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Instance Specific Discriminative Modal Pursuit: A Serialized Approach

机译:实例特定的判别模态追踪:一种序列化方法

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With the fast development of data collection techniques, a huge amount of complex multi-modal data are generated, shared and stored on the Internet. The burden of extracting multi-modal features for test instances in data analysis becomes the main fact that hurts the efficiency of prediction. In this paper, in order to reduce the modal extraction cost in serialized classification system, we propose a novel end-to-end serialized adaptive decision approach named Discriminative Modal Pursuit (sc Dmp), which can automatically extract instance-specifically discriminative modal sequence for reducing the cost of feature extraction in the test phase. Rather than jointly optimize a highly non-convex empirical risk minimization problem, we are inspired by LSTM, and the proposed sc Dmp can turn to learn the decision policies which predict the label information and decide the modalities to be extracted simultaneously within limited modal acquisition budget. Consequently, sc Dmp approach can balance the classification performance and modal feature extraction cost by utilizing different modalities for different test instances. Empirical studies show that sc Dmp is more efficient and effective than existing modal/feature extraction methods.
机译:随着数据收集技术的飞速发展,大量复杂的多模式数据被生成,共享并存储在Internet上。在数据分析中为测试实例提取多模式特征的负担已成为损害预测效率的主要事实。为了减少序列化分类系统中模态提取的成本,我们提出了一种新的端到端序列化自适应决策方法,称为判别模态追踪( sc Dmp),该方法可以自动提取特定于实例的判别模态序列。用于减少测试阶段的特征提取成本。受到LSTM的启发,我们没有联合优化高度非凸的经验风险最小化问题,而拟议中的 sc Dmp可以转而学习预测标签信息的决策策略,并确定在有限的模式获取中同时提取的模式。预算。因此, sc Dmp方法可以通过针对不同的测试实例使用不同的模态来平衡分类性能和模态特征提取成本。实证研究表明, sc Dmp比现有的模态/特征提取方法更有效。

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