Much research has been conducted to securely
outsource multiple parties’ data aggregation to an untrusted aggregator without
disclosing each individual’s privately owned data, or to enable multiple
parties to jointly aggregate their data while preserving privacy. However,
those works either require secure pair-wise communication channels or suffer
from high complexity. In this paper, we consider how an external aggregator or
multiple parties can learn some algebraic statistics (e.g., sum, product) over
participants’ privately owned data while preserving the data privacy. We assume
all channels are subject to eavesdropping attacks, and all the communications
throughout the aggregation are open to others. We first propose several
protocols that successfully guarantee data privacy under semi-honest model, and
then present advanced protocols which tolerate up to k passive adversaries who
do not try to tamper the computation. Under this weak assumption, we limit both
the communication and computation complexity of each participant to a small
constant. At the end, we present applications which solve several interesting
problems via our protocols
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