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Tensor-CUR Decompositions For Tensor-Based Data

机译:基于Tensor的数据的Tensor-CUR分解

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摘要

Motivated by numerous applications in which the data may be modeled by a variable subscripted by three or more indices, we develop a tensor-based extension of the matrix CUR decomposition The tensor-CUR decomposition is most relevant as a data analysis tool when the data consist of one rnode that is qualitatively different than the others In this case, the tensor-CUR decomposition approximately expresses the original data tensor in terms of a basis consisting of underlying subtensors that are actual data elements and thus that have natural interpretation in terms of the processes generating the data. In order to demonstrate the general applicability of this tensor decomposition, we apply it to problems in two diverse domains of data analysis: hyperspectral medical image analysis and consumer recommendation system analysis. In the hyperspectral data application, the tensor-CUR decomposition is used to compress the data, and we show that classification quality is not substantially reduced even after substantial data compression. In the recommendation system application, the tensor-CUR decomposition is used to reconstruct missing entries in a user-product-product preference tensor, and we show that high quality recommendations can be made on the basis of a small number of basis users and a small number of product-product comparisons from a new user.
机译:受众多应用(其中数据可以由三个或多个下标的变量建模)的启发,我们开发了基于张量的矩阵CUR分解的扩展。当数据包含以下内容时,张量-CUR分解作为数据分析工具最为相关在质量上不同于另一个节点的第一个节点在这种情况下,张量-CUR分解近似表示原始数据张量,其依据是基础底层张量构成的基础,这些底层张量是实际数据元素,因此对过程具有自然的解释生成数据。为了证明此张量分解的一般适用性,我们将其应用于数据分析的两个不同领域中的问题:高光谱医学图像分析和消费者推荐系统分析。在高光谱数据应用中,张量-CUR分解用于压缩数据,并且我们显示,即使经过大量数据压缩,分类质量也不会显着降低。在推荐系统应用程序中,张量-CUR分解用于重构用户-产品-产品偏好张量中的缺失条目,并且我们展示了可以在少量基础用户和少量基础上做出高质量推荐新用户进行产品与产品比较的次数。

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