On the overlooked issue of defining explanation objectives for local-surrogate explainers

06/10/2021
by   Rafael Poyiadzi, et al.
3

Local surrogate approaches for explaining machine learning model predictions have appealing properties, such as being model-agnostic and flexible in their modelling. Several methods exist that fit this description and share this goal. However, despite their shared overall procedure, they set out different objectives, extract different information from the black-box, and consequently produce diverse explanations, that are – in general – incomparable. In this work we review the similarities and differences amongst multiple methods, with a particular focus on what information they extract from the model, as this has large impact on the output: the explanation. We discuss the implications of the lack of agreement, and clarity, amongst the methods' objectives on the research and practice of explainability.

READ FULL TEXT
research
05/04/2020

LIMEtree: Interactively Customisable Explanations Based on Local Surrogate Multi-output Regression Trees

Systems based on artificial intelligence and machine learning models sho...
research
10/29/2019

bLIMEy: Surrogate Prediction Explanations Beyond LIME

Surrogate explainers of black-box machine learning predictions are of pa...
research
11/17/2021

Uncertainty Quantification of Surrogate Explanations: an Ordinal Consensus Approach

Explainability of black-box machine learning models is crucial, in parti...
research
08/29/2022

Confounder Selection: Objectives and Approaches

Confounder selection is perhaps the most important step in the design of...
research
02/22/2021

Explainers in the Wild: Making Surrogate Explainers Robust to Distortions through Perception

Explaining the decisions of models is becoming pervasive in the image pr...
research
11/06/2020

Feature Removal Is a Unifying Principle for Model Explanation Methods

Researchers have proposed a wide variety of model explanation approaches...
research
01/27/2020

One Explanation Does Not Fit All: The Promise of Interactive Explanations for Machine Learning Transparency

The need for transparency of predictive systems based on Machine Learnin...

Please sign up or login with your details

Forgot password? Click here to reset