FOLD-SE: Scalable Explainable AI

08/16/2022
by   Huaduo Wang, et al.
0

FOLD-R++ is a highly efficient and explainable rule-based machine learning algorithm for binary classification tasks. It generates a stratified normal logic program as an (explainable) trained model. We present an improvement over the FOLD-R++ algorithm, termed FOLD-SE, that provides scalable explainability (SE) while inheriting all the merits of FOLD-R++. Scalable explainability means that regardless of the size of the dataset, the number of learned rules and learned literals stay small and, hence, understandable by human beings, while maintaining good performance in classification. FOLD-SE is competitive in performance with state-of-the-art algorithms such as XGBoost and Multi-Layer Perceptrons (MLP). However, unlike XGBoost and MLP, the FOLD-SE algorithm generates a model with scalable explainability. The FOLD-SE algorithm outperforms FOLD-R++ and RIPPER algorithms in efficiency, performance, and explainability, especially for large datasets. The FOLD-RM algorithm is an extension of FOLD-R++ for multi-class classification tasks. An improved FOLD-RM algorithm built upon FOLD-SE is also presented.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/14/2022

FOLD-RM: A Scalable and Efficient Inductive Learning Algorithm for Multi-Category Classification of Mixed Data

FOLD-RM is an automated inductive learning algorithm for learning defaul...
research
01/30/2023

NeSyFOLD: A System for Generating Logic-based Explanations from Convolutional Neural Networks

We present a novel neurosymbolic system called NeSyFOLD that classifies ...
research
06/15/2022

FOLD-TR: A Scalable and Efficient Inductive Learning Algorithm for Learning To Rank

FOLD-R++ is a new inductive learning algorithm for binary classification...
research
10/15/2021

FOLD-R++: A Toolset for Automated Inductive Learning of Default Theories from Mixed Data

FOLD-R is an automated inductive learning algorithm for learning default...
research
09/26/2021

A Clustering and Demotion Based Algorithm for Inductive Learning of Default Theories

We present a clustering- and demotion-based algorithm called Kmeans-FOLD...
research
11/08/2021

Consistent Sufficient Explanations and Minimal Local Rules for explaining regression and classification models

To explain the decision of any model, we extend the notion of probabilis...
research
09/07/2017

Semantic Preserving Embeddings for Generalized Graphs

A new approach to the study of Generalized Graphs as semantic data struc...

Please sign up or login with your details

Forgot password? Click here to reset