Prescriptive process monitoring methods seek to improve the performance of a process by selectively triggering interventions at runtime (e.g., offering a discount to a customer) to increase the probability of a desired case outcome (e.g., a customer making a purchase). The backbone of a prescriptive process monitoring method is an intervention policy, which determines for which cases and when an intervention should be executed. Existing methods in this field rely on predictive models to define intervention policies; specifically, they consider policies that trigger an intervention when the estimated probability of a negative outcome exceeds a threshold. However, the probabilities computed by a predictive model may come with a high level of uncertainty (low confidence), leading to unnecessary interventions and, thus, wasted effort. This waste is particularly problematic when the resources available to execute interventions are limited. To tackle this shortcoming, this paper proposes an approach to extend existing prescriptive process monitoring methods with so-called conformal predictions, i.e., predictions with confidence guarantees. An empirical evaluation using real-life public datasets shows that conformal predictions enhance the net gain of prescriptive process monitoring methods under limited resources.
翻译:指令性过程监测方法力求通过有选择地在运行时触发干预(例如向客户提供折扣),提高预期案件结果的概率(例如,客户购买购买),从而增加预期案件结果的概率(例如,向客户提供折扣),从而改善过程的绩效; 规范性过程监测方法的支柱是干预政策,它决定了哪些案件和何时应当实施干预; 该领域的现有方法依靠预测模型来确定干预政策; 具体地说,它们考虑到当估计负结果的概率超过阈值时触发干预的政策; 然而,预测性模型所计算的概率可能带来高度的不确定性(低可信度),导致不必要的干预,从而造成浪费努力浪费; 当可用于实施干预的资源有限时,这种浪费尤其成问题; 为了解决这一缺陷,本文件提出一种办法,将现有的规范性过程监测方法与所谓的一致预测相扩展,即有信心保证的预测; 使用实际公共数据集进行的经验性评价表明,一致的预测会提高有限资源下法定程序监测方法的净收益。