Automated decision support systems that are able to infer second opinions from experts can potentially facilitate a more efficient allocation of resources; they can help decide when and from whom to seek a second opinion. In this paper, we look at the design of this type of support systems from the perspective of counterfactual inference. We focus on a multiclass classification setting and first show that, if experts make predictions on their own, the underlying causal mechanism generating their predictions needs to satisfy a desirable set invariant property. Further, we show that, for any causal mechanism satisfying this property, there exists an equivalent mechanism where the predictions by each expert are generated by independent sub-mechanisms governed by a common noise. This motivates the design of a set invariant Gumbel-Max structural causal model where the structure of the noise governing the sub-mechanisms underpinning the model depends on an intuitive notion of similarity between experts which can be estimated from data. Experiments on both synthetic and real data show that our model can be used to infer second opinions more accurately than its non-causal counterpart.
翻译:能够从专家推断出第二点意见的自动决定支持系统可以促进更高效地分配资源;它们可以帮助决定何时和从谁那里获得第二点意见。在本文中,我们从反事实推论的角度审视这类支持系统的设计。我们侧重于多级分类设置,首先显示,如果专家自己作出预测,产生预测的基本因果机制需要满足一个合适的变量属性。此外,我们表明,对于任何满足这一属性的因果机制,都存在一个相当的机制,即每个专家的预测是由受共同噪音制约的独立子机制产生的。这促使设计一套变异性 Gumbel-Max 结构因果模型,其中模型所依据的次机制噪音结构取决于从数据中可以估计的专家之间的相似性直观概念。对合成和真实数据的实验表明,我们的模型可以用来推导出比非因果对应方更准确的第二点意见。