Decomposing time series data by a non-negative matrix factorization algorithm with temporally constrained coefficients
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Paolo Bonato | Vincent C. K. Cheung | Karthik Devarajan | Giacomo Severini | Andrea Turolla | V. Cheung | A. Turolla | P. Bonato | K. Devarajan | G. Severini
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