JUCS - Journal of Universal Computer Science 15(15): 3019-3037, doi: 10.3217/jucs-015-15-3019
Optimizations for Risk-Aware Secure Supply Chain Master Planning
expand article infoAxel Schröpfer, Florian Kerschbaum, Christoph Schütz, Richard Pibernik§
‡ SAP Research Karlsruhe, Karlsruhe, Germany§ EBS Wiesbaden, Wiesbaden, Germany
Open Access
Supply chain master planning strives for optimally aligned production, warehousing and transportation decisions across a multiple number of partners. Its execution in practice is limited by business partners' reluctance to share their vital business data. Secure Multi-Party Computation (SMC) can be used to make such collaborative computations privacy-preserving by applying cryptographic techniques. Thus, computation becomes acceptable in practice, but the performance of SMC remains critical for real world-sized problems. We assess the disclosure risk of the input and output data and then apply a protection level appropriate for the risk under the assumption that SMC at lower protection levels can be performed faster. This speeds up the secure computation and enables significant improvements in the supply chain.
linear programming, privacy, security and protection