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CoNN: Collaborative Neural Network for Personalized Representation Learning with Application to Scalable Task Classification

机译:CoNN:用于个性化表示学习的协作神经网络及其在可扩展任务分类中的应用

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Inspired by the personalized recommendation system, the Collaborative Neural Network (CoNN) is proposed to solve the problem of insufficient personalization of the existing representation learning methods. According to the input sample, CoNN generates personalized feature extractor (PFE), which is used for personalized representation learning. Specifically, we present two variants of CoNN: Unconditional Collaborative Neural Network (U-CoNN) and Conditional Collaborative Neural Network (C-CoNN). They are suitable for single-task and multi-task personalized representation learning, respectively. So based on CoNN we can solve the problem of personalized representation learning in the Scalable Task scenario. To evaluate CoNN, we experimented with two datasets, MNIST and Fashion-MNIST, which are commonly used in image classification problems. The results showed that U-CoNN improved the classification accuracy of 4.26% in a single task classification, and C-CoNN improved the classification accuracy by 1.25% in multiple task classification.
机译:在个性化推荐系统的启发下,提出了协同神经网络(CoNN),以解决现有表征学习方法个性化不足的问题。根据输入样本,CoNN生成个性化特征提取器(PFE),用于个性化表示学习。具体来说,我们介绍了CoNN的两种变体:无条件协作神经网络(U-CoNN)和有条件协作神经网络(C-CoNN)。它们分别适合于单任务和多任务个性化表示学习。因此,基于CoNN,我们可以解决可扩展任务场景中的个性化表示学习问题。为了评估CoNN,我们尝试了两个通常用于图像分类问题的数据集MNIST和Fashion-MNIST。结果表明,U-CoNN在单任务分类中的分类精度提高了4.26%,而C-CoNN在多任务分类中的分类精度提高了1.25%。

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