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arxiv: 1301.2314 · v1 · pith:H25QRPOInew · submitted 2013-01-10 · 💻 cs.AI

Analysing Sensitivity Data from Probabilistic Networks

classification 💻 cs.AI
keywords sensitivityanalysisnetworknetworksdatamethodsprobabilisticreal-life
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With the advance of efficient analytical methods for sensitivity analysis ofprobabilistic networks, the interest in the sensitivities revealed by real-life networks is rekindled. As the amount of data resulting from a sensitivity analysis of even a moderately-sized network is alreadyoverwhelming, methods for extracting relevant information are called for. One such methodis to study the derivative of the sensitivity functions yielded for a network's parameters. We further propose to build upon the concept of admissible deviation, that is, the extent to which a parameter can deviate from the true value without inducing a change in the most likely outcome. We illustrate these concepts by means of a sensitivity analysis of a real-life probabilistic network in oncology.

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