Learning a Formula of Interpretability to Learn Interpretable Formulas

04/23/2020
by   Marco Virgolin, et al.
0

Many risk-sensitive applications require Machine Learning (ML) models to be interpretable. Attempts to obtain interpretable models typically rely on tuning, by trial-and-error, hyper-parameters of model complexity that are only loosely related to interpretability. We show that it is instead possible to take a meta-learning approach: an ML model of non-trivial Proxies of Human Interpretability (PHIs) can be learned from human feedback, then this model can be incorporated within an ML training process to directly optimize for interpretability. We show this for evolutionary symbolic regression. We first design and distribute a survey finalized at finding a link between features of mathematical formulas and two established PHIs, simulatability and decomposability. Next, we use the resulting dataset to learn an ML model of interpretability. Lastly, we query this model to estimate the interpretability of evolving solutions within bi-objective genetic programming. We perform experiments on five synthetic and eight real-world symbolic regression problems, comparing to the traditional use of solution size minimization. The results show that the use of our model leads to formulas that are, for a same level of accuracy-interpretability trade-off, either significantly more or equally accurate. Moreover, the formulas are also arguably more interpretable. Given the very positive results, we believe that our approach represents an important stepping stone for the design of next-generation interpretable (evolutionary) ML algorithms.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/13/2021

Model Learning with Personalized Interpretability Estimation (ML-PIE)

High-stakes applications require AI-generated models to be interpretable...
research
04/05/2022

Less is More: A Call to Focus on Simpler Models in Genetic Programming for Interpretable Machine Learning

Interpretability can be critical for the safe and responsible use of mac...
research
04/03/2023

Interpretable Symbolic Regression for Data Science: Analysis of the 2022 Competition

Symbolic regression searches for analytic expressions that accurately de...
research
06/01/2023

SPINEX: Similarity-based Predictions and Explainable Neighbors Exploration for Regression and Classification Tasks in Machine Learning

The field of machine learning (ML) has witnessed significant advancement...
research
10/05/2021

Foundations of Symbolic Languages for Model Interpretability

Several queries and scores have recently been proposed to explain indivi...
research
07/11/2023

Scale Alone Does not Improve Mechanistic Interpretability in Vision Models

In light of the recent widespread adoption of AI systems, understanding ...
research
07/24/2023

Discovering interpretable elastoplasticity models via the neural polynomial method enabled symbolic regressions

Conventional neural network elastoplasticity models are often perceived ...

Please sign up or login with your details

Forgot password? Click here to reset