论文标题

学习和组成性:通过连接主义概率编程的统一尝试

Learning and Compositionality: a Unification Attempt via Connectionist Probabilistic Programming

论文作者

Qiao, Ximing, Li, Hai

论文摘要

我们将学习和组成性视为模拟类似人类智力的关键机制。虽然分别通过神经网络和符号AI成功实现了每种机制,但两种机制的组合使人类样的智力成为可能。尽管有许多尝试构建混合神经肌的系统,但我们认为我们的真正目标应该是统一学习和组成性,核心机制,而不是神经和象征性方法,而是实现它们的表面方法。在这项工作中,我们通过将神经和符号方法的优势和缺点分开,通过将其形式和含义(结构和语义)分开,并提出连接连接的概率程序(CPP),该框架是连接连接的结构(用于学习)和概率的程序语言(用于组成)的框架。在框架下,我们为小型序列建模设计了CPP扩展,并根据贝叶斯推断提供了学习算法。尽管在没有监督的情况下学习复杂模式中存在挑战,但我们的早期结果表明,CPP从原始的顺序数据中成功提取了概念和关系,这是迈向组成学习的第一步。

We consider learning and compositionality as the key mechanisms towards simulating human-like intelligence. While each mechanism is successfully achieved by neural networks and symbolic AIs, respectively, it is the combination of the two mechanisms that makes human-like intelligence possible. Despite the numerous attempts on building hybrid neuralsymbolic systems, we argue that our true goal should be unifying learning and compositionality, the core mechanisms, instead of neural and symbolic methods, the surface approaches to achieve them. In this work, we review and analyze the strengths and weaknesses of neural and symbolic methods by separating their forms and meanings (structures and semantics), and propose Connectionist Probabilistic Program (CPPs), a framework that connects connectionist structures (for learning) and probabilistic program semantics (for compositionality). Under the framework, we design a CPP extension for small scale sequence modeling and provide a learning algorithm based on Bayesian inference. Although challenges exist in learning complex patterns without supervision, our early results demonstrate CPP's successful extraction of concepts and relations from raw sequential data, an initial step towards compositional learning.

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