Domain Adaptive Decision Trees: Implications for Accuracy and Fairness

02/27/2023
by   Jose M. Alvarez, et al.
0

In uses of pre-trained machine learning models, it is a known issue that the target population in which the model is being deployed may not have been reflected in the source population with which the model was trained. This can result in a biased model when deployed, leading to a reduction in model performance. One risk is that, as the population changes, certain demographic groups will be under-served or otherwise disadvantaged by the model, even as they become more represented in the target population. The field of domain adaptation proposes techniques for a situation where label data for the target population does not exist, but some information about the target distribution does exist. In this paper we contribute to the domain adaptation literature by introducing domain-adaptive decision trees (DADT). We focus on decision trees given their growing popularity due to their interpretability and performance relative to other more complex models. With DADT we aim to improve the accuracy of models trained in a source domain (or training data) that differs from the target domain (or test data). We propose an in-processing step that adjusts the information gain split criterion with outside information corresponding to the distribution of the target population. We demonstrate DADT on real data and find that it improves accuracy over a standard decision tree when testing in a shifted target population. We also study the change in fairness under demographic parity and equal opportunity. Results show an improvement in fairness with the use of DADT.

READ FULL TEXT

page 10

page 18

research
04/12/2018

Causal Generative Domain Adaptation Networks

We propose a new generative model for domain adaptation, in which traini...
research
06/15/2020

A demographic microsimulation model with an integrated household alignment method

Many dynamic microsimulation models have shown their ability to reasonab...
research
02/10/2020

Collaborative Training of Balanced Random Forests for Open Set Domain Adaptation

In this paper, we introduce a collaborative training algorithm of balanc...
research
12/21/2022

Consistent Range Approximation for Fair Predictive Modeling

This paper proposes a novel framework for certifying the fairness of pre...
research
06/24/2019

Transfer of Machine Learning Fairness across Domains

If our models are used in new or unexpected cases, do we know if they wi...
research
05/10/2023

Inclusive FinTech Lending via Contrastive Learning and Domain Adaptation

FinTech lending (e.g., micro-lending) has played a significant role in f...
research
06/25/2017

Target contrastive pessimistic risk for robust domain adaptation

In domain adaptation, classifiers with information from a source domain ...

Please sign up or login with your details

Forgot password? Click here to reset