Descriptor: Benchmarking Secure Neural Network Evaluation Methods for Protein Sequence Classification (iDASH24) | IEEE Journals & Magazine | IEEE Xplore

Descriptor: Benchmarking Secure Neural Network Evaluation Methods for Protein Sequence Classification (iDASH24)

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Abstract:

To uniformly test and benchmark the secure evaluation of transformer-based models, we designed the iDASH24 homomorphic encryption track dataset. The dataset comprises a p...Show More

Abstract:

To uniformly test and benchmark the secure evaluation of transformer-based models, we designed the iDASH24 homomorphic encryption track dataset. The dataset comprises a protein family classification model with a transformer architecture and an example dataset that is used to build and test the secure evaluation strategies. This dataset was used in the challenge period of iDASH24 Genomic Privacy Competition, where the teams designed secure evaluation of the classification model using a homomorphic encryption scheme. Combined with the benchmarking results and companion methods, iDASH24 dataset is a unique resource that can be used to benchmark secure evaluation of neural network models.

IEEE SOCIETY/COUNCIL Not Applicable

DATA TYPE/LOCATION Biological Sequence, Neural Network Model; Houston, TX, USA

DATA DOI/PID 10.21227/9fdg-pz55, 10.5281/zenodo.13922565

Published in: IEEE Data Descriptions ( Volume: 1)
Page(s): 109 - 112
Date of Publication: 17 October 2024
Electronic ISSN: 2995-4274
PubMed ID: 39712862

Funding Agency:


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