A New Interpretable Neural Network-Based Rule Model for Healthcare Decision Making

09/20/2023
by   Adrien Benamira, et al.
0

In healthcare applications, understanding how machine/deep learning models make decisions is crucial. In this study, we introduce a neural network framework, Truth Table rules (TT-rules), that combines the global and exact interpretability properties of rule-based models with the high performance of deep neural networks. TT-rules is built upon Truth Table nets (TTnet), a family of deep neural networks initially developed for formal verification. By extracting the necessary and sufficient rules ℛ from the trained TTnet model (global interpretability) to yield the same output as the TTnet (exact interpretability), TT-rules effectively transforms the neural network into a rule-based model. This rule-based model supports binary classification, multi-label classification, and regression tasks for small to large tabular datasets. After outlining the framework, we evaluate TT-rules' performance on healthcare applications and compare it to state-of-the-art rule-based methods. Our results demonstrate that TT-rules achieves equal or higher performance compared to other interpretable methods. Notably, TT-rules presents the first accurate rule-based model capable of fitting large tabular datasets, including two real-life DNA datasets with over 20K features.

READ FULL TEXT

page 1

page 2

page 3

research
09/18/2023

Neural Network-Based Rule Models With Truth Tables

Understanding the decision-making process of a machine/deep learning mod...
research
08/11/2019

LoRMIkA: Local Rule-based Model Interpretability with k-optimal Associations

As we rely more and more on machine learning models for real-life decisi...
research
02/22/2023

Neural-based classification rule learning for sequential data

Discovering interpretable patterns for classification of sequential data...
research
06/14/2021

Controlling Neural Networks with Rule Representations

We propose a novel training method to integrate rules into deep learning...
research
06/29/2022

TE2Rules: Extracting Rule Lists from Tree Ensembles

Tree Ensemble (TE) models (e.g. Gradient Boosted Trees and Random Forest...
research
07/18/2022

PBRE: A Rule Extraction Method from Trained Neural Networks Designed for Smart Home Services

Designing smart home services is a complex task when multiple services w...
research
08/14/2023

Development and Evaluation of Three Chatbots for Postpartum Mood and Anxiety Disorders

In collaboration with Postpartum Support International (PSI), a non-prof...

Please sign up or login with your details

Forgot password? Click here to reset