Using correlated surprise to infer shared influence
We propose a method for identifying the sources of problems in complex production systems where, due to the prohibitive costs of instrumentation, the data available for analysis may be noisy or incomplete. In particular, we may not have complete knowledge of all components and their interactions. We...
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Format: | Tagungsbericht |
Sprache: | eng |
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Zusammenfassung: | We propose a method for identifying the sources of problems in complex production systems where, due to the prohibitive costs of instrumentation, the data available for analysis may be noisy or incomplete. In particular, we may not have complete knowledge of all components and their interactions. We define influences as a class of component interactions that includes direct communication and resource contention. Our method infers the influences among components in a system by looking for pairs of components with time-correlated anomalous behavior. We summarize the strength and directionality of shared influences using a Structure-of-Influence Graph (SIG). This paper explains how to construct a SIG and use it to isolate system misbehavior, and presents both simulations and in-depth case studies with two autonomous vehicles and a 9024-node production supercomputer. |
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ISSN: | 1530-0889 2158-3927 |
DOI: | 10.1109/DSN.2010.5544921 |