Interpretable by Design: Learning Predictors by Composing Interpretable Queries

07/03/2022
by   Aditya Chattopadhyay, et al.
7

There is a growing concern about typically opaque decision-making with high-performance machine learning algorithms. Providing an explanation of the reasoning process in domain-specific terms can be crucial for adoption in risk-sensitive domains such as healthcare. We argue that machine learning algorithms should be interpretable by design and that the language in which these interpretations are expressed should be domain- and task-dependent. Consequently, we base our model's prediction on a family of user-defined and task-specific binary functions of the data, each having a clear interpretation to the end-user. We then minimize the expected number of queries needed for accurate prediction on any given input. As the solution is generally intractable, following prior work, we choose the queries sequentially based on information gain. However, in contrast to previous work, we need not assume the queries are conditionally independent. Instead, we leverage a stochastic generative model (VAE) and an MCMC algorithm (Unadjusted Langevin) to select the most informative query about the input based on previous query-answers. This enables the online determination of a query chain of whatever depth is required to resolve prediction ambiguities. Finally, experiments on vision and NLP tasks demonstrate the efficacy of our approach and its superiority over post-hoc explanations.

READ FULL TEXT

page 9

page 24

page 25

page 26

page 27

page 28

page 29

page 30

research
02/06/2023

Variational Information Pursuit for Interpretable Predictions

There is a growing interest in the machine learning community in develop...
research
10/15/2020

Altruist: Argumentative Explanations through Local Interpretations of Predictive Models

Interpretable machine learning is an emerging field providing solutions ...
research
08/24/2023

Variational Information Pursuit with Large Language and Multimodal Models for Interpretable Predictions

Variational Information Pursuit (V-IP) is a framework for making interpr...
research
08/10/2022

E Pluribus Unum Interpretable Convolutional Neural Networks

The adoption of Convolutional Neural Network (CNN) models in high-stake ...
research
08/26/2020

Making Neural Networks Interpretable with Attribution: Application to Implicit Signals Prediction

Explaining recommendations enables users to understand whether recommend...
research
07/22/2022

CQE in OWL 2 QL: A "Longest Honeymoon" Approach (extended version)

Controlled Query Evaluation (CQE) has been recently studied in the conte...
research
07/15/2019

Concept-Centric Visual Turing Tests for Method Validation

Recent advances in machine learning for medical imaging have led to impr...

Please sign up or login with your details

Forgot password? Click here to reset