This paper provides new theory to support to the eXplainable AI (XAI) method Contextual Importance and Utility (CIU). CIU arithmetic is based on the concepts of Multi-Attribute Utility Theory, which gives CIU a solid theoretical foundation. The novel concept of contextual influence is also defined, which makes it possible to compare CIU directly with so-called additive feature attribution (AFA) methods for model-agnostic outcome explanation. One key takeaway is that the "influence" concept used by AFA methods is inadequate for outcome explanation purposes even for simple models to explain. Experiments with simple models show that explanations using contextual importance (CI) and contextual utility (CU) produce explanations where influence-based methods fail. It is also shown that CI and CU guarantees explanation faithfulness towards the explained model.
翻译:本文提供了支持易氧化性AI(XAI)方法的“环境重要性和实用性”(CIU)的新理论。CIU的算术以多属性实用理论的概念为基础,使CIU有一个坚实的理论基础。还定义了背景影响的新概念,使CIU能够直接与模型和不可知结果解释的所谓添加特性属性(AFA)方法进行比较。一个关键取舍是,AFA方法使用的“影响”概念不足以解释结果,即使是用于解释简单的模型。与简单模型的实验表明,在基于影响的方法失败时,使用背景重要性(CI)和背景效用(CU)的解释可以作出解释。还表明,CI和CU保证解释对解释模型的忠诚性。