Abstract
In this paper, we describe a framework for comparing and selecting inference enterprise models. An inference enterprise is an organizational entity that uses data, tools, people, and processes to make mission-focused inferences. Intuitively, organizations could organize around one of several inference enterprise models to make the same inference. To address the inference enterprise model selection problem, we combine multi-inference enterprise modeling, model-based validation, and statistical inference to rank order inference enterprise candidates. Inference enterprise multi-modeling affords us the opportunity to simulate representative data set to the organization’s mission. Model-based validation employs normative decision theory to score empirical results using a utility function, and statistical inference allows us to generalize candidate rank ordering. We demonstrate the framework described in this paper and compare expected utility-based rank ordering with rank ordering based on expected F1 score. Using generic performance metrics such as F1 potentially has adverse impacts to an organization’s mission.
Keywords
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- IARPA:
-
Intelligence Advanced Research Projects Activity
- IE:
-
Inference enterprise
- IEM:
-
Inference enterprise model
- MBV:
-
Model-based validation
- NB:
-
Naïve Bayesian network classifier
- RF:
-
Random forest classifier
- SCITE:
-
Scientific Advances to Continuous Insider Threat Evaluation
- TN:
-
True negative count
- TP:
-
True positive count
- VM:
-
Voting machine
- vNM:
-
von Neumann-Morgenstern
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Acknowledgment
Research reported here was supported under IARPA contract 2016-16031400006. The content is solely the responsibility of the authors and does not necessarily represent the official views of the US government.
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Vermillion, S.D., Brown, D.P., Buede, D.M. (2019). Applying Model-Based Validation to Inference Enterprise System Architecture Selection. In: Adams, S., Beling, P., Lambert, J., Scherer, W., Fleming, C. (eds) Systems Engineering in Context. Springer, Cham. https://doi.org/10.1007/978-3-030-00114-8_28
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DOI: https://doi.org/10.1007/978-3-030-00114-8_28
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