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Query Optimization for Faster Deep CNN Explanations

机译:查询优化更快的CNN解释

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摘要

Deep Convolutional Neural Networks (CNNs) now match human accuracy in many image prediction tasks, resulting in a growing adoption in e-commerce, radiology, and other domains. Naturally, "explaining" CNN predictions is a key concern for many users. Since the internal workings of CNNs are unintuitive for most users, occlusion-based explanations (OBE) are popular for understanding which parts of an image matter most for a prediction. One occludes a region of the image using a patch and moves it around to produce a heatmap of changes to the prediction probability. This approach is computationally expensive due to the large number of re-inference requests produced, which wastes time and raises resource costs. We tackle this issue by casting the OBE task as a new instance of the classical incremental view maintenance problem. We create a novel and comprehensive algebraic framework for incremental CNN inference combining materialized views with multi-query optimization to reduce computational costs. We then present two novel approximate inference optimizations that exploit the semantics of CNNs and the OBE task to further reduce runtimes. We prototype our ideas in a tool we call Krypton. Experiments with real data and CNNs show that Krypton reduces runtimes by up to 5x (resp. 35x) to produce exact (resp. high-quality approximate) results without raising resource requirements.
机译:深度卷积神经网络(CNNS)现在在许多图像预测任务中匹配人类准确性,导致电子商务,放射学和其他域中的采用日益增长。当然,“解释”CNN预测是许多用户的关键问题。由于CNNS的内部工作对大多数用户来说是不行性的,因此基于遮挡的解释(OBE)是理解最适合预测的图像问题的哪些部分的流行。使用贴片遮挡图像的区域,并将其移动以产生对预测概率的改变的热图。由于产生的大量再次推理请求,这种方法是计算的,其浪费时间并提高资源成本。我们通过将OBE任务作为经典增量视图维护问题的新实例铸造,通过将OBE任务传递给出此问题。我们为增量CNN推断创建了一种新颖和全面的代数框架,将物流视图与多查询优化相结合,以降低计算成本。然后,我们提出了两种新颖的近似推理优化,用于利用CNN和OBE任务的语义来进一步减少运行时。我们在我们称之为Krypton的工具中原创我们的想法。具有实际数据和CNN的实验表明,KryPTON通过最多5倍(RESP.35X)减少了运行时间,以产生精确(RESP。高质量近似)结果,而无需提高资源要求。

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  • 来源
    《SIGMOD record》 |2020年第1期|61-68|共8页
  • 作者单位

    Univ Calif San Diego La Jolla CA 92093 USA;

    Univ Calif San Diego La Jolla CA 92093 USA;

    Univ Calif San Diego La Jolla CA 92093 USA;

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  • 正文语种 eng
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