可处理布尔和算术电路

Adnan Darwiche
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引用次数: 0

摘要

可处理的布尔和算术电路在人工智能领域已经被广泛研究了二十多年。这些电路最初是作为“编译对象”提出的,旨在促进逻辑和概率推理,因为它们允许在线性时间和前馈方式下执行各种类型的推理,就像神经网络一样。近年来,可处理电路的作用显著扩大,因为它们成为一些旨在整合知识、推理和学习的方法的计算和语义支柱。在本章中,我们回顾了可处理电路的基础和一些相关的里程碑,同时关注它们的核心属性和技术,使它们对神经符号人工智能的广泛目标特别有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tractable Boolean and Arithmetic Circuits
Tractable Boolean and arithmetic circuits have been studied extensively in AI for over two decades now. These circuits were initially proposed as “compiled objects,” meant to facilitate logical and probabilistic reasoning, as they permit various types of inference to be performed in linear time and a feed-forward fashion like neural networks. In more recent years, the role of tractable circuits has significantly expanded as they became a computational and semantical backbone for some approaches that aim to integrate knowledge, reasoning and learning. In this chapter, we review the foundations of tractable circuits and some associated milestones, while focusing on their core properties and techniques that make them particularly useful for the broad aims of neuro-symbolic AI.
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