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Papers/Making Sense of Dependence: Efficient Black-box Explanatio...

Making Sense of Dependence: Efficient Black-box Explanations Using Dependence Measure

Paul Novello, Thomas Fel, David Vigouroux

2022-06-13Interpretability Techniques for Deep LearningError Understandingobject-detectionImage AttributionObject Detection
PaperPDFCode(official)

Abstract

This paper presents a new efficient black-box attribution method based on Hilbert-Schmidt Independence Criterion (HSIC), a dependence measure based on Reproducing Kernel Hilbert Spaces (RKHS). HSIC measures the dependence between regions of an input image and the output of a model based on kernel embeddings of distributions. It thus provides explanations enriched by RKHS representation capabilities. HSIC can be estimated very efficiently, significantly reducing the computational cost compared to other black-box attribution methods. Our experiments show that HSIC is up to 8 times faster than the previous best black-box attribution methods while being as faithful. Indeed, we improve or match the state-of-the-art of both black-box and white-box attribution methods for several fidelity metrics on Imagenet with various recent model architectures. Importantly, we show that these advances can be transposed to efficiently and faithfully explain object detection models such as YOLOv4. Finally, we extend the traditional attribution methods by proposing a new kernel enabling an ANOVA-like orthogonal decomposition of importance scores based on HSIC, allowing us to evaluate not only the importance of each image patch but also the importance of their pairwise interactions. Our implementation is available at https://github.com/paulnovello/HSIC-Attribution-Method.

Results

TaskDatasetMetricValueModel
Interpretability Techniques for Deep LearningCelebAInsertion AUC score0.5692HSIC-Attribution
Image AttributionVGGFace2Deletion AUC score (ArcFace ResNet-101)0.1317HSIC-Attribution
Image AttributionVGGFace2Insertion AUC score (ArcFace ResNet-101)0.6694HSIC-Attribution
Image AttributionCUB-200-2011Deletion AUC score (ResNet-101)0.0647HSIC-Attribution
Image AttributionCUB-200-2011Insertion AUC score (ResNet-101)0.6843HSIC-Attribution
Image AttributionCelebADeletion AUC score (ArcFace ResNet-101)0.1151HSIC-Attribution
Image AttributionCelebAInsertion AUC score (ArcFace ResNet-101)0.5692HSIC-Attribution
Error UnderstandingCUB-200-2011 (ResNet-101)Average highest confidence0.2493HSIC-Attribution
Error UnderstandingCUB-200-2011 (ResNet-101)Insertion AUC score0.1446HSIC-Attribution
Error UnderstandingCUB-200-2011Average highest confidence (EfficientNetV2-M)0.2679HSIC-Attribution
Error UnderstandingCUB-200-2011Average highest confidence (MobileNetV2)0.2914HSIC-Attribution
Error UnderstandingCUB-200-2011Average highest confidence (ResNet-101)0.2493HSIC-Attribution
Error UnderstandingCUB-200-2011Insertion AUC score (EfficientNetV2-M)0.1611HSIC-Attribution
Error UnderstandingCUB-200-2011Insertion AUC score (MobileNetV2)0.1635HSIC-Attribution
Error UnderstandingCUB-200-2011Insertion AUC score (ResNet-101)0.1446HSIC-Attribution

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