These labels were automatically added by AI and may be inaccurate. For details, see About Literature Database.
Abstract
We consider multi-party protocols for classification that are motivated by
applications such as e-discovery in court proceedings. We identify a protocol
that guarantees that the requesting party receives all responsive documents and
the sending party discloses the minimal amount of non-responsive documents
necessary to prove that all responsive documents have been received. This
protocol can be embedded in a machine learning framework that enables automated
labeling of points and the resulting multi-party protocol is equivalent to the
standard one-party classification problem (if the one-party classification
problem satisfies a natural independence-of-irrelevant-alternatives property).
Our formal guarantees focus on the case where there is a linear classifier that
correctly partitions the documents.