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Foundations of model construction in feature-based semantic science

机译:基于特征的语义科学中模型构建的基础

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The aim of what semantic science is to have scientific ontologies, data and hypotheses represented and published in machine understandable forms that enable predictions on new cases. There is much work on developing scientific ontologies and representing scientific data in terms of these ontologies. The next step is to publish hypotheses that can make (probabilistic) predictions on the published data and can be used for prediction on new cases. The published data can be used to evaluate hypotheses. To make a prediction in a particular case, hypotheses are combined to form models. This article considers feature-based semantic science where the data and new cases are described in terms of features. A prediction for a new case is made by building a model made up of hypotheses that fit together, are consistent with the ontologies used, and are adequate for the case. We give some desiderata for such models, and show how the construction of such models is a form of abduction. We provide a definition for models that satisfies these criteria and prove that it produces a coherent probability distribution over the values of interest.
机译:语义科学的目的是以机器可理解的形式表示和发布科学本体论,数据和假设,从而能够对新案例进行预测。在开发科学本体以及根据这些本体表示科学数据方面,有很多工作要做。下一步是发布可以对已发布数据进行(概率)预测并可以用于新病例预测的假设。已发布的数据可用于评估假设。为了在特定情况下做出预测,将假设组合起来以形成模型。本文考虑了基于特征的语义科学,其中根据特征描述了数据和新案例。通过建立一个模型,对新案例进行预测,该模型由相互拟合的假设,与所使用的本体论一致且适合该案例的假设组成。我们为此类模型提供了一些目的,并说明了此类模型的构造是如何绑架的。我们为满足这些条件的模型提供了一个定义,并证明了该模型在感兴趣的值上产生了一致的概率分布。

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