Publications

Leveraging position bias to improve peer recommendation

Abstract

With the advent of social media and peer production, the amount of new online content has grown dramatically. To identify interesting items in the vast stream of new content, providers must rely on peer recommendation to aggregate opinions of their many users. Due to human cognitive biases, the presentation order strongly affects how people allocate attention to the available content. Moreover, we can manipulate attention through the presentation order of items to change the way peer recommendation works. We experimentally evaluate this effect using Amazon Mechanical Turk. We find that different policies for ordering content can steer user attention so as to improve the outcomes of peer recommendation.

Date
June 11, 2014
Authors
Kristina Lerman, Tad Hogg
Journal
PloS one
Volume
9
Issue
6
Pages
e98914
Publisher
Public Library of Science