23 research outputs found

    Retrospective Loss: Looking Back to Improve Training of Deep Neural Networks

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    Deep neural networks (DNNs) are powerful learning machines that have enabled breakthroughs in several domains. In this work, we introduce a new retrospective loss to improve the training of deep neural network models by utilizing the prior experience available in past model states during training. Minimizing the retrospective loss, along with the task-specific loss, pushes the parameter state at the current training step towards the optimal parameter state while pulling it away from the parameter state at a previous training step. Although a simple idea, we analyze the method as well as to conduct comprehensive sets of experiments across domains - images, speech, text, and graphs - to show that the proposed loss results in improved performance across input domains, tasks, and architectures.Comment: Accepted at KDD 2020; The first two authors contributed equall

    DeepSearch: A Simple and Effective Blackbox Attack for Deep Neural Networks

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    Although deep neural networks have been very successful in image-classification tasks, they are prone to adversarial attacks. To generate adversarial inputs, there has emerged a wide variety of techniques, such as black- and whitebox attacks for neural networks. In this paper, we present DeepSearch, a novel fuzzing-based, query-efficient, blackbox attack for image classifiers. Despite its simplicity, DeepSearch is shown to be more effective in finding adversarial inputs than state-of-the-art blackbox approaches. DeepSearch is additionally able to generate the most subtle adversarial inputs in comparison to these approaches

    A Benchmark Proposal for Massive Scale Inference Systems

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    Deep Domain Adaptation Hashing with Adversarial Learning

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    Adversarial Domain Adaptation with Semantic Consistency for Cross-Domain Image Classification

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    Explore the Transformation Space for Adversarial Images

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    Guided Convolutional Network

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