We introduce Frank, a human-in-the-loop system for co-evolutionary hybrid decision-making aiding the user to label records from an un-labeled dataset. Frank employs incremental learning to “evolve” in parallel with the user’s decisions, by training an interpretable machine learning model on the records labeled by the user. Furthermore, advances state-of-the-art approaches by offering inconsistency controls, explanations, fairness checks, and bad-faith safeguards simultaneously. We evaluate our proposal by simulating the users’ behavior with various levels of expertise and reliance on Frank’s suggestions. The experiments show that Frank’s intervention leads to improvements in the accuracy and the fairness of the decisions.
A Frank System for Co-Evolutionary Hybrid Decision-Making
Mazzoni, Federico;Guidotti, Riccardo
;Malizia, Alessio
2024-01-01
Abstract
We introduce Frank, a human-in-the-loop system for co-evolutionary hybrid decision-making aiding the user to label records from an un-labeled dataset. Frank employs incremental learning to “evolve” in parallel with the user’s decisions, by training an interpretable machine learning model on the records labeled by the user. Furthermore, advances state-of-the-art approaches by offering inconsistency controls, explanations, fairness checks, and bad-faith safeguards simultaneously. We evaluate our proposal by simulating the users’ behavior with various levels of expertise and reliance on Frank’s suggestions. The experiments show that Frank’s intervention leads to improvements in the accuracy and the fairness of the decisions.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.