Thông tin tài liệu
| Nhan đề : |
| Constructing adversarial examples to investigate the plausibility of explanations in deep audio and image classifiers |
| Tác giả : |
| Katharina, Hoedt Verena, Praher Arthur, Flexer |
| Năm xuất bản : |
| 2022 |
| Nhà xuất bản : |
| Springer |
| Tóm tắt : |
| Given the rise of deep learning and its inherent black-box nature, the desire to interpret these systems and explain their behaviour became increasingly more prominent. The main idea of so-called explainers is to identify which features of particular samples have the most influence on a classifier’s prediction, and present them as explanations. Evaluating explainers, however, is difficult, due to reasons such as a lack of ground truth. In this work, we construct adversarial examples to check the plausibility of explanations, perturbing input deliberately to change a classifier’s prediction. This allows us to investigate whether explainers are able to detect these perturbed regions as the parts of an input that strongly influence a particular classification. Our results from the audio and image domain suggest that the investigated explainers often fail to identify the input regions most relevant for a prediction; hence, it remains questionable whether explanations are useful or potentially misleading. |
| Mô tả: |
| CC BY |
| URI: |
| https://link.springer.com/article/10.1007/s00521-022-07918-7 https://dlib.phenikaa-uni.edu.vn/handle/PNK/8325 |
| Bộ sưu tập |
| OER - Công nghệ thông tin |
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