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An iterative method for classification of binary data

机译:二进制数据分类的迭代方法

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摘要

In today’s data-driven world, storing, processing and gleaning insights from large-scale data are major challenges. Data compression is often required in order to store large amounts of high-dimensional data, and thus, efficient inference methods for analyzing compressed data are necessary. Building on a recently designed simple framework for classification using binary data, we demonstrate that one can improve classification accuracy of this approach through iterative applications whose output serves as input to the next application. As a side consequence, we show that the original framework can be used as a data preprocessing step to improve the performance of other methods, such as support vector machines. For several simple settings, we showcase the ability to obtain theoretical guarantees for the accuracy of the iterative classification method. The simplicity of the underlying classification framework makes it amenable to theoretical analysis.
机译:在当今数据驱动的世界中,大规模数据的存储,处理和收集见解是主要挑战。 通常需要数据压缩才能存储大量的高维数据,因此,必须进行有效分析压缩数据的推理方法。 在最近设计的使用二进制数据进行分类的简单框架的基础上,我们证明人们可以通过迭代应用程序提高该方法的分类精度,这些应用程序是下一个应用程序的输入。 作为一方面的结果,我们表明原始框架可以用作数据预处理步骤,以提高其他方法的性能,例如支持向量机。 对于几个简单的设置,我们展示了获得迭代分类方法准确性的理论保证的能力。 基础分类框架的简单性使其可以接受理论分析。

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