Evaluating Local Explanations using White-box Models

Autor: Rahnama, Amir Hossein Akhavan, Butepage, Judith, Geurts, Pierre, Bostrom, Henrik
Rok vydání: 2021
Předmět:
Druh dokumentu: Working Paper
Popis: Evaluating explanation techniques using human subjects is costly, time-consuming and can lead to subjectivity in the assessments. To evaluate the accuracy of local explanations, we require access to the true feature importance scores for a given instance. However, the prediction function of a model usually does not decompose into linear additive terms that indicate how much a feature contributes to the output. In this work, we suggest to instead focus on the log odds ratio (LOR) of the prediction function, which naturally decomposes into additive terms for logistic regression and naive Bayes. We demonstrate how we can benchmark different explanation techniques in terms of their similarity to the LOR scores based on our proposed approach. In the experiments, we compare prominent local explanation techniques and find that the performance of the techniques can depend on the underlying model, the dataset, which data point is explained, the normalization of the data and the similarity metric.
Comment: Submitted to ACM FaCCT 2022 Jan 21 2022, 13 pages, 4 Figures
Databáze: arXiv