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A Promising Path Towards Autoformalization and General Artificial Intelligence

机译:自动形式化和通用人工智能的有希望的道路

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An autoformalization system is an AI that learns to read natural language content and to turn it into an abstract, machine verifiable formalization, ideally by bootstrapping from unlabeled training data with minimum human interaction. This is a difficult task in general, one that would require strong automated reasoning and automated natural language processing capabilities. In this paper, it is argued that autoformalization is a promising path for systems to learn sophisticated, general purpose reasoning in all domains of mathematics and computer science. This could have far reaching implications not just for mathematical research, but also for software synthesis. Here I provide the outline for a realistic path towards those goals and give a survey of recent results that support the feasibility of this direction.
机译:自动形式化系统是学会学习自然语言内容并将其转变为抽象的,可通过机器验证的形式化的AI,理想情况下,它是通过以最少的人为干预从无标签的训练数据进行引导而实现的。通常,这是一项艰巨的任务,需要强大的自动化推理和自动化自然语言处理能力。本文认为,自动形式化是系统学习数学和计算机科学所有领域的复杂通用推理的一种有前途的途径。这可能不仅对数学研究而且对软件综合都有深远的影响。在这里,我提供了实现这些目标的现实路径的提纲,并对最近的结果进行了调查,这些结果支持了该方向的可行性。

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