Truly Unordered Probabilistic Rule Sets for Multi-class Classification

06/17/2022
by   Lincen Yang, et al.
0

Rule set learning has long been studied and has recently been frequently revisited due to the need for interpretable models. Still, existing methods have several shortcomings: 1) most recent methods require a binary feature matrix as input, learning rules directly from numeric variables is understudied; 2) existing methods impose orders among rules, either explicitly or implicitly, which harms interpretability; and 3) currently no method exists for learning probabilistic rule sets for multi-class target variables (there is only a method for probabilistic rule lists). We propose TURS, for Truly Unordered Rule Sets, which addresses these shortcomings. We first formalise the problem of learning truly unordered rule sets. To resolve conflicts caused by overlapping rules, i.e., instances covered by multiple rules, we propose a novel approach that exploits the probabilistic properties of our rule sets. We next develop a two-phase heuristic algorithm that learns rule sets by carefully growing rules. An important innovation is that we use a surrogate score to take the global potential of the rule set into account when learning a local rule. Finally, we empirically demonstrate that, compared to non-probabilistic and (explicitly or implicitly) ordered state-of-the-art methods, our method learns rule sets that not only have better interpretability (i.e., they are smaller and truly unordered), but also better predictive performance.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/01/2019

Interpretable multiclass classification by MDL-based rule lists

Interpretable classifiers have recently witnessed an increase in attenti...
research
03/04/2021

Learning Accurate and Interpretable Decision Rule Sets from Neural Networks

This paper proposes a new paradigm for learning a set of independent log...
research
01/17/2022

Differentiable Rule Induction with Learned Relational Features

Rule-based decision models are attractive due to their interpretability....
research
08/23/2019

Preventing the Generation of Inconsistent Sets of Classification Rules

In recent years, the interest in interpretable classification models has...
research
03/27/2020

Generation of Consistent Sets of Multi-Label Classification Rules with a Multi-Objective Evolutionary Algorithm

Multi-label classification consists in classifying an instance into two ...
research
06/17/2020

Diverse Rule Sets

While machine-learning models are flourishing and transforming many aspe...
research
06/12/2023

FIRE: An Optimization Approach for Fast Interpretable Rule Extraction

We present FIRE, Fast Interpretable Rule Extraction, an optimization-bas...

Please sign up or login with your details

Forgot password? Click here to reset