机构收集了大量的学习痕迹,但他们可能不会出于隐私问题披露它。合成数据生成为教育研究开辟了新的机会。在本文中,我们提出了一个可以保留参与者隐私的教育数据的生成模型,以及比较合成数据生成器的评估框架。我们展示了幼稚的假名如何导致重新识别威胁并提出保证隐私的技术。我们评估了现有大规模教育开放数据集的方法。
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Routine clinical visits of a patient produce not only image data, but also non-image data containing clinical information regarding the patient, i.e., medical data is multi-modal in nature. Such heterogeneous modalities offer different and complementary perspectives on the same patient, resulting in more accurate clinical decisions when they are properly combined. However, despite its significance, how to effectively fuse the multi-modal medical data into a unified framework has received relatively little attention. In this paper, we propose an effective graph-based framework called HetMed (Heterogeneous Graph Learning for Multi-modal Medical Data Analysis) for fusing the multi-modal medical data. Specifically, we construct a multiplex network that incorporates multiple types of non-image features of patients to capture the complex relationship between patients in a systematic way, which leads to more accurate clinical decisions. Extensive experiments on various real-world datasets demonstrate the superiority and practicality of HetMed. The source code for HetMed is available at https://github.com/Sein-Kim/Multimodal-Medical.
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强大的量化提高了网络对各种实现的公差,从而允许在不同的位宽度或零散的低精度算术中可靠的输出。在这项工作中,我们进行了广泛的分析以确定量化误差的来源,并提出了三个见解以鲁棒化的网络,以防止量化:减少误差传播,范围夹紧误差最小化以及遗传的稳健性,以抗量化。基于这些见解,我们提出了两种称为对称正则化(Symreg)和饱和非线性(SATNL)的新方法。在培训期间应用提出的方法可以增强对现有训练后量化(PTQ)和量化感知培训(QAT)算法的量化的任意神经网络的鲁棒性各种条件。我们对CIFAR和Imagenet数据集进行了广泛的研究,并验证了所提出的方法的有效性。
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