תקציר
In many machine learning applications, it is important to explain the predictions of a black-box classifier. For example, why does a deep neural network assign an image to a particular class? We cast interpretability of black-box classifiers as a combinatorial maximization problem and propose an efficient streaming algorithm to solve it subject to cardinality constraints. By extending ideas from Badanidiyuru et al. [2014], we provide a constant factor approximation guarantee for our algorithm in the case of random stream order and a weakly submodular objective function. This is the first such theoretical guarantee for this general class of functions, and we also show that no such algorithm exists for a worst case stream order. Our algorithm obtains similar explanations of Inception V3 predictions 10 times faster than the state-of-the-art LIME framework of Ribeiro et al. [2016].
| שפה מקורית | אנגלית |
|---|---|
| עמודים (מ-עד) | 4045-4055 |
| מספר עמודים | 11 |
| כתב עת | Advances in Neural Information Processing Systems |
| כרך | 2017-December |
| סטטוס פרסום | פורסם - 2017 |
| אירוע | 31st Annual Conference on Neural Information Processing Systems, NIPS 2017 - Long Beach, ארצות הברית משך הזמן: 4 דצמ׳ 2017 → 9 דצמ׳ 2017 |
הערה ביבליוגרפית
Publisher Copyright:© 2017 Neural information processing systems foundation. All rights reserved.
טביעת אצבע
להלן מוצגים תחומי המחקר של הפרסום 'Streaming weak submodularity: Interpreting neural networks on the fly'. יחד הם יוצרים טביעת אצבע ייחודית.פורמט ציטוט ביבליוגרפי
- APA
- Author
- BIBTEX
- Harvard
- Standard
- RIS
- Vancouver