On the evaluation of the symbolic knowledge extracted from black boxes

Federico Sabbatini, Roberta Calegari
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Abstract

As opaque decision systems are being increasingly adopted in almost any application field, issues about their lack of transparency and human readability are a concrete concern for end-users. Amongst existing proposals to associate human-interpretable knowledge with accurate predictions provided by opaque models, there are rule extraction techniques, capable of extracting symbolic knowledge out of opaque models. The quantitative assessment of the extracted knowledge’s quality is still an open issue. For this reason, we provide here a first approach to measure the knowledge quality, encompassing several indicators and providing a compact score reflecting readability, completeness and predictive performance associated with a symbolic knowledge representation. We also discuss the main criticalities behind our proposal, related to the readability assessment and evaluation, to push future research efforts towards a more robust score formulation.

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关于评估从黑匣子中提取的符号知识
随着不透明决策系统在几乎所有应用领域中被越来越多地采用,其缺乏透明度和人类可读性的问题成为终端用户的具体关切。在现有的将人类可读知识与不透明模型提供的准确预测联系起来的建议中,有一些规则提取技术能够从不透明模型中提取符号知识。对提取知识的质量进行定量评估仍是一个未决问题。因此,我们在此提供了第一种衡量知识质量的方法,其中包含多个指标,并提供了一个紧凑的分数,反映了与符号知识表示相关的可读性、完整性和预测性能。我们还讨论了我们的建议背后与可读性评估和评价相关的主要关键点,以推动未来的研究工作朝着更稳健的分数表述方向发展。
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