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Main Authors: Yu, Dongran, Liu, Xueyan, Pan, Shirui, Li, Anchen, Yang, Bo
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2309.08931
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author Yu, Dongran
Liu, Xueyan
Pan, Shirui
Li, Anchen
Yang, Bo
author_facet Yu, Dongran
Liu, Xueyan
Pan, Shirui
Li, Anchen
Yang, Bo
contents A key objective in the field of artificial intelligence is to develop cognitive models that can exhibit human-like intellectual capabilities. One promising approach to achieving this is through neural-symbolic systems, which combine the strengths of deep learning and symbolic reasoning. However, current methodologies in this area face limitations in integration, generalization, and interpretability. To address these challenges, we propose a neural-symbolic framework based on statistical relational learning, referred to as NSF-SRL. This framework effectively integrates deep learning models with symbolic reasoning in a mutually beneficial manner.In NSF-SRL, the results of symbolic reasoning are utilized to refine and correct the predictions made by deep learning models, while deep learning models enhance the efficiency of the symbolic reasoning process. Through extensive experiments, we demonstrate that our approach achieves high performance and exhibits effective generalization in supervised learning, weakly supervised and zero-shot learning tasks. Furthermore, we introduce a quantitative strategy to evaluate the interpretability of the model's predictions, visualizing the corresponding logic rules that contribute to these predictions and providing insights into the reasoning process. We believe that this approach sets a new standard for neural-symbolic systems and will drive future research in the field of general artificial intelligence.
format Preprint
id arxiv_https___arxiv_org_abs_2309_08931
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publishDate 2023
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spellingShingle A Novel Neural-symbolic System under Statistical Relational Learning
Yu, Dongran
Liu, Xueyan
Pan, Shirui
Li, Anchen
Yang, Bo
Artificial Intelligence
Computer Vision and Pattern Recognition
A key objective in the field of artificial intelligence is to develop cognitive models that can exhibit human-like intellectual capabilities. One promising approach to achieving this is through neural-symbolic systems, which combine the strengths of deep learning and symbolic reasoning. However, current methodologies in this area face limitations in integration, generalization, and interpretability. To address these challenges, we propose a neural-symbolic framework based on statistical relational learning, referred to as NSF-SRL. This framework effectively integrates deep learning models with symbolic reasoning in a mutually beneficial manner.In NSF-SRL, the results of symbolic reasoning are utilized to refine and correct the predictions made by deep learning models, while deep learning models enhance the efficiency of the symbolic reasoning process. Through extensive experiments, we demonstrate that our approach achieves high performance and exhibits effective generalization in supervised learning, weakly supervised and zero-shot learning tasks. Furthermore, we introduce a quantitative strategy to evaluate the interpretability of the model's predictions, visualizing the corresponding logic rules that contribute to these predictions and providing insights into the reasoning process. We believe that this approach sets a new standard for neural-symbolic systems and will drive future research in the field of general artificial intelligence.
title A Novel Neural-symbolic System under Statistical Relational Learning
topic Artificial Intelligence
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2309.08931