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Hauptverfasser: He, Bowen, Xu, Xiaoan, Bozkurt, Alper Kamil, Tarokh, Vahid, Dong, Juncheng
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2511.12793
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author He, Bowen
Xu, Xiaoan
Bozkurt, Alper Kamil
Tarokh, Vahid
Dong, Juncheng
author_facet He, Bowen
Xu, Xiaoan
Bozkurt, Alper Kamil
Tarokh, Vahid
Dong, Juncheng
contents Solving Inductive Logic Programming (ILP) problems with neural networks is a key challenge in Neural-Symbolic Ar- tificial Intelligence (AI). While most research has focused on designing novel network architectures for individual prob- lems, less effort has been devoted to exploring new learning paradigms involving a sequence of problems. In this work, we investigate lifelong learning ILP, which leverages the com- positional and transferable nature of logic rules for efficient learning of new problems. We introduce a compositional framework, demonstrating how logic rules acquired from ear- lier tasks can be efficiently reused in subsequent ones, leading to improved scalability and performance. We formalize our approach and empirically evaluate it on sequences of tasks. Experimental results validate the feasibility and advantages of this paradigm, opening new directions for continual learn- ing in Neural-Symbolic AI.
format Preprint
id arxiv_https___arxiv_org_abs_2511_12793
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Neuro-Logic Lifelong Learning
He, Bowen
Xu, Xiaoan
Bozkurt, Alper Kamil
Tarokh, Vahid
Dong, Juncheng
Artificial Intelligence
Machine Learning
Solving Inductive Logic Programming (ILP) problems with neural networks is a key challenge in Neural-Symbolic Ar- tificial Intelligence (AI). While most research has focused on designing novel network architectures for individual prob- lems, less effort has been devoted to exploring new learning paradigms involving a sequence of problems. In this work, we investigate lifelong learning ILP, which leverages the com- positional and transferable nature of logic rules for efficient learning of new problems. We introduce a compositional framework, demonstrating how logic rules acquired from ear- lier tasks can be efficiently reused in subsequent ones, leading to improved scalability and performance. We formalize our approach and empirically evaluate it on sequences of tasks. Experimental results validate the feasibility and advantages of this paradigm, opening new directions for continual learn- ing in Neural-Symbolic AI.
title Neuro-Logic Lifelong Learning
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2511.12793