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arxiv: 1808.07452 · v2 · pith:CV5EHD67new · submitted 2018-08-22 · 🧮 math.NA · cs.LG· cs.NA

Generalized Canonical Polyadic Tensor Decomposition

classification 🧮 math.NA cs.LGcs.NA
keywords datadecompositiontensorgeneralizedlosscanonicalfunctionsincluding
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Tensor decomposition is a fundamental unsupervised machine learning method in data science, with applications including network analysis and sensor data processing. This work develops a generalized canonical polyadic (GCP) low-rank tensor decomposition that allows other loss functions besides squared error. For instance, we can use logistic loss or Kullback-Leibler divergence, enabling tensor decomposition for binary or count data. We present a variety statistically-motivated loss functions for various scenarios. We provide a generalized framework for computing gradients and handling missing data that enables the use of standard optimization methods for fitting the model. We demonstrate the flexibility of GCP on several real-world examples including interactions in a social network, neural activity in a mouse, and monthly rainfall measurements in India.

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