Kernel methods have proven to be useful and successful to analyse large-scale multi-omics datasets [Schölkopf et al., 2004]. However, as stated in [Hofmann et al., 2015, Mariette et al., 2017], these methods usually suffer from a lack of interpretability as the information of thousands descriptors is summarized in a few similarity measures,...
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October 4, 2019 (v1)Conference paperUploaded on: December 4, 2022
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July 30, 2022 (v1)Journal article
Missing values are unavoidable when working with data. Their occurrence is exacerbated as more data from different sources become available.However, most statistical models and visualization methods require complete data, and improper handling of missing data results in information loss or biased analyses. Since the seminal work of Rubin 1976,...
Uploaded on: December 3, 2022 -
September 1, 2017 (v1)Journal article
Big Data is one of the major challenges of statistical science and has numerous consequences from algorithmic and theoretical viewpoints. Big Data always involve massive data but they also often include online data and data heterogeneity. Recently some statistical methods have been adapted to process Big Data, like linear regression models,...
Uploaded on: February 28, 2023 -
2023 (v1)Journal article
Missing values are unavoidable when working with data. Their occurrence is exacerbated as more data from different sources become available. However, most statistical models and visualization methods require complete data, and improper handling of missing data results in information loss or biased analyses. Since the seminal work of Rubin...
Uploaded on: May 27, 2023