Uncertainty measurement for complex event prediction in safety-critical systems
Complex events originate from other primitive events combined according to defined patterns and rules. Instead of using specialists' manual work to compose the model rules, we use machine learning (ML) to self-define these patterns and regulations based on incoming input data to produce the des...
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Zusammenfassung: | Complex events originate from other primitive events combined according to
defined patterns and rules. Instead of using specialists' manual work to
compose the model rules, we use machine learning (ML) to self-define these
patterns and regulations based on incoming input data to produce the desired
complex event. Complex events processing (CEP) uncertainty is critical for
embedded and safety-critical systems. This paper exemplifies how we can measure
uncertainty for the perception and prediction of events, encompassing embedded
systems that can also be critical to safety. Then, we propose an approach
(ML\_CP) incorporating ML and sensitivity analysis that verifies how the output
varies according to each input parameter. Furthermore, our model also measures
the uncertainty associated with the predicted complex event. Therefore, we use
conformal prediction to build prediction intervals, as the model itself has
uncertainties, and the data has noise. Also, we tested our approach with
classification (binary and multi-level) and regression problems test cases.
Finally, we present and discuss our results, which are very promising within
our field of research and work. |
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DOI: | 10.48550/arxiv.2411.01289 |