact from Individual Conditional Expectation Plots

As machine learning systems become more ubiquitous, methods for understa...

Please sign up or login with your details

Forgot password? Click here to reset