posted on 2018-04-26, 08:04authored byWenyi Qian, Xin Peng, Jun Sun, Yijun Yu, Bashar NuseibehBashar Nuseibeh, Wenyun Zhao
In Online-to-Offline (O2O) commerce, customer
services may need to be composed from online and offline
services. Such composition is challenging, as it requires effective
selection of appropriate services that, in turn, support optimal
combination of both online and offline services. In this paper,
we address this challenge by proposing an approach to O2O
service composition which combines offline route planning and
social collaboration to optimize service selection. We frame
general O2O service composition problems using timed automata
and propose an optimization procedure that incorporates: (1) a
Markov Chain Monte Carlo (MCMC) algorithm to stochastically
select a concrete composite service, and (2) a model checking
approach to searching for an optimal collaboration plan with the
lowest cost given certain time constraint. Our procedure has been
evaluated using the simulation of a rich scenario on effectiveness
and scalability.
History
Publication
32 IEEE/ACM International Conference on Automated Software Engineering (ASE);pp. 451-461