Entropy-Based Metrics for URREF Criteria to Assess Uncertainty in Bayesian Networks for Cyber Threat Detection

V. Dragos, Jürgen Ziegler, J. D. Villiers, A. D. Waal, A. Jousselme, E. Blasch
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引用次数: 7

Abstract

Bayesian Networks are widely accepted as efficient tools to represent causal models for decision making under uncertainty. In some applications, networks are built where the conditional probability tables are not derived from scientific laws but rely on expert knowledge. Such applications require assessment as to whether the knowledge representation is precise enough to infer reliable results. The uncertainty representation and reasoning evaluation framework (URREF) ontology offers a unified framework for the objective assessment of uncertainty representation and reasoning. This paper addresses the analysis of uncertainty in Bayesian networks (BNs) and develops metrics for URREF criteria based on the principle of entropy. BNs uncertainty includes variable transformation (accuracy), model structure (precision), and reasoning (probability distribution interpretations). The set of metrics are used to investigate a practical use case for probabilistic modeling of cyber threat analysis, and are correlated to a set of complementary metrics already described in a former contribution. The goal of the paper is to provide a new set of metrics able to assess, for a specific model and given input sources, the quality of results of BN-based inferences, in terms of accuracy, precision and end-user interpretation.
基于熵的URREF准则在贝叶斯网络不确定性评估中的应用
贝叶斯网络作为一种有效的工具被广泛接受来表示不确定性下的决策因果模型。在某些应用中,网络的条件概率表不是由科学定律推导出来的,而是依赖于专家知识。这种应用需要评估知识表示是否足够精确以推断出可靠的结果。不确定性表示与推理评价框架(URREF)本体为不确定性表示与推理的客观评价提供了统一的框架。本文分析了贝叶斯网络(BNs)中的不确定性,并基于熵原理开发了URREF标准的度量。bp网络的不确定性包括变量变换(精度)、模型结构(精度)和推理(概率分布解释)。这组指标用于研究网络威胁分析概率建模的实际用例,并与前一篇文章中已经描述的一组补充指标相关。本文的目标是提供一套新的指标,能够评估特定模型和给定输入源的基于bn的推断结果的质量,包括准确性、精度和最终用户解释。
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