人間の認知バイアスがソーシャルメディアの情報拡散を左右することを解明(Research Reveals How Human Bias Shapes Social Media Feeds)

2026-07-16 バージニア工科大学(Virginia Tech)

バージニア工科大学の研究チームは、人々が珍しい情報や出来事を実際以上に重要視する「希少性バイアス(rareness bias)」が、情報の拡散や意思決定に与える影響を分析した。研究では、数理モデルとシミュレーションを用いて、まれな事象ほど人々の注意を引きやすく、口コミやソーシャルメディアを通じて急速に広がる一方で、頻繁に起こる重要な情報が過小評価される現象を示した。この認知バイアスは、健康リスクや災害、金融市場などにおけるリスク認識を歪め、社会全体の判断や行動に影響を及ぼす可能性がある。また、情報拡散の過程では、希少性だけでなくネットワーク構造や個人の意思決定が相互に作用し、誤情報や偏った情報が広まりやすくなることも示された。研究成果は、情報伝播の仕組みをより正確に理解するとともに、誤情報対策やリスクコミュニケーション、情報推薦システムの改善に役立つことが期待される。

人間の認知バイアスがソーシャルメディアの情報拡散を左右することを解明(Research Reveals How Human Bias Shapes Social Media Feeds)

Seeing a constant stream of unique moments on social media can make everyday users feel like their ordinary lives are falling short. Photo courtesy of Envato.

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ソーシャルメディアにおける情報共有:露出頻度の役割とその新たな影響の紹介 Information Sharing on Social Media: Introducing the Role of Exposure Frequency and Its Emergent Effects

Alice Jayoung Jang;Viswanath Venkatesh

MIS Quarterly  Published: January 28 2026

DOI:https://doi.org/10.25300/MISQ/2026/17766

Abstract

Information diffusion in social networks is uneven: some content spreads much more than other content, shaping what people see. The mix of what gets shared can leave users with a misleading sense of how often things happen. Prior research primarily examines content attributes and user attributes but has largely overlooked the role of exposure frequency—how often a user encounters an event category relative to others in their information stream. We argue that exposure frequency is a key factor influencing sharing behavior. Drawing on perceptual bias and variety-seeking, we theorize that users are more likely to share low-exposure frequency (rare) event categories. As these individual decisions accumulate, rare categories become disproportionately represented—a systematic distortion that we call rareness-biased diffusion (RBD). Across six experiments and a network simulation, we show that individuals disproportionately share rare events. At the individual level, the tendency to share rare events weakens when perceptual bias or variety seeking is suppressed but strengthens when sharing opportunities increase. Temporal clustering of rare events further reduces sharing by making rare events seem common. At the network level, distortion amplifies with distance from the source and is most stable in chain networks, while outcomes in small-world and preferential-attachment networks show greater variability due to overlapping exposure. Together, these findings introduce category-level exposure frequency as a distinct predictor of sharing, establish RBD as a new diffusion construct, and highlight implications for platform design, where simple aggregation can amplify rare events and distort public understanding.

1603情報システム・データ工学
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