Temporal Cascade Model for Analyzing Spread in Evolving Networks with Disease Monitoring Applications
Current approaches for modeling propagation in networks (e.g., spread of disease) are unable to adequately capture temporal properties of the data such as order and duration of evolving connections or dynamic likelihoods of propagation along these connections. Temporal models in evolving networks ar...
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Zusammenfassung: | Current approaches for modeling propagation in networks (e.g., spread of
disease) are unable to adequately capture temporal properties of the data such
as order and duration of evolving connections or dynamic likelihoods of
propagation along these connections. Temporal models in evolving networks are
crucial in many applications that need to analyze dynamic spread. For example,
a disease-spreading virus has varying transmissibility based on interactions
between individuals occurring over time with different frequency, proximity,
and venue population density. To capture such behaviors, we first develop the
Temporal Independent Cascade (T-IC) model and propose a novel spread function,
that we prove to be submodular, with a hypergraph-based sampling strategy that
efficiently utilizes dynamic propagation probabilities. We then introduce the
notion of 'reverse spread' using the proposed T-IC processes, and develop
solutions to identify both sentinel/detector nodes and highly susceptible
nodes. The proven guarantees of approximation quality enable scalable analysis
of highly granular temporal networks. Extensive experimental results on a
variety of real-world datasets show that the proposed approach significantly
outperforms the alternatives in modeling both if and how spread occurs, by
considering evolving network topology as well as granular contact/interaction
information. Our approach has numerous applications, including its utility for
the vital challenge of monitoring disease spread. Utilizing the proposed
methods and T-IC, we analyze the impact of various intervention strategies over
real spatio-temporal contact networks. Our approach is shown also to be highly
effective in quantifying the importance of superspreaders, designing targeted
restrictions for controlling spread, and backward contact tracing. |
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DOI: | 10.48550/arxiv.2203.14925 |