Cognitively Biased Users Interacting with Algorithmically Biased Results in Whole-Session Search on Controversial Topics

26 Mar 2024  ·  Ben Wang, Jiqun Liu ·

When interacting with information retrieval (IR) systems, users, affected by confirmation biases, tend to select search results that confirm their existing beliefs on socially significant contentious issues. To understand the judgments and attitude changes of users searching online, our study examined how cognitively biased users interact with algorithmically biased search engine result pages (SERPs). We designed three-query search sessions on debated topics under various bias conditions. We recruited 1,321 crowdsourcing participants and explored their attitude changes, search interactions, and the effects of confirmation bias. Three key findings emerged: 1) most attitude changes occur in the initial query of a search session; 2) confirmation bias and result presentation on SERPs affect search behaviors in the current query and perceived familiarity with clicked results in subsequent queries. The bias position also affect attitude changes of users with lower perceived openness to conflicting opinions; 3) Interactions in the first query and and dwell time throughout the session are associated with users' attitude changes in different forms. Our study goes beyond traditional simulation-based evaluation settings and simulated rational users, sheds light on the mixed effects of human biases and algorithmic biases in controversial information retrieval tasks, and can inform the design of bias-aware user models, human-centered bias mitigation techniques, and socially responsible intelligent IR systems.

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