Labeling without Seeing? Blind Annotation for Privacy-Preserving Entity Resolution
The entity resolution problem requires finding pairs across datasets that belong to different owners but refer to the same entity in the real world. To train and evaluate solutions (either rule-based or machine-learning-based) to the entity resolution problem, generating a ground truth dataset with...
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Zusammenfassung: | The entity resolution problem requires finding pairs across datasets that
belong to different owners but refer to the same entity in the real world. To
train and evaluate solutions (either rule-based or machine-learning-based) to
the entity resolution problem, generating a ground truth dataset with entity
pairs or clusters is needed. However, such a data annotation process involves
humans as domain oracles to review the plaintext data for all candidate record
pairs from different parties, which inevitably infringes the privacy of data
owners, especially in privacy-sensitive cases like medical records. To the best
of our knowledge, there is no prior work on privacy-preserving ground truth
dataset generation, especially in the domain of entity resolution. We propose a
novel blind annotation protocol based on homomorphic encryption that allows
domain oracles to collaboratively label ground truths without sharing data in
plaintext with other parties. In addition, we design a domain-specific
easy-to-use language that hides the sophisticated underlying homomorphic
encryption layer. Rigorous proof of the privacy guarantee is provided and our
empirical experiments via an annotation simulator indicate the feasibility of
our privacy-preserving protocol (f-measure on average achieves more than 90\%
compared with the real ground truths). |
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DOI: | 10.48550/arxiv.2308.03734 |