Algorithms engineered to leverage rich behavioral and biometric data to predict individual attributes and actions continue to permeate public and private life. A fundamental risk may emerge from misconceptions about the sensitivity of such data, as well as the agency of individuals to protect their privacy when fine-grained (and possibly involuntary) behavior is tracked. In this work, we examine how individuals adjust their behavior when incentivized to avoid the algorithmic prediction of their intent. We present results from a virtual reality task in which gaze, movement, and other physiological signals are tracked. Participants are asked to decide which card to select without an algorithmic adversary anticipating their choice. We find that while participants use a variety of strategies, data collected remains highly predictive of choice (80% accuracy). Additionally, a significant portion of participants became more predictable despite efforts to obfuscate, possibly indicating mistaken priors about the dynamics of algorithmic prediction.
翻译:为了利用丰富的行为和生物鉴别数据来预测个人属性和行动继续渗透到公共和私人生活之中,设计了演算法和生物测定数据,以利用丰富的行为和生物测定数据来预测个人特征和行动,在跟踪微小的(和可能非自愿的)行为时,对这些数据的敏感性以及个人保护隐私的机构存在误解,这可能产生一种基本风险。在这项工作中,我们研究个人在受到激励以避免对其意图进行算法预测时如何调整其行为。我们介绍了一项虚拟现实任务的结果,在这种任务中,注意、移动和其他生理信号被跟踪。与会者被要求在没有预测其选择的算法对手的情况下决定选择哪张卡片。我们发现,虽然参与者使用各种战略,但所收集的数据仍然具有高度的预测性(80%的准确性 ) 。 此外,尽管努力混淆,可能显示关于算法预测动态的错误的预言,但相当一部分参与者变得更加可以预测。