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Dynamic Tensor Recommender Systems

About

Recommender systems have been extensively used by the entertainment industry, business marketing and the biomedical industry. In addition to its capacity of providing preference-based recommendations as an unsupervised learning methodology, it has been also proven useful in sales forecasting, product introduction and other production related businesses. Since some consumers and companies need a recommendation or prediction for future budget, labor and supply chain coordination, dynamic recommender systems for precise forecasting have become extremely necessary. In this article, we propose a new recommendation method, namely the dynamic tensor recommender system (DTRS), which aims particularly at forecasting future recommendation. The proposed method utilizes a tensor-valued function of time to integrate time and contextual information, and creates a time-varying coefficient model for temporal tensor factorization through a polynomial spline approximation. Major advantages of the proposed method include competitive future recommendation predictions and effective prediction interval estimations. In theory, we establish the convergence rate of the proposed tensor factorization and asymptotic normality of the spline coefficient estimator. The proposed method is applied to simulations and IRI marketing data. Numerical studies demonstrate that the proposed method outperforms existing methods in terms of future time forecasting.

Yanqing Zhang, Xuan Bi, Niansheng Tang, Annie Qu• 2020

Related benchmarks

TaskDatasetResultRank
PredictionCA Weather
nRMSE0.9959
48
PredictionCA Traffic
nRMSE98.16
48
PredictionServer Room
nRMSE0.9862
48
Missing value predictionServerRoom
RMSE0.412
26
Missing value predictionBeijingAir 3
RMSE0.819
26
Missing value predictionFitRecord
RMSE0.666
26
Missing value predictionBeijingAir-2
RMSE0.641
26
Missing value predictionFitRecord (test)
RMSE0.663
13
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