Embed2Sym -基于聚类嵌入的可扩展神经符号推理

Yaniv Aspis, K. Broda, Jorge Lobo, Alessandra Russo
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引用次数: 10

摘要

近年来提出的神经符号推理方法将神经感知成分与符号推理成分结合起来解决下游任务。通过这样做,这些方法可以为神经网络提供符号推理能力,提高其可解释性并实现训练任务之外的泛化。然而,这通常是以糟糕的训练时间为代价的,并且存在潜在的可伸缩性问题。在本文中,我们提出了一种可扩展的神经符号方法,称为Embed2Sym。我们补充了一个两阶段(感知和推理)神经网络架构,该架构旨在端到端解决下游任务,并使用符号优化方法提取学习到的潜在概念。具体来说,训练后的感知网络在嵌入空间中生成聚类,这些聚类使用符号知识和符号求解器进行识别和标记。在识别潜在概念的基础上,将感知网络与下游任务的符号知识相结合,构建具有可解释性和可转移性的神经符号模型。我们的评估表明,就训练时间而言,Embed2Sym在基准任务上优于最先进的神经符号系统几个数量级,同时提供类似的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Embed2Sym - Scalable Neuro-Symbolic Reasoning via Clustered Embeddings
Neuro-symbolic reasoning approaches proposed in recent years combine a neural perception component with a symbolic reasoning component to solve a downstream task. By doing so, these approaches can provide neural networks with symbolic reasoning capabilities, improve their interpretability and enable generalization beyond the training task. However, this often comes at the cost of poor training time, with potential scalability issues. In this paper, we propose a scalable neuro-symbolic approach, called Embed2Sym. We complement a two-stage (perception and reasoning) neural network architecture designed to solve a downstream task end-to-end with a symbolic optimisation method for extracting learned latent concepts. Specifically, the trained perception network generates clusters in embedding space that are identified and labelled using symbolic knowledge and a symbolic solver. With the latent concepts identified, a neuro-symbolic model is constructed by combining the perception network with the symbolic knowledge of the downstream task, resulting in a model that is interpretable and transferable. Our evaluation shows that Embed2Sym outperforms state-of-the-art neuro-symbolic systems on benchmark tasks in terms of training time by several orders of magnitude while providing similar if not better accuracy.
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