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Probabilistic abstract argumentation: an investigation with Boltzmann machines

机译:概率抽象论证:玻尔兹曼机的研究

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Probabilistic argumentation and neuro-argumentative systems offer new computational perspectives for the theory and applications of argumentation, but their principled construction involves two entangled problems. On the one hand, probabilistic argumentation aims at combining the quantitative uncertainty addressed by probability theory with the qualitative uncertainty of argumentation, but probabilistic dependences amongst arguments as well as learning are usually neglected. On the other hand, neuro-argumentative systems offer the opportunity to couple the computational advantages of learning and massive parallel computation from neural networks with argumentative reasoning and explanatory abilities, but the relation of probabilistic argumentation frameworks with these systems has been ignored so far. Towards the construction of neuro-argumentative systems based on probabilistic argumentation, we associate a model of abstract argumentation and the graphical model of Boltzmann machines (BMs) in order to (ⅰ) account for probabilistic abstract argumentation with possible and unknown probabilistic dependences amongst arguments, (ⅱ) learn distributions of labellings from a set of cases and (ⅲ) sample labellings according to the learned distribution. Experiments on domain independent artificial datasets show that argumentative BMs can be trained with conventional training procedures and compare well with conventional machines for generating labellings of arguments, with the assurance of generating grounded labellings -on demand.
机译:概率论证和神经论证系统为论证的理论和应用提供了新的计算视角,但其原理构造涉及两个纠缠的问题。一方面,概率论证旨在将概率论所解决的定量不确定性与论证的定性不确定性相结合,但论证之间以及学习之间的概率依赖性通常被忽略。另一方面,神经论证系统提供了将学习和来自神经网络的大规模并行计算的计算优势与论证推理和解释能力相结合的机会,但是到目前为止,概率论证框架与这些系统的关系一直被忽略。为了构建基于概率论证的神经论证系统,我们将抽象论证模型与Boltzmann机器(BMs)的图形模型相关联,以便(ⅰ)解释概率论抽象论证与论证之间可能存在和未知的概率依赖性, (ⅱ)从一组案例中学习标签的分布,以及(ⅲ)根据学习到的分布来抽样标签。在领域独立的人工数据集上的实验表明,可以使用常规训练程序来训练有争议的BM,并且可以与按需生成接地标签的保证的常规机器很好地进行比较,从而可以生成有争议的标签。

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