Prediction systems face exogenous and endogenous distribution shift -- the world constantly changes, and the predictions the system makes change the environment in which it operates. For example, a music recommender observes exogeneous changes in the user distribution as different communities have increased access to high speed internet. If users under the age of 18 enjoy their recommendations, the proportion of the user base comprised of those under 18 may endogeneously increase. Most of the study of endogenous shifts has focused on the single decision-maker setting, where there is one learner that users either choose to use or not. This paper studies participation dynamics between sub-populations and possibly many learners. We study the behavior of systems with \emph{risk-reducing} learners and sub-populations. A risk-reducing learner updates their decision upon observing a mixture distribution of the sub-populations $\mathcal{D}$ in such a way that it decreases the risk of the learner on that mixture. A risk reducing sub-population updates its apportionment amongst learners in a way which reduces its overall loss. Previous work on the single learner case shows that myopic risk minimization can result in high overall loss~\citep{perdomo2020performative, miller2021outside} and representation disparity~\citep{hashimoto2018fairness, zhang2019group}. Our work analyzes the outcomes of multiple myopic learners and market forces, often leading to better global loss and less representation disparity.
翻译:预测系统将面临外部和内生分布变化 -- -- 世界不断变化,预测系统将改变其运作环境。例如,音乐建议者观察到用户分布的外源变化,因为不同社区可以更多地使用高速互联网。如果18岁以下的用户享有建议,18岁以下用户基础中由18岁以下用户构成的比例可能自然增加。对内源变化的大部分研究侧重于单一决策者设置,其中用户选择使用或不使用一个学习者。本文研究亚群和可能许多学习者之间的参与动态。我们用\emph{风险降低}学习者和亚群群研究系统的行为。一个降低风险学习者在观察亚群混合分布时更新其决定,从而降低18岁以下用户在混合中的风险。一个降低亚群人口20 更新学生之间的分配,从而降低其总体损失率。 上一个学习者案例的上一个研究显示,我们21岁以下风险最小化、18岁以下后期投资者 和20岁以下20岁以上研究者之间的风险减少。