Keeping Community in the Loop: Understanding Wikipedia Stakeholder Values for Machine Learning-Based Systems

01/14/2020
by   C. Estelle Smith, et al.
0

On Wikipedia, sophisticated algorithmic tools are used to assess the quality of edits and take corrective actions. However, algorithms can fail to solve the problems they were designed for if they conflict with the values of communities who use them. In this study, we take a Value-Sensitive Algorithm Design approach to understanding a community-created and -maintained machine learning-based algorithm called the Objective Revision Evaluation System (ORES)—a quality prediction system used in numerous Wikipedia applications and contexts. Five major values converged across stakeholder groups that ORES (and its dependent applications) should: (1) reduce the effort of community maintenance, (2) maintain human judgement as the final authority, (3) support differing peoples' differing workflows, (4) encourage positive engagement with diverse editor groups, and (5) establish trustworthiness of people and algorithms within the community. We reveal tensions between these values and discuss implications for future research to improve algorithms like ORES.

READ FULL TEXT
research
08/17/2022

"We Need a Woman in Music": Exploring Wikipedia's Values on Article Priority

Wikipedia – like most peer production communities – suffers from a basic...
research
06/14/2023

Using Wikipedia Editor Information to Build High-performance Recommender Systems

Wikipedia has high-quality articles on a variety of topics and has been ...
research
12/20/2018

Towards Value-Sensitive Learning Analytics Design

To support ethical considerations and system integrity in learning analy...
research
02/11/2022

The Risks, Benefits, and Consequences of Prepublication Moderation: Evidence from 17 Wikipedia Language Editions

Many online communities rely on postpublication moderation where contrib...
research
07/14/2020

Individual Factors that Influence Effort and Contributions on Wikipedia

In this work, we aim to analyze how attitude, self-efficacy, and altruis...
research
07/11/2019

PreCall: A Visual Interface for Threshold Optimization in ML Model Selection

Machine learning systems are ubiquitous in various kinds of digital appl...
research
09/26/2017

Beyond opening up the black box: Investigating the role of algorithmic systems in Wikipedian organizational culture

Scholars and practitioners across domains are increasingly concerned wit...

Please sign up or login with your details

Forgot password? Click here to reset