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Evaluating Fidelity of Explainable Methods for Predictive Process Analytics

机译:预测过程分析中可解释方法的保真度评估

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Predictive process analytics focuses on predicting the future states of running instances of a business process. While advanced machine learning techniques have been used to increase the accuracy of predictions, the resulting predictive models lack transparency. Explainable machine learning methods can be used to interpret black-box models. However, it is unclear how fit for purpose these methods are in explaining process predictive models. In this paper, we aim to investigate the capabilities of two explainable methods, LIME and SHAP, in reproducing the decision-making processes of black-box process predictive models. We focus on fidelity metrics and propose a method to evaluate the faithfulness of LIME and SHAP when explaining process predictive models built on a Gradient Boosting Machine classifier. We conduct the evaluation using three real-life event logs and analyze the fidelity evaluation results to derive insights. The research contributes to evaluating the trustworthiness of explainable methods for predictive process analytics as a fundamental and key step towards human user-oriented evaluation.
机译:预测流程分析侧重于预测业务流程运行实例的未来状态。虽然先进的机器学习技术已被用于提高预测的准确性,但由此产生的预测模型缺乏透明度。可解释的机器学习方法可用于解释黑盒模型。然而,目前尚不清楚这些方法在解释过程预测模型时是否适用。在本文中,我们旨在研究两种可解释的方法——LIME和SHAP在再现黑箱过程预测模型的决策过程中的能力。在解释基于梯度推进机分类器的过程预测模型时,我们关注保真度度量,并提出了一种评估石灰和形状的保真度的方法。我们使用三个真实事件日志进行评估,并分析逼真度评估结果以得出见解。这项研究有助于评估可解释的预测过程分析方法的可信度,作为面向人类用户的评估的基础和关键步骤。

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