Toward a Taxonomy of Trust for Probabilistic Machine Learning

12/05/2021
by   Tamara Broderick, et al.
34

Probabilistic machine learning increasingly informs critical decisions in medicine, economics, politics, and beyond. We need evidence to support that the resulting decisions are well-founded. To aid development of trust in these decisions, we develop a taxonomy delineating where trust in an analysis can break down: (1) in the translation of real-world goals to goals on a particular set of available training data, (2) in the translation of abstract goals on the training data to a concrete mathematical problem, (3) in the use of an algorithm to solve the stated mathematical problem, and (4) in the use of a particular code implementation of the chosen algorithm. We detail how trust can fail at each step and illustrate our taxonomy with two case studies: an analysis of the efficacy of microcredit and The Economist's predictions of the 2020 US presidential election. Finally, we describe a wide variety of methods that can be used to increase trust at each step of our taxonomy. The use of our taxonomy highlights steps where existing research work on trust tends to concentrate and also steps where establishing trust is particularly challenging.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/15/2020

Formalizing Trust in Artificial Intelligence: Prerequisites, Causes and Goals of Human Trust in AI

Trust is a central component of the interaction between people and AI, i...
research
01/17/2020

Trust in AutoML: Exploring Information Needs for Establishing Trust in Automated Machine Learning Systems

We explore trust in a relatively new area of data science: Automated Mac...
research
06/15/2020

A systematic review and taxonomy of explanations in decision support and recommender systems

With the recent advances in the field of artificial intelligence, an inc...
research
03/29/2019

Informed Machine Learning - Towards a Taxonomy of Explicit Integration of Knowledge into Machine Learning

Despite the great successes of machine learning, it can have its limits ...
research
03/14/2022

Learning for Robot Decision Making under Distribution Shift: A Survey

With the recent advances in the field of deep learning, learning-based m...
research
02/23/2016

SIFT: An Algorithm for Extracting Structural Information From Taxonomies

In this work we present SIFT, a 3-step algorithm for the analysis of the...
research
08/30/2018

Asheetoxy: A Taxonomy for Classifying Negative Spreadsheet-related Phenomena

Spreadsheets (sometimes also called Excel programs) are powerful tools w...

Please sign up or login with your details

Forgot password? Click here to reset