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Другие публикации лиц с тем же именем

ESCAPED: Efficient Secure and Private Dot Product Framework for Kernel-based Machine Learning Algorithms with Applications in Healthcare., , и . CoRR, (2020)PlasmoFAB: A Benchmark to Foster Machine Learning for Plasmodium falciparum Protein Antigen Candidate Prediction., , , , , и . CoRR, (2023)ESCAPED: Efficient Secure and Private Dot Product Framework for Kernel-based Machine Learning Algorithms with Applications in Healthcare., , и . AAAI, стр. 9988-9996. AAAI Press, (2021)Privacy-preserving SVM on Outsourced Genomic Data via Secure Multi-party Computation., , , и . IWSPA@CODASPY, стр. 61-69. ACM, (2020)Identifying disease-causing mutations with privacy protection., , , , и . Bioinform., 36 (21): 5205-5213 (2021)Privacy Preserving Gaze Estimation using Synthetic Images via a Randomized Encoding Based Framework., , , , и . ETRA Short Papers, стр. 21:1-21:5. ACM, (2020)COmic: convolutional kernel networks for interpretable end-to-end learning on (multi-)omics data., , и . Bioinform., 39 (Supplement-1): 76-85 (2023)Predicting functional effects of ion channel variants using new phenotypic machine learning methods., , , и . PLoS Comput. Biol., (марта 2023)ppAURORA: Privacy Preserving Area Under Receiver Operating Characteristic and Precision-Recall Curves., , и . NSS, том 13983 из Lecture Notes in Computer Science, стр. 265-280. Springer, (2023)A Framework with Randomized Encoding for a Fast Privacy Preserving Calculation of Non-linear Kernels for Machine Learning Applications in Precision Medicine., , и . CANS, том 11829 из Lecture Notes in Computer Science, стр. 493-511. Springer, (2019)