可解释目标识别:基于证据权重的框架

Abeer Alshehri, Tim Miller, Mor Vered
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引用次数: 1

摘要

我们引入并评估了一个可解释目标识别(XGR)模型,该模型使用证据权重(WoE)框架来解释目标识别问题。我们的模型提供了以人为本的解释,回答“为什么?”和“为什么不呢?”的问题。我们计算评估了我们的系统在八个不同的目标识别领域的性能,表明它并没有显着增加底层识别运行时间。通过人类行为研究从人类注释者那里获得基本事实,我们进一步证明了XGR模型可以成功地生成类似人类的解释。然后,我们报告了一项有40名参与者的研究,他们观察代理人玩Sokoban游戏,然后收到目标识别输出的解释。我们通过任务预测、解释满意度和信任来调查被试通过解释获得的理解。
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Explainable Goal Recognition: A Framework Based on Weight of Evidence
We introduce and evaluate an eXplainable goal recognition (XGR) model that uses the Weight of Evidence (WoE) framework to explain goal recognition problems. Our model provides human-centered explanations that answer `why?' and `why not?' questions. We computationally evaluate the performance of our system over eight different goal recognition domains showing it does not significantly increase the underlying recognition run time. Using a human behavioral study to obtain the ground truth from human annotators, we further show that the XGR model can successfully generate human-like explanations. We then report on a study with 40 participants who observe agents playing a Sokoban game and then receive explanations of the goal recognition output. We investigated participants’ understanding obtained by explanations through task prediction, explanation satisfaction, and trust.
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