Homophily and minority size explain perception biases in social networks
October 24, 2017 Β· Declared Dead Β· π Nature Human Behaviour
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Authors
Eun Lee, Fariba Karimi, Claudia Wagner, Hang-Hyun Jo, Markus Strohmaier, Mirta Galesic
arXiv ID
1710.08601
Category
physics.soc-ph
Cross-listed
cs.SI
Citations
132
Venue
Nature Human Behaviour
Last Checked
4 months ago
Abstract
People's perceptions about the size of minority groups in social networks can be biased, often showing systematic over- or underestimation. These social perception biases are often attributed to biased cognitive or motivational processes. Here we show that both over- and underestimation of the size of a minority group can emerge solely from structural properties of social networks. Using a generative network model, we show analytically that these biases depend on the level of homophily and its asymmetric nature, as well as on the size of the minority group. Our model predictions correspond well with empirical data from a cross-cultural survey and with numerical calculations on six real-world networks. We also show under what circumstances individuals can reduce their biases by relying on perceptions of their neighbors. This work advances our understanding of the impact of network structure on social perception biases and offers a quantitative approach for addressing related issues in society.
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