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Papers/Towards Best Practice in Explaining Neural Network Decisio...

Towards Best Practice in Explaining Neural Network Decisions with LRP

Maximilian Kohlbrenner, Alexander Bauer, Shinichi Nakajima, Alexander Binder, Wojciech Samek, Sebastian Lapuschkin

2019-10-22Explainable Artificial Intelligence (XAI)Object LocalizationExplainable artificial intelligenceobject-detectionObject Detection
PaperPDFCode

Abstract

Within the last decade, neural network based predictors have demonstrated impressive - and at times super-human - capabilities. This performance is often paid for with an intransparent prediction process and thus has sparked numerous contributions in the novel field of explainable artificial intelligence (XAI). In this paper, we focus on a popular and widely used method of XAI, the Layer-wise Relevance Propagation (LRP). Since its initial proposition LRP has evolved as a method, and a best practice for applying the method has tacitly emerged, based however on humanly observed evidence alone. In this paper we investigate - and for the first time quantify - the effect of this current best practice on feedforward neural networks in a visual object detection setting. The results verify that the layer-dependent approach to LRP applied in recent literature better represents the model's reasoning, and at the same time increases the object localization and class discriminativity of LRP.

Results

TaskDatasetMetricValueModel
Object DetectionSIXray1 in 10 R@50.01347LRPz
Object DetectionPASCAL VOC 2012MAP42.1LRPCMP:a2+
Object DetectionPASCAL VOC 2012MAP34.66LRPCMP:a1+
3DSIXray1 in 10 R@50.01347LRPz
3DPASCAL VOC 2012MAP42.1LRPCMP:a2+
3DPASCAL VOC 2012MAP34.66LRPCMP:a1+
2D ClassificationSIXray1 in 10 R@50.01347LRPz
2D ClassificationPASCAL VOC 2012MAP42.1LRPCMP:a2+
2D ClassificationPASCAL VOC 2012MAP34.66LRPCMP:a1+
2D Object DetectionSIXray1 in 10 R@50.01347LRPz
2D Object DetectionPASCAL VOC 2012MAP42.1LRPCMP:a2+
2D Object DetectionPASCAL VOC 2012MAP34.66LRPCMP:a1+
16kSIXray1 in 10 R@50.01347LRPz
16kPASCAL VOC 2012MAP42.1LRPCMP:a2+
16kPASCAL VOC 2012MAP34.66LRPCMP:a1+

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