机器行为研究范式下的算法性别偏见研究

Yuqing Liu
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引用次数: 0

摘要

在传播研究领域,机器行为特指涉及人工智能技术的信息传播活动。随着算法日益成为信息传播的主要力量,其潜在的性别偏见也日益明显。本文基于机器行为学的三个研究范围:个体行为、集体行为和人机交互行为,从这三个层面探讨了人工智能实体在算法中表现出的性别偏见。在个体行为层面,算法开发倾向于简化特征,忽视了女性社会中存在的多样性。固有的数据偏见和人类偏见使得性别歧视难以避免。在集体行为层面,意见领袖型社交机器人的诞生扩大了信息雾霾的主体,使针对女性的隐性性别歧视更加隐蔽。大规模机器大军的使用操纵了搜索引擎结果,导致搜索引擎输出结果中存在严重的性别偏见。在人机混合行为层面,人工智能塑造女性形象,构建女性认知思维。算法在与用户互动的过程中获得人类偏见,社交机器人通过人机混合行为放大性别偏见问题。
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Research on Algorithmic Gender Bias under the Paradigm of Machine Behavior Studies
In the field of communication studies, machine behavior specifically refers to information dissemination activities involving artificial intelligence technology. As algorithms increasingly become the primary force in information dissemination, their potential gender bias becomes increasingly apparent. This paper, based on three research scopes in machine behavior studies: individual behavior, collective behavior, and human-machine interaction behavior, examines the gender bias exhibited by artificial intelligence entities in algorithms at these three levels. At the individual behavior level, the tendency of algorithm development to simplify features overlooks the diversity present in female society. The inherited data bias and human bias make it difficult to avoid gender discrimination. At the collective behavior level, the creation of opinion leader-type social robots expands the subject of information fog, making the concealed gender discrimination against women more covert. The use of large-scale machine armies manipulates search engine results, leading to severe gender bias in search engine outputs. At the hybrid human-machine behavior level, artificial intelligence shapes female images to construct female cognitive thinking. Algorithms acquire human bias during interaction with users, and social robots amplify gender bias issues through mixed human-machine behavior.
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