Work item:
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TR.sgfdm (ex TR.sgfdcml)
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Subject/title:
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Fully Homomorphic Encryption (FHE) - based data aggregation in machine learning
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Status:
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Agreed on 2023-09-08 [Issued from previous study period]
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Approval process:
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Agreement
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Type of work item:
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Technical report
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Version:
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New
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Equivalent number:
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-
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Timing:
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-
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Liaison:
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-
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Supporting members:
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-
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Summary:
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This Technical Report provides a guideline for secure data aggregation in machine learning (ML) while protecting input data. It focuses how Fully Homomorphic Encryption (FHE) works on data aggregations in machine learning. It first describes a general workflow on secure aggregation in ML and explains how FHE-based data aggregation in ML could satisfy a certain requirement. A general workflow is then given on FHE-based ML supporting data aggregation between more than two parties.
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Comment:
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-
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Reference(s):
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Historic references:
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Contact(s):
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ITU-T A.5 justification(s): |
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First registration in the WP:
2020-03-27 16:31:09
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Last update:
2023-10-17 12:12:35
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