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  • Department of Statistics Colloquium Series

Department of Statistics Colloquium Series

Monday, April 20, 2026

2:00 PM – 4:00 PM

IMU Maple Room

Speaker:  Runbing Zheng, Rufus Isaacs Postdoctoral Fellow in the Department of Applied Mathematics and Statistics at Johns Hopkins University

Title:  Multiple matrix data integration via embedding alignment

Abstract:

Motivated by the increasing demand for multi-source data integration in various scientific fields, in this paper we study matrix completion in scenarios where the data exhibits certain block-wise missing structures -- specifically, where only a few noisy submatrices representing (overlapping) parts of the full matrix are available. We propose the Chain-linked Multiple Matrix Integration (CMMI) procedure to efficiently combine the information that can be extracted from these individual noisy submatrices. CMMI begins by deriving entity embeddings for each observed submatrix, then aligns these embeddings using overlapping entities between pairs of submatrices, and finally aggregates them to reconstruct the entire matrix of interest. We establish, under mild regularity conditions, entrywise error bounds and normal approximations for the CMMI estimates. Simulation studies and real data applications show that CMMI is computationally efficient and effective in recovering the full matrix, even when overlaps between the observed submatrices are minimal.

 

Department of Statistics

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Swain Hall East 215
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