Cognitive biases are mental shortcuts humans use in dealing with information and the environment, and which result in biased actions and behaviors (or, actions), unbeknownst to themselves. Biases take many forms, with cognitive biases occupying a central role that inflicts fairness, accountability, transparency, ethics, law, medicine, and discrimination. Detection of biases is considered a necessary step toward their mitigation. Herein, we focus on two cognitive biases - anchoring and recency. The recognition of cognitive bias in computer science is largely in the domain of information retrieval, and bias is identified at an aggregate level with the help of annotated data. Proposing a different direction for bias detection, we offer a principled approach along with Machine Learning to detect these two cognitive biases from Web logs of users' actions. Our individual user level detection makes it truly personalized, and does not rely on annotated data. Instead, we start with two basic principles established in cognitive psychology, use modified training of an attention network, and interpret attention weights in a novel way according to those principles, to infer and distinguish between these two biases. The personalized approach allows detection for specific users who are susceptible to these biases when performing their tasks, and can help build awareness among them so as to undertake bias mitigation.
翻译:认知偏向是人类在处理信息和环境时使用的精神捷径,人类在处理信息和环境时使用这种捷径,从而导致偏见的行动和行为(或行动),他们自己不为人知。双轨以多种形式出现,认知偏向发挥核心作用,产生公平、问责、透明、道德、法律、医学和歧视。发现偏向被认为是缓解偏见的必要步骤。我们在这里侧重于两种认知偏向——定位和正确性。在信息检索领域,对计算机科学中认知偏向的认识主要表现在信息检索领域,在附加说明的数据的帮助下,在总体一级识别偏向。提出偏向检测的不同方向,我们与机器学习一起提供原则性方法,以检测用户行动网络日志中的这两种认知偏向。我们个人用户水平的检测使其真正具有个性,并不依赖于附加说明的数据。相反,我们从两个在认知心理学中确立的基本原则开始,对关注网络使用经修改的培训,并按这些原则以新颖的方式解释关注的权重度,以推断和区分这两种偏向。个人化方法使得特定用户在进行这些偏向性时能够进行这种偏向。