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Neuro-Symbolic Forward Reasoning

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arxiv 2110.09383 v1 pith:3ZOS4QPI submitted 2021-10-18 cs.AI cs.CVcs.LG

Neuro-Symbolic Forward Reasoning

classification cs.AI cs.CVcs.LG
keywords reasoningdifferentiableforward-chaininglearningobject-centricapproachdeepinference
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Reasoning is an essential part of human intelligence and thus has been a long-standing goal in artificial intelligence research. With the recent success of deep learning, incorporating reasoning with deep learning systems, i.e., neuro-symbolic AI has become a major field of interest. We propose the Neuro-Symbolic Forward Reasoner (NSFR), a new approach for reasoning tasks taking advantage of differentiable forward-chaining using first-order logic. The key idea is to combine differentiable forward-chaining reasoning with object-centric (deep) learning. Differentiable forward-chaining reasoning computes logical entailments smoothly, i.e., it deduces new facts from given facts and rules in a differentiable manner. The object-centric learning approach factorizes raw inputs into representations in terms of objects. Thus, it allows us to provide a consistent framework to perform the forward-chaining inference from raw inputs. NSFR factorizes the raw inputs into the object-centric representations, converts them into probabilistic ground atoms, and finally performs differentiable forward-chaining inference using weighted rules for inference. Our comprehensive experimental evaluations on object-centric reasoning data sets, 2D Kandinsky patterns and 3D CLEVR-Hans, and a variety of tasks show the effectiveness and advantage of our approach.

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  1. Neurosymbolic Imitation Learning with Human Guidance: A Privileged Information Approach

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    A neurosymbolic imitation learning approach uses privileged gaze data during training to handle high-dimensional inputs while achieving better generalization than pure neural or symbolic methods.