Interactive slice visualization for exploring machine learning models

01/18/2021
by   Catherine B. Hurley, et al.
0

Machine learning models fit complex algorithms to arbitrarily large datasets. These algorithms are well-known to be high on performance and low on interpretability. We use interactive visualization of slices of predictor space to address the interpretability deficit; in effect opening up the black-box of machine learning algorithms, for the purpose of interrogating, explaining, validating and comparing model fits. Slices are specified directly through interaction, or using various touring algorithms designed to visit high-occupancy sections or regions where the model fits have interesting properties. The methods presented here are implemented in the R package condvis2.

READ FULL TEXT

page 24

page 27

research
09/19/2019

InterpretML: A Unified Framework for Machine Learning Interpretability

InterpretML is an open-source Python package which exposes machine learn...
research
07/17/2018

RuleMatrix: Visualizing and Understanding Classifiers with Rules

With the growing adoption of machine learning techniques, there is a sur...
research
09/10/2021

Global and Local Interpretation of black-box Machine Learning models to determine prognostic factors from early COVID-19 data

The COVID-19 corona virus has claimed 4.1 million lives, as of July 24, ...
research
07/17/2018

Beyond Heuristics: Learning Visualization Design

In this paper, we describe a research agenda for deriving design princip...
research
09/10/2020

Actionable Interpretation of Machine Learning Models for Sequential Data: Dementia-related Agitation Use Case

Machine learning has shown successes for complex learning problems in wh...
research
10/10/2019

Dialog on a canvas with a machine

We propose a new form of human-machine interaction. It is a pictorial ga...
research
11/18/2022

Learning on Health Fairness and Environmental Justice via Interactive Visualization

This paper introduces an interactive visualization interface with a mach...

Please sign up or login with your details

Forgot password? Click here to reset