We initiate the study of the effects of non-transparency in decision rules on individuals' ability to improve in strategic learning settings. Inspired by real-life settings, such as loan approvals and college admissions, we remove the assumption typically made in the strategic learning literature, that the decision rule is fully known to individuals, and focus instead on settings where it is inaccessible. In their lack of knowledge, individuals try to infer this rule by learning from their peers (e.g., friends and acquaintances who previously applied for a loan), naturally forming groups in the population, each with possibly different type and level of information regarding the decision rule. We show that, in equilibrium, the principal's decision rule optimizing welfare across sub-populations may cause a strong negative externality: the true quality of some of the groups can actually deteriorate. On the positive side, we show that, in many natural cases, optimal improvement can be guaranteed simultaneously for all sub-populations. We further introduce a measure we term information overlap proxy, and demonstrate its usefulness in characterizing the disparity in improvements across sub-populations. Finally, we identify a natural condition under which improvement can be guaranteed for all sub-populations while maintaining high predictive accuracy. We complement our theoretical analysis with experiments on real-world datasets.
翻译:我们开始研究决策规则不透明对个人在战略学习环境中提高学习能力能力的影响。受贷款批准和大学入学等现实生活环境的启发,我们删除了战略学习文献中通常作出的假设,即决定规则是个人完全了解的,而是侧重于无法理解的规则。在缺乏知识的情况下,个人试图从同龄人(例如以前申请贷款的朋友和熟人)学习来推断这一规则,自然形成人口群体,每个群体可能具有不同的类型和水平的决策规则。我们表明,在平衡的情况下,本项决定规则优化各亚人口的福利可能会造成强烈的负面外差:某些群体的真实质量实际上可能会恶化。从积极的方面看,我们表明,在许多自然情况下,可以保证所有亚群人口群体同时取得最佳的改进。我们进一步引入了一种措施,即我们将信息称为重叠的代用,并表明它在反映各亚群人口之间在改进方面的差异方面是有用的。最后,我们确定了一种自然条件,在这种条件下,可以保证改善所有亚群群体之间的精确性,同时保持我们的真实性。