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A neural cognitive model of argumentation with application to legal inference and decision making

机译:争论的神经认知模型及其在法律推理和决策中的应用

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Formal models of argumentation have been investigated in several areas, from multi-agent systems and artificial intelligence (AI) to decision making, philosophy and law. In artificial intelligence, logic-based models have been the standard for the representation of argumentative reasoning. More recently, the standard logic-based models have been shown equivalent to standard connectionist models. This has created a new line of research where (ⅰ) neural networks can be used as a parallel computational model for argumentation and (ⅱ) neural networks can be used to combine argumentation, quantitative reasoning and statistical learning. At the same time, non-standard logic models of argumentation started to emerge. In this paper, we propose a connectionist cognitive model of argumentation that accounts for both standard and non-standard forms of argumentation. The model is shown to be an adequate framework for dealing with standard and non-standard argumentation, including joint-attacks, argument support, ordered attacks, disjunctive attacks, meta-level attacks, self-defeating attacks, argument accrual and uncertainty. We show that the neural cognitive approach offers an adequate way of modelling all of these different aspects of argumentation. We have applied the framework to the modelling of a public prosecution charging decision as part of a real legal decision making case study containing many of the above aspects of argumentation. The results show that the model can be a useful tool in the analysis of legal decision making, including the analysis of what-if questions and the analysis of alternative conclusions. The approach opens up two new perspectives in the short-term: the use of neural networks for computing prevailing arguments efficiently through the propagation in parallel of neuronal activations, and the use of the same networks to evolve the structure of the argumentation network through learning (e.g. to learn the strength of arguments from data).
机译:从多代理系统和人工智能(AI)到决策,哲学和法律,在多个领域研究了正式的论证模型。在人工智能中,基于逻辑的模型已成为论证推理表示的标准。最近,已显示出基于标准逻辑的模型等同于标准连接主义模型。这开辟了一条新的研究领域,其中(ⅰ)神经网络可以用作论证的并行计算模型,而(ⅱ)神经网络可以用于结合论证,定量推理和统计学习。同时,非标准的论证逻辑模型开始出现。在本文中,我们提出了一种论证的连接主义认知模型,该模型考虑了标准和非标准形式的论证。该模型显示为处理标准和非标准论证的适当框架,包括联合攻击,论点支持,有序攻击,析取攻击,元级别攻击,自毁攻击,论点应计和不确定性。我们证明了神经认知方法提供了一种充分的方法来对论证的所有这些不同方面进行建模。我们已将该框架应用于公诉指控决策的建模,作为包含上述论证许多方面的真实法律决策案例研究的一部分。结果表明,该模型可以作为法律决策分析中的有用工具,包括假设问题分析和替代结论分析。这种方法在短期内开辟了两个新的观点:通过并行传播神经元激活来使用神经网络有效地计算主流论点,以及使用相同的网络通过学习来演化论证网络的结构(例如从数据中学习论证的力量)。

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