一个智能和透明的推理:用于因果推理的脉冲神经网络

Li Runyu, Luo Xiaoling, Wang Jun
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引用次数: 0

摘要

由于挖掘了大量的数据,人工智能(AI)已经学会了对象之间非常强的相关性。但其局限性在于不能概括人等对象之间的因果关系,形成了盲箱联想机制。在本文中,我们解决了这些限制并做出了贡献:我们提出了一种基于尖峰神经网络(SNN)的因果推理实现,它使用带有尖峰活动的信息处理来模拟因果关系。利用基于因果图拓扑结构的峰值时变塑性规则(STDP)作为因果推理的一种方法,使因果图的过程可视化。通过实验,我们的模型完成了Judea Pearl提出的因果阶梯推理,实验证明它可以在整合多个因果关系的条件下完成更复杂的因果推理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Intelligent And Transparent Inference: Spiking Neural Network For Causal Reasoning
In light of mining large amounts of data, artificial intelligence (AI) has learned a very strong correlation between objects. However, its limitations lie in that it can’t summarize the causality between objects like human beings and it forms the blind box association mechanism. In this paper, we address these limitations and make the contributions: We propose an implementation of causal reasoning based on spiking neural network (SNN), which simulates causality using information processing with spiking activities. And the spike-timing-dependent plastic rules (STDP) is utilized as a method of causal reasoning, which is based on the topological structure of causal graph and can make the process visible. Through experiments, our model completes the inference of causal ladder proposed by Judea Pearl, and experiments prove that it can complete more complex causal reasoning under the condition of integrating multiple causality.
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