We introduce DeepPSL a variant of probabilistic soft logic (PSL) to produce an end-to-end trainable system that integrates reasoning and perception. PSL represents first-order logic in terms of a convex graphical model -- hinge-loss Markov random fields (HL-MRFs). PSL stands out among probabilistic logic frameworks due to its tractability having been applied to systems of more than 1 billion ground rules. The key to our approach is to represent predicates in first-order logic using deep neural networks and then to approximately back-propagate through the HL-MRF and thus train every aspect of the first-order system being represented. We believe that this approach represents an interesting direction for the integration of deep learning and reasoning techniques with applications to knowledge base learning, multi-task learning, and explainability. Evaluation on three different tasks demonstrates that DeepPSL significantly outperforms state-of-the-art neuro-symbolic methods on scalability while achieving comparable or better accuracy.
翻译:我们引入了“深PSL ” 变式的概率软逻辑(PSL ), 以产生一个结合推理和认知的端到端的可训练系统。 PSL 代表了方形图形模型的第一阶逻辑 -- -- 关节损失 Markov 随机字段(HL-MRFs) 。 PSL 因其可移植性已应用于10亿以上基本规则的系统,在概率逻辑框架中占有突出地位。 我们的方法的关键在于利用深神经网络在一阶逻辑中代表上游,然后通过HL-MRF 进行大约后方分析,从而对所代表的一阶系统的各个方面进行培训。 我们认为,这一方法代表了将深层次学习和推理技术与知识基础学习、多任务学习和解释应用相结合的有趣方向。 对三项不同任务的评估表明, DepPSL 明显地超越了在可测量性方面采用的最新神经特征方法,同时实现可比或更精确性。