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http://repository.iiitd.edu.in/xmlui/handle/123456789/987| Title: | Explainability of black box deep learning models and bias detection |
| Authors: | Arora, Kushagr Goyal, Vikram (Advisor) |
| Keywords: | Interpretability Data view extraction Shadow model Data synthesis |
| Issue Date: | May-2021 |
| Publisher: | IIIT- Delhi |
| Abstract: | Explanation of predictions made by black-box deep learning models has been rather challenging, especially when neither the model details nor its training data are known. Various techniques based on shadow-model have been proposed to explain the target black-box model predictions. The quality of a shadow model depends directly on the data set used to train it. Previous work has shown that it is important to replicate the data-view captured by the black-box deep learning model to create effective interpretable shadow models, where a data-view is defined as a set of representative data instances classified correctly by a model. However, the process to use a randomly created dataset as a data-view may not lead to a good shadow model. In this work, we present a mechanism to create good data-view by learning the process of creation of good shadow models vis-à-vis the target model. Our method of data-view synthesis uses query synthesis, wherein we train a binary classifier to distinguish data instances into good and bad classes with respect to the task of explaining the target deep learning model; and subsequently use the good data records to train interpretable models such as Decision Trees and Explainable Neural Networks (xNN). We extensively evaluate our approach on a blackbox model trained on public datasets and show its performance in explanation generation |
| URI: | http://repository.iiitd.edu.in/xmlui/handle/123456789/987 |
| Appears in Collections: | Year-2021 |
Files in This Item:
| File | Description | Size | Format | |
|---|---|---|---|---|
| Kushagr Arora_2017062.pdf Restricted Access | 1.16 MB | Adobe PDF | View/Open Request a copy |
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