264 research outputs found
Convex Optimization for Linear Query Processing under Approximate Differential Privacy
Differential privacy enables organizations to collect accurate aggregates
over sensitive data with strong, rigorous guarantees on individuals' privacy.
Previous work has found that under differential privacy, computing multiple
correlated aggregates as a batch, using an appropriate \emph{strategy}, may
yield higher accuracy than computing each of them independently. However,
finding the best strategy that maximizes result accuracy is non-trivial, as it
involves solving a complex constrained optimization program that appears to be
non-linear and non-convex. Hence, in the past much effort has been devoted in
solving this non-convex optimization program. Existing approaches include
various sophisticated heuristics and expensive numerical solutions. None of
them, however, guarantees to find the optimal solution of this optimization
problem.
This paper points out that under (, )-differential privacy,
the optimal solution of the above constrained optimization problem in search of
a suitable strategy can be found, rather surprisingly, by solving a simple and
elegant convex optimization program. Then, we propose an efficient algorithm
based on Newton's method, which we prove to always converge to the optimal
solution with linear global convergence rate and quadratic local convergence
rate. Empirical evaluations demonstrate the accuracy and efficiency of the
proposed solution.Comment: to appear in ACM SIGKDD 201
MS-LSTM: Exploring Spatiotemporal Multiscale Representations in Video Prediction Domain
The drastic variation of motion in spatial and temporal dimensions makes the
video prediction task extremely challenging. Existing RNN models obtain higher
performance by deepening or widening the model. They obtain the multi-scale
features of the video only by stacking layers, which is inefficient and brings
unbearable training costs (such as memory, FLOPs, and training time). Different
from them, this paper proposes a spatiotemporal multi-scale model called
MS-LSTM wholly from a multi-scale perspective. On the basis of stacked layers,
MS-LSTM incorporates two additional efficient multi-scale designs to fully
capture spatiotemporal context information. Concretely, we employ LSTMs with
mirrored pyramid structures to construct spatial multi-scale representations
and LSTMs with different convolution kernels to construct temporal multi-scale
representations. We theoretically analyze the training cost and performance of
MS-LSTM and its components. Detailed comparison experiments with twelve
baseline models on four video datasets show that MS-LSTM has better performance
but lower training costs.Comment: arXiv admin note: substantial text overlap with arXiv:2206.0301
Optimizing Batch Linear Queries under Exact and Approximate Differential Privacy
Differential privacy is a promising privacy-preserving paradigm for
statistical query processing over sensitive data. It works by injecting random
noise into each query result, such that it is provably hard for the adversary
to infer the presence or absence of any individual record from the published
noisy results. The main objective in differentially private query processing is
to maximize the accuracy of the query results, while satisfying the privacy
guarantees. Previous work, notably \cite{LHR+10}, has suggested that with an
appropriate strategy, processing a batch of correlated queries as a whole
achieves considerably higher accuracy than answering them individually.
However, to our knowledge there is currently no practical solution to find such
a strategy for an arbitrary query batch; existing methods either return
strategies of poor quality (often worse than naive methods) or require
prohibitively expensive computations for even moderately large domains.
Motivated by this, we propose low-rank mechanism (LRM), the first practical
differentially private technique for answering batch linear queries with high
accuracy. LRM works for both exact (i.e., -) and approximate (i.e.,
(, )-) differential privacy definitions. We derive the
utility guarantees of LRM, and provide guidance on how to set the privacy
parameters given the user's utility expectation. Extensive experiments using
real data demonstrate that our proposed method consistently outperforms
state-of-the-art query processing solutions under differential privacy, by
large margins.Comment: ACM Transactions on Database Systems (ACM TODS). arXiv admin note:
text overlap with arXiv:1212.230
Nonlinear dynamics of new magneto-mechanical oscillator
Funding Information: ZH and DW acknowledge the financial supports of CSC (China Scholarship Council) and the Shandong Province Natural Science Foundation, China (No. ZR2017BA031 , ZR2017QA005 ), the National Natural Science Foundation of China (No. 11702111 , 11732014 ). The authors also thank Drs Dimitri Costa and Vahid Vaziri for their experimental support. Publisher Copyright: © 2021 Elsevier B.V.Peer reviewedPostprin
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