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Learning from Incomplete Features by Simultaneous Training of Neural Networks and Sparse Coding

机译:通过同时培训神经网络和稀疏编码来学习不完整的功能

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In this paper, the problem of training a classifier on a dataset with incomplete features is addressed. We assume that different subsets of features (random or structured) are available at each data instance. This situation typically occurs in the applications when not all the features are collected for every data sample. A new supervised learning method is developed to train a general classifier, such as a logistic regression or a deep neural network, using only a subset of features per sample, while assuming sparse representations of data vectors on an unknown dictionary. Sufficient conditions are identified, such that, if it is possible to train a classifier on incomplete observations so that their reconstructions are well separated by a hyperplane, then the same classifier also correctly separates the original (unobserved) data samples. Extensive simulation results on synthetic and well-known datasets are presented that validate our theoretical findings and demonstrate the effectiveness of the proposed method compared to traditional data imputation approaches and one state-of-the-art algorithm.
机译:在本文中,寻址具有不完整功能的数据集上培训分类器的问题。我们假设每个数据实例都可以使用不同的功能子集(随机或结构)。这种情况通常发生在应用程序中,当不是为每个数据样本收集所有功能时。开发了一种新的监督学习方法,用于培训一般分类器,例如逻辑回归或深神经网络,仅使用每个样本的特征子集,同时假设在未知字典上的数据向量的稀疏表示。识别出足够的条件,使得如果可以在不完整的观察中训练分类器以使其重建通过超平面分离得很好,因此相同的分类器也正确地分离原始(未观察)的数据样本。展示了合成和众所周知的数据集的广泛模拟结果,验证了我们的理论发现,并展示了与传统数据载销方法和一种最新的算法相比该方法的有效性。

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